1. Introduction
Statistical Process Control (SPC) offers a methodical and ongoing strategy for overseeing processes through real-time data to assess whether a system maintains stability or diverges from anticipated performance. Control charts are the fundamental analytical instrument in the SPC framework, allowing practitioners to visualize process variation, swiftly detect anomalous patterns, and execute prompt corrective measures. Their adaptability has facilitated applications in several sectors, including industrial manufacturing [
1], financial risk evaluation and economic management [
2], environmental monitoring [
3], and healthcare systems [
4]. Modern data environments often produce intricate time-series signals. Persistence, structural changes, autocorrelation, and long-range dependence distinguish these signals. These characteristics compromise the efficacy of conventional control charts, potentially resulting in asymmetric responses, directional bias, or variable detection capabilities when applied to dynamic, real-world scenarios. These constraints are particularly significant in domains like finance and economics, where the capacity to detect both increasing and decreasing trends with equivalent precision is essential for monitoring volatility, assessing systemic risk, and identifying distinctive economic conditions.
Here, symmetry is essential for design. Symmetrical control limits enable neutrality, stability, and fair detection by responding equally to increase and decrease signals. SPC applications are more reliable in high-volatility, irregularly structured, or changing system contexts due to their symmetric behavior. Consequently, symmetry-preserving control charts provide a solid foundation for monitoring modern real-world systems across disciplines. By applying these ideas to globally influential systems like the U.S. stock market, which is a barometer for macroeconomic circumstances and a major source of financial risk and volatility, control charts become even more important. Market movements affect investor behavior, economic confidence, and indicators of systemic change. Using control charts in this context allows early identification of shifts, monitoring of uncertainty, and an unbiased perspective on price fluctuations. We can now better and faster understand U.S. financial market trends.
Control charts were initially presented by Walter A. Shewhart, [
5], who suggested that current sample information may be used to differentiate between common-cause fluctuation and special-cause signals in a process. The simplicity and ease of interpretation of Shewhart charts make them ideal for spotting relatively large changes in the mean process. The cumulative sum (CUSUM) control chart, which counts variances over time, was introduced by Page [
6] to make it more sensitive to moderate and minor changes. In a subsequent work, Roberts [
7] created the exponentially weighted moving average (EWMA) control chart, which uses a geometrically diminishing weighting structure to enhance sensitivity to subtle or long-lasting shifts in the data. Many extensions of the EWMA framework have been proposed, building on these fundamental advancements. Patel and Divecha [
8] introduced the Modified EWMA (Modified EWMA) control chart to enhance sensitivity to subtle process changes. Khan et al. [
9] later verified and expanded its performance for a broader range of operating situations. Subsequently, Silpakob et al. [
10] enhanced the modified EWMA chart and developed an explicit ARL formula under the AR(p) model. Its efficacy in assessing ARL surpasses that of classic modified EWMA and EWMA charts. Furthermore, recent developments in EWMA-type techniques have brought to light the significance of maintaining chart response symmetry to guarantee balanced detection of upward and downward shifts, thereby lowering directional bias and enhancing accuracy in intricate, correlated, or extremely volatile processes. Symmetric two-sided control charts are essential tools for monitoring process changes because they respond equally to increases and decreases in the signal. The EWMA, modified EWMA, and enhanced new modified EWMA were the main subjects of this investigation. Depending on the monitoring objective, some real-world applications only need one upper or lower limit, even though these charts normally include two. Even while autocorrelation exists in many real systems, conventional charts also imply data independence and uniformity, which can impair detection performance. In some circumstances, specialized or altered control charts are necessary to manage dependency and ensure accurate monitoring.
The ARIMA and ARFIMA models are widely recognized time-series frameworks because they effectively capture key real-world characteristics such as persistence, non-stationarity, and long-memory behavior, which frequently appear in financial and economic data. For the ARIMA model under financial and economic data seen in Sinu et al. [
11] as well as ARIMA based on environmental series seen in Hrithik et al. [
12]. Pan and Chen [
13] and Rabyk and Schmid [
14] have further employed these models to examine how dependence structures influence control-chart performance. ARFIMA extends the integer differencing of ARIMA through fractional differencing, allowing a more flexible representation of long-range dependence. With their broad applicability and strong forecasting performance, both models remain essential tools in time-series analysis. In this study, we focus on the ARI and ARFI classes, which are particularly suitable for data exhibiting persistence and long-memory traits features commonly observed in U.S. stock market series characterized by temporal dependence and sustained volatility. Hyung and Franses [
15] demonstrated long-memory behavior using daily volatility of the S&P 500, and subsequent ARFI based applications have consistently confirmed this property in U.S. market data.
One important statistic in statistical process control is the average run length (ARL), which is the predicted amount of observations needed before a control chart indicates a state that is out of control. It consists of two parts:
, which is best when high since it represents the average run length when the process is under control, and
, which is best when low since it reflects the average run length when the process is uncontrolled and needs to be detected quickly when it shifts. In the event that a change or variation takes place in the process, the control chart needs to be able to notice it promptly and indicate whether or not it is necessary to take corrective action or conduct additional investigation. To provide evidence for this assertion, a number of strategies for calculating the ARL have been presented in the scientific literature (see [
16,
17,
18]). These techniques include the Markov chain approach, Monte Carlo simulation, numerical integral equation techniques (NIE), and explicit analytical formulations.
Our primary objective in this research was to assess the efficacy and precision of the explicit formula and the Numerical Integral Equation (NIE) approach in predicting the ARL. It is worth delving further into the relative merits and shortcomings of the two methods, as prior research demonstrated that they can both produce accurate ARL estimations; however, their efficacy differs with respect to model complexity and distributional assumptions. Furthermore, comprehensive study has shown that utilizing the explicit formula can markedly decrease the computation time for determining the ARL.
According to the findings of previous studies, a significant number of scholars have presented the NIE method and established explicit formulas and effectively applied them to any field. For instance, Suriyakat and Petcharat [
19] talked about ARL results they got using the NIE method for a CUSUM chart in a seasonal AR model with exogenous variables. Furthermore, Chananet and Phanyaem[
20] used the NIE method on an EWMA chart based on an MA model of exogenous variables and showed the ARL performance that went with it. Using real-world economic facts, as a summary, several researchers have also published ARL results obtained using both NIE and explicit formula methods and a range of time-series models. The ARL of the CUSUM control chart was evaluated by Bualuang and Peerajit [
21] and Peerajit [
22] in 2023. They used the time series model as ARFI and FIMA with external factors. According to the study of Riaz et al. [
23], Sunthornwat et al. [
24] also came up with an explicit formula for ARL running on the HWMA control chat. These were developed under the MA with exogenous and showed better performance when compared to the CUSUM control chart. Karoon et al. [
25] provided explicit ARL formulas for the double EWMA control chart in AR(p). These formulas were then used on a set of economic time series to show how well the process of finding changes works. In their study, Karoon and Areepong [
26] demonstrated that the AR(p) model, which includes both trend and quadratic trend components, could derive the Average Run Length (ARL) on the adjusted modified EWMA control chart more effectively than it could on the standard EWMA and modified EWMA control charts. Recently, Karoon and Areepong [
27] provided a method that explicitly uses the AR(p) model to derive ARL on the new extended EWMA control chart, which outperforms both standard EWMA and extended EWMA control charts in terms of capability.
Moreover, the literature review indicates that the general AR integrated and fractionally integrated time series models, often referred to as the ARI and ARFI models, have been incorporated into various control charts. For instance, the modified EWMA [
28] in 2023 and the double modified EWMA [
29] in 2025 are two examples of these control charts. Nevertheless, the new modified EWMA control chart based on ARI and ARFI models has not yet been reported to have any applications. Thus, we showcase the ARL of the new modified EWMA control chart for general ARI and ARFI models, as well as general AR integrated and fractionally integrated time series models. To complete the computation, we used both the precise solution and the NIE approach. The two approaches were compared using the one- and two-sided new modified EWMA control chart for accuracy and calculation speed. Next, the conventional EWMA and modified EWMA control charts were used to compare with the proposed new modified EWMA chart based on both simulated and real-world US stock prices from the S&P 500. Furthermore, this study uses real-life data to demonstrate the change detection capabilities of the new modified EWMA control chart. It was double-checked by displaying a graph to detect changes in control charts.
4. Evaluation of Average Run Length for the New Modifed EWMA Control Chart
This section formulates the ARL expressions using two complementary methodologies: the explicit analytical formulation and the Numerical Integral Equation (NIE) technique, both established inside the ARI and ARFI frameworks. Furthermore, it confirms the existence and uniqueness of the ARL derived from the explicit solution.
4.1. Derivation of the ARL Under the ARI() Model
ARI
is an autoregressive integrated model of order p, first studied as a particular instance of ARIMA
in which the moving-average component is omitted
. The current series value is presented as a linear combination of prior observations
plus a random error term. Let
be observations of the ARI
model. An elegant rewriting of the ARI(
) model is possible with the use of Equations (
10) and (
12).
where
represent the initial values of ARI(
) model.
First, to obtain the explicit Average Run Length (ARL) for the new modified EWMA control chart under the ARI model.
We can be adjusted by substituting
from the ARI
in Equation (
10) and replacing it in Equation (
7). It can result in the following reformulated expression.
where the initial time at
, it was set
,and
,
and represents .
So, Equation (
7) can be rewritten as
When the process is in control, let us assume that
is the symmetrically control limit for
. The control limits for
are defined by the interval
, and this symmetrically controlled limit interval is expressed using the following formulation.
Following is a revised version of the equation that was previously presented, which expresses it in terms of the variable
:
Based on the Fredholm integral equation [
31], which was employed to create the explicit formula for ARL, let
be the explicit ARL formula that is applicable to the new modified EWMA control chart while operating under the ARI
model. In the following equation, (
13), it is possible to rearrange this item.
Let
correspond to
, and then
and solving for
, we obtain
. As a result of this, we modified the variable in (
13), and the variable is now the solution in (
14) in the way that follows:
The mathematical theorem known as the Fixed Point Theorem, discussed in
Section 4.3, will verify the solution of the explicit ARL, which has the qualities of existence and uniqueness. It is important to take note of the fact that Equation (
14) will accomplish this verification.
After we have demonstrated our existence and uniqueness, Based on the determination of
, the solution can be found as follows:
It can be rearranged into the following mathematical equation:
As mentioned earlier, we have defined some variables, which we will discuss further below.
, , and .
In order that we get the equation shown in (
15):
Following that, the variable
C is considered.
Finally, (
16) is replaced in (
15), and the solution for the ARL of the new modified EWMA chart under the ARI
or called as
, that is expressed in (
17) as follows:
Consequently, the ARL of the new modified EWMA chart under the ARI
can be articulated for the symmetric two-sided control chart utilizing the formulation in (
18) as follows:
While, the one-sided new modified EWMA chart under the ARI
can be expressed in (
19) as follows:
Moreover, for ARLs based on controllable and out-of-control processes, (
) are set to
and
. These result in a transformation of the solution
to
, and
in (
19), respectively.
Second, the numerical integral equation (NIE) method is used to calculate the Average Run Length (ARL) of the new modified EWMA control chart for the ARI
model. When you use the NIE method with quadrature rules, you can evaluate the ARL in a way that is both very accurate and simple to perform on the computer [
18].
Let
be the ARL of the new modified EWMA chart for the ARI
model, computed using the midpoint quadrature rule. Both the two-sided symmetric interval
and the one-sided interval with
were used to work it out.
are the parts that make it up. The quadrature rule is used to set the fixed weights as
, and then,
represents
. Following the steps outlined in equation below, the quadrature rule assesses the approximation of an integral.
We compute using the quadrature rule
The following is the matrix representation of Equation (
20):
The NIE-based ARL can be computed from the matrix equation
, which represents the linear system linking the transition probabilities to the expected run length [
27],
where and
Changing the order of the previous equation and replacing
u with
. The NIE approach obtains the numerical approximation of the integral equation for
, abbreviated as ARL, as demonstrated in the following.
4.2. Derivation of the ARL Under the ARFI Model
The ARFI
model is a fractionally integrated autoregressive process characterized by the differencing parameter. It may assume non-integer values. It is regarded as a specific instance of ARFIMA
with
signifies that the present value is contingent upon historical observations and a stochastic error component. Fractional differencing engenders long-memory characteristics, rendering ARFI
more adaptable than the conventional ARI
model. Equations (
11) and (
12) allow for the concise reformulation of the ARFI
process in an autoregressive format for enhanced analysis.
where
represent the initial values of ARFI(
) model, and
refer to long-memory process.
First step: To determine the explicit Average Run Length (ARL) for the new modified EWMA control chart under the ARFI
model, one must first substitute
from the ARFI
into Equation (
11) and subsequently include it into Equation (
7). This action may yield the subsequent reformed phrase.
At the beginning time , was designated as u, as ,
and ℧ is .
Thus, Equation (
7) may be reformulated as
Suppose that is the symmetric control limit for when the process is in control state. This symmetric control limit range is expressed using the following formula, and the control limit for is defined as the range .
All steps are expressed as in the ARI process but different parameters.
Here is an updated equation that was previously given, this time using the variable
as its expression:
Afterwards, to derive explicit ARL formula, we will use the ARFI
model and the new modified EWMA control chart to obtain
. This item can be rearranged in the equation given by (
22).
Let
is
, and then
and solving for
, we obtain
. Because of this, the variable is now calculated as the answer in Equation (
23) in the following manner:
The explicit ARL’s existence and uniqueness will be verified using the Fixed Point Theorem, explained in
Section 4.3. Verification is made easier by solving Equation (
23) after solving
.
The solution for the ARL of the modified EWMA chart under ARFI
, denoted as
, is given in (
24):
For, the NIE method is used to calculate the ARL of the two-sided new modified EWMA control chart for the ARFI
model; It can be called
as equation below.
4.3. The Existence and Uniqueness of ARL
Banach’s fixed-point theorem [
26] proves the ARL equation’s validity by revealing a unique solution for explicit formulations of the integral equation. Call any continuous function
T an operation on the class of all. Example: It showed as:
For a contraction operator
T, Banach’s fixed-point theorem states that the fixed-point theorem
has a unique solution. The proof of equation for ARI
running on the New modified EWMA chart is expressed as:
Proof.
where
. □
Therefore, Banach’s fixed point theorem demonstrates the solution exists and is unique.
Moreover, the proof of solution based on ARFI() of the suggested control chart follows proof of the ARI() process mentioned above.
4.4. The Measure Used for Evaluating Capability
Algorithm 1 Computed the explicit ARL and arrived at the control chart coefficients to calculate the ARL on the new modified EWMA chart using the ARI and ARFI models.
|
Algorithm 1 The explicit ARL solution for the ARI and ARFI processes running on the new modified EWMA chart |
|
Input:
|
| - Set the coefficients values of models: and d. |
| - Set the parameters for the new modified EWMA control chart: , and
|
| - Set the mean: for the in-control and
|
| - Set the mean shifts: , and
|
|
Output:
|
|
In-control ()
|
| - Solve the ARI and ARFI models defined as and with exponential white noise, respectively. |
| - Define the initial parameters and coefficient values. |
| - Set the exponential white noise parameter
|
| - Set the lower control limit to for one-sided charts and for symmetrically two-sided charts. |
| - Calculate the upper control limit. 370 is the ARL value for . |
|
Out-of-control process ()
|
| -Determine the mean shift , adjust shifts (). |
| -Compute the ARL values of out-of-control using the explicit formula and the NIE technique. |
After calculating the ARL of two methods, namely the explicit formula and the NIE algorithm:
The next step in evaluating a control chart is to look at its ARL. Here, we begin with the absolute percentage difference (
), which contrasts the ARL values (
and
) from the explicit solution with those (
and
) from the NIE method for the ARI and ARFI models, respectively. It can be calculated from the equation in (
26) below.
Evaluations of efficiency like SDRL are used with ARL to assess control chart capability in detecting out-of-control circumstances [
32]. The SDRL for an in-control and out-of-control processes are calculated as follows:
where, the
was set at 370, and the corresponding
, evaluated using (
27), approximates this value. Control charts with smaller
and
values can detect shifts in the process mean, leading to better performance.
Moreover, the Performance Comparison Index (PCI).and the Relative Mean Index (RMI) are the main indicators used to evaluate the control charts’ performance in this study. These metrics give a thorough assessment of the charts’ capability to detect process alterations. One important statistic for comparison is the PCI [
33], which ranks control charts according to how efficient they are in comparison to the top-performing chart. It is represented in (
28) and is defined as the ratio of a particular chart’s AEQL to the lowest AEQL among all charts evaluated.
A PCI number closer to 1 indicates better capability, which allows for quicker detection of out-of-control situations with less loss.
The RMI [
29] adds a primary measure of detection improvement across charts, allowing for further technique differentiation. Better process shift sensitivity with lower RMI values (around 0) boosts performance ranking. It can be calculates as in (
29) below.
where
is the total number of mean shift values used in the evaluation,
is the out-of-control ARL when the process mean shift is equal to
, and
is The lowest ARL value among all charts being compared in
.
Here, the Average Extra Quadratic Loss (AEQL) [
33] is utilized as a supporting statistic that is employed in the computation of PCI. The AEQL quantifies the average extra loss, which can be calculated using the following formula. As can be seen below.
where,
is the total number of shift values from
,
is the
mean shift value, and
is the out-of-control ARL at shift
. Lower values of the AEQL correspond with lower values of the PCI, which is an indication that the chart is performing more effectively overall.
5. Results and Discussion
5.1. Numerical Findings
Simulation investigations on the new modified EWMA chart compare the efficiency of the NIE technique with that of the explicit formula for the ARI
and ARFI
models. As mentioned in Algorithm 1, the initial step in comparing the ARL of the two methods was to determine that
represents the in-control and
represents the out-of-control. The NIE for ARL is created using the division point amount, or
500. The findings are likely shown in
Table 1. Please be aware that the findings derived from the two distinct approaches were calculated with the aid of a machine that was operating on Windows 10 (64-bit) and had the following specifications: an Intel Core i5-8250U CPU (1.60 GHz, up to 1.80 GHz) and 4 GB of RAM. The results demonstrate that the ARL values, derived from the ARI model with
and
, can be expressed for both one-sided and symmetrically two-sided charts, with UCL values of 0,
, and
. While
Table 2 shows the ARL results from running under the ARFI process. It is expressed to set long memory that determined different means at
. The accuracy of the results from both tables was measured using the
, which indicated excellent accuracy, approaching 0 in all situations. Nevertheless, the explicit formula outperforms NIE in terms of performance since it calculates practically quickly due to its much lower computing time requirements. In contrast, NIE takes more time, always ranging from 2 to 3 seconds. In the future, it makes sense to compare control charts using the explicit ARL formula. The following step involves comparing the efficacy of the new modified EWMA control to the classic EWMA and modified EWMA control charts on the basis of several different situations. This comparison is performed under the ARI
and ARFI
models, with the explicit formula being used to determine the average run length (ARL). Additionally, the Standard Deviation of Working Length (SDRL) serves as a complementary metric to the ARL, helping to compare the ability to detect performance changes in the process. The results presented by the SDRL can be expressed similarly to the ARL values in all situations.
The results presented in
Table 3 and
Table 4 illustrate a comparative analysis of the efficiencies of the EWMA, modified EWMA, and new modified EWMA charts across various parameters, with the parameter set
for all charts being
. The lower control limit is fixed at 0, indicating a one-sided chart, and fixed at 0.5, indicating a two-sided chart; these are expressed in
Table 3 and
Table 4, respectively. Furthermore,
d is fixed at 1 and 2 under the ARI model. The new modified EWMA chart establishes constants
,
,
, and
, whereas the EWMA and modified EWMA are defined with
and 2, respectively. In every instance across all models, the findings demonstrated that the new modified EWMA chart exhibited reduced
and
compared to the EEWMA and EWMA control charts when
was held constant. Furthermore, the modified EWMA chart with a diminished
, specifically
in this study, yielded the lowest values for
and
. This decrease is evidenced by superior capabilities as compared to EWMA and modified EWMA charts.
Table 5 and
Table 6 summarize the capability results of the control charts inside the ARFI model, yielding findings congruent with those derived from the ARI model in
Table 3 and
Table 4. In these assessments, the lower control limit (LCL) is established at 0 for the one-sided chart and at 0.5 for the two-sided chart, as indicated in
Table 5 and
Table 6, respectively. This study fixed the differencing parameter at
and
, both of which are within the fractional range
. These values signify long-memory behavior, indicating that previous observations have a gradually diminishing impact on the current process, leading to sustained dependency over time. The findings indicate that the new modified EWMA chart with parameters (
,
) exhibited the lowest ARL1 and SDRL1 across all scenarios, succeeded by the new modified EWMA chart with (
), (
), the modified EWMA, and the EWMA charts, respectively. The above results still indicate the new modified EWMA chart’s better performance.
The PCI and RMI, which were calculated using the ARL values, were employed to illustrate that the new modified EWMA control chart performed exceptionally well, which served to corroborate the abilities of the control charts. Moreover, the new modified EWMA control chart, which uses much less than , gives the values less than the new modified EWMA control chart, which uses near . This outcome indicated that the new modified EWMA control chart, which uses much less than , is an alternative chart for evaluating the efficacy of several control charts in this study’s implementation of real-world datasets.
5.2. Empirical Application
The U.S. stock prices hold considerable importance in the global financial arena due to the U.S. stock market being the largest, most liquid, and most important market worldwide. Fluctuations in U.S. stock prices not only signify the performance, stability, and profitability of large firms but also act as a predictive indication of macroeconomic circumstances, investor expectations, and worldwide economic mood. The S&P 500, including 500 prominent U.S. corporations, serves as a well-established benchmark that reflects overall market dynamics and is commonly utilized for investment assessment, portfolio management, and policy analysis. Due to their inherent volatility, long-term dependency, and susceptibility to external shocks in stock prices, they present a realistic and demanding context for assessing statistical monitoring techniques. Thus, employing U.S. stock data enables researchers to assess the efficacy of control charts in identifying structural changes, abrupt shifts, or anomalous patterns in actual time series. This study utilizes three U.S. stock price datasets as representative real-world data sources to validate and assess the efficacy of control charts in monitoring process changes. This research makes use of actual data sets, which include the current U.S. stock prices of Walmart (WMT), Amazon.com (AMZN), and Microsoft (MSFT). All three of these companies are members of the S&P 500 indexes. All of these were fitted using the 82th sample of monthly data from January 2019 to October 2025, searched on the of November, 2025. Three different applications of the U.S. stock price datasets were fitted as ARI and ARFI models using the t-statistics test from the Box-Jenkins technique in the R programming language. The white noise of each model was subsequently checked for its exponential mean using the one-sample Kolmogorov-Smirnov test in SPSS.
Firstly, application 1 was fitted with an ARI(
) model that shows monthly data of the U.S. stock prices of Walmart (WMT) (Unit:USD). These data were obtained from
https://th.investing.com/equities/wal-mart-stores-historical-data. The Box-Ljung test indicated that the model was appropriated (Sig
), and the one-sample Kolmogorov-Smirnov test indicated that the residuals of the ARI(
) model follow an exponential distribution (Sig
). An acceptable way to write the answer is as follows:
This is the operator form of the ARI(
) model, with
B defined as the backward shift operator.
Second, application 2 was fitted with an ARFI(
) model that shows monthly data of the U.S. stock prices of Amazon.com (AMZN) (Unit:USD). These data were obtained from
https://th.investing.com/equities/amazon-com-inc-historical-data. The Box-Ljung test indicated that the model was appropriated (Sig
), and the one-sample Kolmogorov-Smirnov test indicated that the residuals of the ARFI(
) model follow an exponential distribution (Sig
). The following is a good way to write it:
Since
B is the backward shift operator, this is the operator form of the ARFI(
) model.
Third, application 3 was fitted with an ARFI(
) model that shows monthly data of the U.S. stock prices of Microsoft (MSFT) (Unit:USD). These data were obtained from
https://th.investing.com/equities/microsoft-corp-historical-data. The Box-Ljung test indicated that the model was appropriated (Sig
), and the one-sample Kolmogorov-Smirnov test indicated that the residuals of the ARFI(
) model follow an exponential distribution (Sig
). An example of an effective style of writing it is:
In this operator form,
B is specified as the backward shift operator, and the ARFI(
) model is represented.
The results of capability of new modified EWMA, modified EWMA, and EWMA charts under ARI(
), ARFI(
),and ARFI(
) that to showed in
Table 7,
Table 8, and
Table 9, respectively. They examined a one-sided control chart with an LCL of 0 and a symmetrically two-sided control chart with an LCL of 0.5, after setting
equal to 0.05. Take note that the new modified EWMA chart in this section, which is used with the set
, provides a lower ARL and SDRL than the sets
and
. The findings show that, in every scenario and for every model, the new modified EWMA control chart computed fewer
and
values compared to the EWMA control chart and the modified EWMA control chart, both a one-sided and a two-sided chart. Based on the PCI and RMI analysis, the New Modified EWMA control chart demonstrates the highest effectiveness in detecting process shifts for both one-sided and two-sided cases. The Modified EWMA chart performs better than the traditional EWMA chart, which shows the lowest effectiveness among the three. The findings were comparable to those from the simulated data in the preceding section, and they validated the capabilities of the new modified EWMA chart. The graphic representation of the PCI and RMI values for all charts under ARI (
), ARFI (
), and ARFI (
) clearly demonstrated the capability in
Figure 1,
Figure 2, and
Figure 3.
After that, all control charts were set to in order to identify changes using a two-sided control limit. The EWMA, modified EWMA, and new modified EWMA charts were set to , , and , respectively. In addition, the UCL and LCL controls are symmetrically located around the center line of a symmetric control chart, allowing them to detect process changes equally in both directions. Process monitoring is simplified, and balanced performance is assured, even when detecting little changes, due to this symmetry. In order to identify changes in the process mean, three control charts were utilized to fit three datasets of US stock prices using the 82th sample of monthly data from January 2019 to October 2025. These were achieved by fitting the models followed by the above-mentioned assessment.
As is seen in
Figure 4, in the case of the ARI
model, the new modified EWMA control chart is able to recognize changes for the first time at the 1
st samples, whereas the modified EWMA and EWMA charts are able to identify changes for the first time at 21
st and 71
st samples, respectively. As shown in
Figure 5, the new modified EWMA control chart is able to detect changes for the first time at the 1
st samples for the ARFI
model, and the modified EWMA is able to detect changes for the first time at the 8
th samples, but the EWMA chart is unable to detect changes inside the 82
nd samples. Finally, as shown in
Figure 6, the ARFI
model can be observed with the new modified EWMA control chart at the 1
st samples, and with the modified EWMA at the 28
th samples as well. However, the EWMA chart fails to detect changes within the 82
nd samples of the same ARFI(
).
Figure 1.
PCI and RMI of the EWMA, Modified EWMA, and New Modified EWMA control charts under the ARI(2,2) model, based on monthly Walmart (WMT) stock prices. (a)–(b) show one-sided charts (), while (c)–(d) present two-sided charts ().
Figure 1.
PCI and RMI of the EWMA, Modified EWMA, and New Modified EWMA control charts under the ARI(2,2) model, based on monthly Walmart (WMT) stock prices. (a)–(b) show one-sided charts (), while (c)–(d) present two-sided charts ().
Figure 2.
The PCI and RMI values of the EWMA, Modified EWMA, and New Modified EWMA control charts under the ARFI(1,0.2) model are analytical from monthly Amazon.com (AMZN) stock prices. (a) and (b) illustrate the PCI and RMI for the one-sided control charts (). (c) and (d) display the PCI and RMI for the two-sided control charts ().
Figure 2.
The PCI and RMI values of the EWMA, Modified EWMA, and New Modified EWMA control charts under the ARFI(1,0.2) model are analytical from monthly Amazon.com (AMZN) stock prices. (a) and (b) illustrate the PCI and RMI for the one-sided control charts (). (c) and (d) display the PCI and RMI for the two-sided control charts ().
Figure 3.
The PCI and RMI values of the EWMA, Modified EWMA, and New Modified EWMA control charts under the ARFI(2,0.4) model are analytical from monthly Microsoft (MSFT) stock prices. (a) and (b) illustrate the PCI and RMI for the one-sided control charts (). (c) and (d) display the PCI and RMI for the two-sided control charts ().
Figure 3.
The PCI and RMI values of the EWMA, Modified EWMA, and New Modified EWMA control charts under the ARFI(2,0.4) model are analytical from monthly Microsoft (MSFT) stock prices. (a) and (b) illustrate the PCI and RMI for the one-sided control charts (). (c) and (d) display the PCI and RMI for the two-sided control charts ().
Figure 4.
The capability to detect on symmetric two-sided control charts, namely (a) EWMA, (b) Modified EWMA, and (c) New Modified EWMA under the ARI(2,2) model, is demonstrated using the dataset of monthly Walmart (WMT) stock prices.
Figure 4.
The capability to detect on symmetric two-sided control charts, namely (a) EWMA, (b) Modified EWMA, and (c) New Modified EWMA under the ARI(2,2) model, is demonstrated using the dataset of monthly Walmart (WMT) stock prices.
Figure 5.
The capability to detect on symmetric two-sided control charts, namely (a) EWMA, (b) Modified EWMA, and (c) New Modified EWMA under the ARFI(1,0.2) model, is demonstrated using the dataset of monthly Amazon.com (AMZN) stock prices.
Figure 5.
The capability to detect on symmetric two-sided control charts, namely (a) EWMA, (b) Modified EWMA, and (c) New Modified EWMA under the ARFI(1,0.2) model, is demonstrated using the dataset of monthly Amazon.com (AMZN) stock prices.
Figure 6.
The capability to detect on symmetric two-sided control charts, namely (a) EWMA, (b) Modified EWMA, and (c) New Modified EWMA under the ARFI(2,0.4) model, is demonstrated using the dataset of monthly Microsoft (MSFT) stock prices.
Figure 6.
The capability to detect on symmetric two-sided control charts, namely (a) EWMA, (b) Modified EWMA, and (c) New Modified EWMA under the ARFI(2,0.4) model, is demonstrated using the dataset of monthly Microsoft (MSFT) stock prices.
Table 1.
Comparing the accuracy of the ARL on the New Modified EWMA control chart, which are set with lower control limit both one-sided, and two-sided control charts, under the ARI model using the explicit formula against NIE method with determined and .
Table 1.
Comparing the accuracy of the ARL on the New Modified EWMA control chart, which are set with lower control limit both one-sided, and two-sided control charts, under the ARI model using the explicit formula against NIE method with determined and .
| Model |
|
|
|
|
LCL |
0 |
0.1 |
0.5 |
| |
|
|
|
|
UCL |
|
|
|
| |
|
|
|
|
Methods |
ARL |
Time |
ARL |
Time |
ARL |
Time |
| ARI(1,1) |
0.05 |
1 |
0.1 |
0 |
|
370.21370240 |
|
370.08547158 |
|
370.17019320 |
|
| |
|
|
|
|
|
370.21369836 |
2.375 |
370.08546745 |
2.329 |
370.17018863 |
2.39 |
| |
|
|
|
|
|
0.000001090 |
0.000001116 |
0.000001233 |
| |
|
|
|
0.0005 |
|
277.81865343 |
|
274.57125435 |
|
261.21200766 |
|
| |
|
|
|
|
|
277.81865070 |
2.344 |
274.57125160 |
2.421 |
261.21200487 |
2.344 |
| |
|
|
|
|
|
0.000000982 |
0.000000999 |
0.000001069 |
| |
|
|
|
0.001 |
|
222.37267580 |
|
218.29292181 |
|
201.88494481 |
|
| |
|
|
|
|
|
222.37267376 |
2.36 |
218.29291978 |
2.359 |
201.88494283 |
2.422 |
| |
|
|
|
|
|
0.000000917 |
0.000000929 |
0.000000979 |
| |
|
|
|
0.003 |
|
123.78592235 |
|
120.09425219 |
|
105.98808489 |
|
| |
|
|
|
|
|
123.78592136 |
2.344 |
120.09425122 |
2.359 |
105.98808401 |
2.469 |
| |
|
|
|
|
|
0.000000798 |
0.000000804 |
0.000000829 |
| |
|
|
|
0.005 |
|
85.862955829 |
|
82.942616181 |
|
72.006860288 |
|
| |
|
|
|
|
|
85.862955185 |
2.468 |
82.942615555 |
2.406 |
72.006859732 |
2.359 |
| |
|
|
|
|
|
0.000000749 |
0.000000754 |
0.000000773 |
| |
|
|
|
0.01 |
|
48.763139703 |
|
46.924750974 |
|
40.172384279 |
|
| |
|
|
|
|
|
48.763139365 |
2.422 |
46.924750647 |
2.39 |
40.172383993 |
2.312 |
| |
|
|
|
|
|
0.000000694 |
0.000000698 |
0.000000711 |
| |
|
|
|
0.03 |
|
18.147953507 |
|
17.442567437 |
|
14.887866199 |
|
| |
|
|
|
|
|
18.147953396 |
2.391 |
17.442567330 |
2.343 |
14.887866107 |
2.406 |
| |
|
|
|
|
|
0.000000612 |
0.000000614 |
0.000000621 |
| |
|
|
|
0.1 |
|
6.0390546030 |
|
5.8390012684 |
|
5.1138777568 |
|
| |
|
|
|
|
|
6.0390545750 |
2.343 |
5.8390012413 |
2.405 |
5.1138777332 |
2.312 |
| |
|
|
|
|
|
0.000000465 |
0.000000464 |
0.000000460 |
| |
|
|
|
0.3 |
|
2.4930107771 |
|
2.4427301596 |
|
2.2578068241 |
|
| |
|
|
|
|
|
2.4930107712 |
2.391 |
2.4427301539 |
2.36 |
2.2578068190 |
2.407 |
| |
|
|
|
|
|
0.000000237 |
0.000000235 |
0.000000227 |
| |
|
|
|
1 |
|
1.3456911642 |
|
1.3383423320 |
|
1.3104502905 |
|
| |
|
|
|
|
|
1.3456911636 |
2.359 |
1.3383423314 |
2.39 |
1.3104502900 |
2.343 |
| |
|
|
|
|
|
0.000000043 |
0.000000042 |
0.000000041 |
| |
|
|
|
|
|
UCL |
|
|
|
| |
|
|
|
|
|
Methods |
ARL |
Time |
ARL |
Time |
ARL |
Time |
| ARI(2,2) |
0.05 |
1.5 |
0.1 |
0.1 |
0 |
|
370.21370240 |
|
370.08547158 |
|
370.17019320 |
|
| |
|
|
|
|
|
|
370.21369836 |
2.375 |
370.08546745 |
2.329 |
370.17018863 |
2.39 |
| |
|
|
|
|
|
|
0.000001090 |
0.000001116 |
0.000001233 |
| |
|
|
|
|
0.0005 |
|
277.81865343 |
|
274.57125435 |
|
261.21200766 |
|
| |
|
|
|
|
|
|
277.81865070 |
2.344 |
274.57125160 |
2.421 |
261.21200487 |
2.344 |
| |
|
|
|
|
|
|
0.000000982 |
0.000000999 |
0.000001069 |
| |
|
|
|
|
0.001 |
|
222.37267580 |
|
218.29292181 |
|
201.88494481 |
|
| |
|
|
|
|
|
|
222.37267376 |
2.36 |
218.29291978 |
2.359 |
201.88494283 |
2.422 |
| |
|
|
|
|
|
|
0.000000917 |
0.000000929 |
0.000000979 |
| |
|
|
|
|
0.003 |
|
123.78592235 |
|
120.09425219 |
|
105.98808489 |
|
| |
|
|
|
|
|
|
123.78592136 |
2.344 |
120.09425122 |
2.359 |
105.98808401 |
2.469 |
| |
|
|
|
|
|
|
0.000000798 |
0.000000804 |
0.000000829 |
| |
|
|
|
|
0.005 |
|
85.862955829 |
|
82.942616181 |
|
72.006860288 |
|
| |
|
|
|
|
|
|
85.862955185 |
2.468 |
82.942615555 |
2.406 |
72.006859732 |
2.359 |
| |
|
|
|
|
|
|
0.000000749 |
0.000000754 |
0.000000773 |
| |
|
|
|
|
0.01 |
|
48.763139703 |
|
46.924750974 |
|
40.172384279 |
|
| |
|
|
|
|
|
|
48.763139365 |
2.422 |
46.924750647 |
2.39 |
40.172383993 |
2.312 |
| |
|
|
|
|
|
|
0.000000694 |
0.000000698 |
0.000000711 |
| |
|
|
|
|
0.03 |
|
18.147953507 |
|
17.442567437 |
|
14.887866199 |
|
| |
|
|
|
|
|
|
18.147953396 |
2.391 |
17.442567330 |
2.343 |
14.887866107 |
2.406 |
| |
|
|
|
|
|
|
0.000000612 |
0.000000614 |
0.000000621 |
| |
|
|
|
|
0.1 |
|
6.0390546030 |
|
5.8390012684 |
|
5.1138777568 |
|
| |
|
|
|
|
|
|
6.0390545750 |
2.343 |
5.8390012413 |
2.405 |
5.1138777332 |
2.312 |
| |
|
|
|
|
|
|
0.000000465 |
0.000000464 |
0.000000460 |
| |
|
|
|
|
0.3 |
|
2.4930107771 |
|
2.4427301596 |
|
2.2578068241 |
|
| |
|
|
|
|
|
|
2.4930107712 |
2.391 |
2.4427301539 |
2.36 |
2.2578068190 |
2.407 |
| |
|
|
|
|
|
|
0.000000237 |
0.000000235 |
0.000000227 |
| |
|
|
|
|
1 |
|
1.3456911642 |
|
1.3383423320 |
|
1.3104502905 |
|
| |
|
|
|
|
|
|
1.3456911636 |
2.359 |
1.3383423314 |
2.39 |
1.3104502900 |
2.343 |
| |
|
|
|
|
|
|
0.000000043 |
0.000000042 |
0.000000041 |
Table 2.
Comparing the accuracy of the ARL on the New Modified EWMA control chart, which are set with a lower control limit at LCL for one-sided and LCL for two-side control charts, under the ARFI model using the explicit formula against NIE method with determined , and .
Table 2.
Comparing the accuracy of the ARL on the New Modified EWMA control chart, which are set with a lower control limit at LCL for one-sided and LCL for two-side control charts, under the ARFI model using the explicit formula against NIE method with determined , and .
|
|
|
Model |
ARFI
|
| |
|
|
d |
|
|
| |
|
|
|
|
|
|
|
| |
|
|
(LCL,UCL) |
|
|
|
|
| |
|
|
Methods |
ARL |
Time |
ARL |
Time |
ARL |
Time |
ARL |
Time |
| 0.15 |
1 |
0 |
|
370.05357527 |
|
370.11033031 |
|
370.14146867 |
|
370.07644250 |
|
| |
|
|
|
370.05352820 |
2.625 |
370.11025127 |
2.594 |
370.14143910 |
2.484 |
370.07640357 |
2.594 |
| |
|
|
|
0.000012722 |
0.000021354 |
0.000007989 |
0.000010519 |
| |
|
0.0005 |
|
284.12295732 |
|
289.72760017 |
|
279.24019232 |
|
282.11358439 |
|
| |
|
|
|
284.12292850 |
2.501 |
289.72755009 |
2.577 |
279.24017477 |
2.547 |
282.11356086 |
2.608 |
| |
|
|
|
0.000010143 |
0.000017286 |
0.000006283 |
0.000008340 |
| |
|
0.001 |
|
230.62640419 |
|
238.07579658 |
|
224.23193953 |
|
227.98309858 |
|
| |
|
|
|
230.62638450 |
2.485 |
238.07576165 |
2.578 |
224.23192776 |
2.438 |
227.98308263 |
2.438 |
| |
|
|
|
0.000008537 |
0.000014670 |
0.000005250 |
0.000006999 |
| |
|
0.003 |
|
131.70181522 |
|
139.12657992 |
|
125.56166925 |
|
129.13741609 |
|
| |
|
|
|
131.70180790 |
2.469 |
139.12656649 |
2.501 |
125.56166499 |
2.532 |
129.13741022 |
2.5 |
| |
|
|
|
0.000005560 |
0.000009649 |
0.000003392 |
0.000004543 |
| |
|
0.005 |
|
92.286586707 |
|
98.402160317 |
|
87.309408650 |
|
90.199015169 |
|
| |
|
|
|
92.286582677 |
2.5 |
98.402152866 |
2.546 |
87.309406322 |
2.562 |
90.199011949 |
2.563 |
| |
|
|
|
0.000004367 |
0.000007572 |
0.000002667 |
0.000003569 |
| |
|
0.01 |
|
52.960178234 |
|
56.999825876 |
|
49.725705650 |
|
51.597718573 |
|
| |
|
|
|
52.960176561 |
2.484 |
56.999822779 |
2.547 |
49.725704684 |
2.516 |
51.597717236 |
2.5 |
| |
|
|
|
0.000003159 |
0.000005432 |
0.000001943 |
0.000002589 |
| |
|
0.03 |
|
19.917023026 |
|
21.600627002 |
|
18.587945087 |
|
19.355089975 |
|
| |
|
|
|
19.917022617 |
2.452 |
21.600626253 |
2.562 |
18.587944848 |
2.562 |
19.355089646 |
2.532 |
| |
|
|
|
0.000002056 |
0.000003468 |
0.000001285 |
0.000001697 |
| |
|
0.1 |
|
6.6844575161 |
|
7.2595651570 |
|
6.2336730700 |
|
6.4934834643 |
|
| |
|
|
|
6.6844574268 |
2.501 |
7.2595649948 |
2.515 |
6.2336730177 |
2.499 |
6.4934833925 |
2.515 |
| |
|
|
|
0.000001336 |
0.000002234 |
0.000000839 |
0.000001105 |
| |
|
0.3 |
|
2.7642652085 |
|
2.9814943402 |
|
2.5952426678 |
|
2.6924955062 |
|
| |
|
|
|
2.7642651899 |
2.703 |
2.9814943060 |
2.485 |
2.5952426570 |
2.531 |
2.6924954914 |
2.563 |
| |
|
|
|
0.000000673 |
0.000001147 |
0.000000415 |
0.000000553 |
| |
|
1 |
|
1.4500558766 |
|
1.5261690885 |
|
1.3919495203 |
|
1.4252423551 |
|
| |
|
|
|
1.4500558747 |
2.516 |
1.5261690847 |
2.562 |
1.3919495192 |
2.578 |
1.4252423536 |
2.499 |
| |
|
|
|
0.000000135 |
0.000000245 |
0.000000079 |
0.000000108 |
| |
|
|
d |
|
|
| |
|
|
|
|
|
|
|
| |
|
|
(LCL,UCL) |
|
|
|
|
| |
|
|
Methods |
ARL |
Time |
ARL |
Time |
ARL |
Time |
ARL |
Time |
| 0.15 |
3.5 |
0 |
|
370.04780163 |
|
370.09273890 |
|
370.18132219 |
|
370.02034117 |
|
| |
|
|
|
370.04780141 |
2.578 |
370.09273834 |
2.594 |
370.18132201 |
2.578 |
370.02034087 |
2.688 |
| |
|
|
|
0.0000000587 |
0.0000001520 |
0.0000000479 |
0.0000000786 |
| |
|
0.0005 |
|
212.50418511 |
|
221.26755323 |
|
210.62842029 |
|
215.17853412 |
|
| |
|
|
|
212.50418504 |
2.531 |
221.26755301 |
2.594 |
210.62842023 |
2.625 |
215.17853401 |
2.532 |
| |
|
|
|
0.0000000371 |
0.0000000980 |
0.0000000292 |
0.0000000499 |
| |
|
0.001 |
|
149.15102108 |
|
157.90603732 |
|
147.29195064 |
|
151.79886834 |
|
| |
|
|
|
149.15102104 |
2.5 |
157.90603720 |
2.563 |
147.29195061 |
2.547 |
151.79886828 |
2.594 |
| |
|
|
|
0.0000000279 |
0.0000000753 |
0.0000000223 |
0.0000000379 |
| |
|
0.003 |
|
68.240909481 |
|
73.813635601 |
|
67.079011538 |
|
69.903749927 |
|
| |
|
|
|
68.240909469 |
2.469 |
73.813635568 |
2.531 |
67.079011529 |
2.516 |
69.903749911 |
2.625 |
| |
|
|
|
0.0000000164 |
0.0000000446 |
0.0000000131 |
0.0000000224 |
| |
|
0.005 |
|
44.384810240 |
|
48.308784667 |
|
43.571806944 |
|
45.550726555 |
|
| |
|
|
|
44.384810234 |
2.593 |
48.308784650 |
2.501 |
43.571806940 |
2.563 |
45.550726547 |
2.578 |
| |
|
|
|
0.0000000129 |
0.0000000352 |
0.0000000104 |
0.0000000177 |
| |
|
0.01 |
|
23.863597504 |
|
26.101197388 |
|
23.402632849 |
|
24.525948209 |
|
| |
|
|
|
23.863597502 |
2.609 |
26.101197381 |
2.516 |
23.402632847 |
2.687 |
24.525948205 |
2.624 |
| |
|
|
|
0.0000000100 |
0.0000000266 |
0.0000000080 |
0.0000000136 |
| |
|
0.03 |
|
8.6920385969 |
|
9.5192555825 |
|
8.5224426837 |
|
8.9361439812 |
|
| |
|
|
|
8.6920385963 |
2.656 |
9.5192555807 |
2.563 |
8.5224426832 |
2.593 |
8.9361439803 |
2.5 |
| |
|
|
|
0.0000000071 |
0.0000000188 |
0.0000000057 |
0.0000000096 |
| |
|
0.1 |
|
3.0947895889 |
|
3.3603094043 |
|
3.0405904182 |
|
3.1729361007 |
|
| |
|
|
|
3.0947895887 |
2.578 |
3.3603094039 |
2.562 |
3.0405904181 |
2.532 |
3.1729361005 |
2.484 |
| |
|
|
|
0.0000000043 |
0.0000000117 |
0.0000000034 |
0.0000000059 |
| |
|
0.3 |
|
1.5317428488 |
|
1.6241193266 |
|
1.5131174218 |
|
1.5587407373 |
|
| |
|
|
|
1.5317428488 |
2.577 |
1.6241193266 |
2.625 |
1.5131174217 |
2.641 |
1.5587407373 |
2.594 |
| |
|
|
|
0.0000000015 |
0.0000000044 |
0.0000000012 |
0.0000000021 |
| |
|
1 |
|
1.0859500052 |
|
1.1110193914 |
|
1.0811119290 |
|
1.0930979498 |
|
| |
|
|
|
1.0859500052 |
2.516 |
1.1110193914 |
2.531 |
1.0811119290 |
2.563 |
1.0930979498 |
2.563 |
| |
|
|
|
0.0000000001 |
0.0000000005 |
0.0000000001 |
0.0000000002 |
Table 3.
Comparing the capabilities of one-sided control charts, all set with a lower control limit at LCL, using simulated data from the ARI model for various shift sizes when determined with parameters defined as and for , whereas , , and for .
Table 3.
Comparing the capabilities of one-sided control charts, all set with a lower control limit at LCL, using simulated data from the ARI model for various shift sizes when determined with parameters defined as and for , whereas , , and for .
| Model |
ARI(1,1) |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
|
| 0.05 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.0005 |
365.733 |
365.233 |
250.316 |
249.815 |
235.141 |
234.640 |
239.884 |
239.383 |
247.094 |
246.593 |
| |
0.001 |
361.389 |
360.889 |
189.148 |
188.647 |
172.243 |
171.742 |
177.503 |
177.002 |
185.316 |
184.815 |
| |
0.003 |
344.563 |
344.063 |
95.773 |
95.272 |
83.332 |
82.831 |
87.125 |
86.623 |
92.776 |
92.275 |
| |
0.005 |
328.584 |
328.084 |
64.208 |
63.706 |
55.047 |
54.544 |
57.816 |
57.314 |
61.964 |
61.462 |
| |
0.01 |
292.047 |
291.547 |
35.320 |
34.816 |
29.889 |
29.385 |
31.518 |
31.014 |
33.971 |
33.467 |
| |
0.03 |
184.405 |
183.904 |
12.839 |
12.329 |
10.779 |
10.267 |
11.393 |
10.881 |
12.322 |
11.811 |
| |
0.1 |
42.469 |
41.966 |
4.287 |
3.754 |
3.627 |
3.087 |
3.823 |
3.285 |
4.120 |
3.585 |
| |
0.3 |
2.407 |
1.840 |
1.865 |
1.270 |
1.641 |
1.025 |
1.706 |
1.098 |
1.807 |
1.208 |
| |
1 |
1.002 |
0.043 |
1.154 |
0.421 |
1.096 |
0.324 |
1.112 |
0.353 |
1.138 |
0.397 |
| PCI |
1.429 |
1.068 |
1 |
1.019 |
1.050 |
| RMI |
5.081 |
0.136 |
0 |
0.041 |
0.102 |
| 0.15 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
367.044 |
366.544 |
244.163 |
243.662 |
229.436 |
228.935 |
233.929 |
233.428 |
240.632 |
240.131 |
| |
0.003 |
363.947 |
363.447 |
182.223 |
181.722 |
166.139 |
165.638 |
171.083 |
170.582 |
178.352 |
177.851 |
| |
0.005 |
351.907 |
351.407 |
90.590 |
90.089 |
79.127 |
78.625 |
82.610 |
82.108 |
87.776 |
87.274 |
| |
0.01 |
340.402 |
339.902 |
60.382 |
59.880 |
52.031 |
51.528 |
54.553 |
54.051 |
58.315 |
57.813 |
| |
0.03 |
313.783 |
313.283 |
33.065 |
32.561 |
28.162 |
27.658 |
29.634 |
29.130 |
31.843 |
31.339 |
| |
0.05 |
231.361 |
230.860 |
12.022 |
11.511 |
10.175 |
9.662 |
10.726 |
10.214 |
11.558 |
11.047 |
| |
0.1 |
95.726 |
95.225 |
4.063 |
3.528 |
3.472 |
2.929 |
3.647 |
3.107 |
3.914 |
3.377 |
| |
0.5 |
17.158 |
16.650 |
1.810 |
1.211 |
1.608 |
0.989 |
1.667 |
1.055 |
1.758 |
1.155 |
| |
1 |
1.671 |
1.059 |
1.145 |
0.408 |
1.092 |
0.317 |
1.107 |
0.344 |
1.131 |
0.385 |
| PCI |
3.440 |
1.062 |
1 |
1.018 |
1.046 |
| RMI |
8.826 |
0.130 |
0 |
0.039 |
0.097 |
| |
UCL |
|
|
|
|
|
| 0.25 |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
353.142 |
352.642 |
238.594 |
238.093 |
223.815 |
223.314 |
228.460 |
227.959 |
235.332 |
234.831 |
| |
0.003 |
336.942 |
336.442 |
176.015 |
175.514 |
160.440 |
159.939 |
165.294 |
164.793 |
172.415 |
171.914 |
| |
0.005 |
284.238 |
283.738 |
86.064 |
85.562 |
75.399 |
74.897 |
78.657 |
78.155 |
83.481 |
82.980 |
| |
0.01 |
245.239 |
244.738 |
57.073 |
56.571 |
49.394 |
48.891 |
51.722 |
51.220 |
55.190 |
54.688 |
| |
0.03 |
181.263 |
180.762 |
31.134 |
30.629 |
26.669 |
26.165 |
28.014 |
27.510 |
30.027 |
29.523 |
| |
0.05 |
84.274 |
83.772 |
11.326 |
10.815 |
9.656 |
9.142 |
10.156 |
9.643 |
10.909 |
10.397 |
| |
0.1 |
23.775 |
23.269 |
3.873 |
3.335 |
3.338 |
2.794 |
3.497 |
2.955 |
3.738 |
3.199 |
| |
0.5 |
5.087 |
4.560 |
1.763 |
1.160 |
1.580 |
0.957 |
1.634 |
1.018 |
1.717 |
1.109 |
| |
1 |
1.307 |
0.633 |
1.138 |
0.396 |
1.089 |
0.312 |
1.103 |
0.337 |
1.125 |
0.375 |
| PCI |
1.647 |
1.057 |
1 |
1.016 |
1.042 |
| RMI |
3.387 |
0.125 |
0 |
0.038 |
0.094 |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
|
| 0.05 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.0005 |
366.027 |
365.527 |
269.483 |
268.983 |
252.544 |
252.044 |
258.152 |
257.652 |
265.595 |
265.095 |
| |
0.001 |
361.859 |
361.359 |
211.882 |
211.381 |
191.712 |
191.211 |
198.178 |
197.677 |
207.141 |
206.640 |
| |
0.003 |
345.697 |
345.197 |
114.348 |
113.847 |
97.759 |
97.258 |
102.843 |
102.342 |
110.284 |
109.783 |
| |
0.005 |
330.318 |
329.818 |
78.398 |
77.897 |
65.695 |
65.193 |
69.529 |
69.027 |
75.240 |
74.738 |
| |
0.01 |
295.033 |
294.533 |
44.027 |
43.524 |
36.215 |
35.712 |
38.539 |
38.036 |
42.057 |
41.554 |
| |
0.03 |
189.883 |
189.382 |
16.243 |
15.735 |
13.184 |
12.674 |
14.082 |
13.573 |
15.462 |
14.953 |
| |
0.1 |
46.429 |
45.926 |
5.402 |
4.876 |
4.399 |
3.866 |
4.691 |
4.161 |
5.143 |
4.616 |
| |
0.3 |
2.772 |
2.216 |
2.260 |
1.687 |
1.903 |
1.311 |
2.006 |
1.420 |
2.167 |
1.590 |
| |
1 |
1.003 |
0.056 |
1.271 |
0.586 |
1.164 |
0.438 |
1.194 |
0.481 |
1.242 |
0.548 |
| PCI |
1.380 |
1.109 |
1 |
1.030 |
1.080 |
| RMI |
4.258 |
0.165 |
0 |
0.049 |
0.124 |
| 0.15 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
367.601 |
367.101 |
264.029 |
263.529 |
247.348 |
246.847 |
252.816 |
252.316 |
260.310 |
259.810 |
| |
0.003 |
364.905 |
364.405 |
205.289 |
204.788 |
185.743 |
185.242 |
191.962 |
191.461 |
200.746 |
200.245 |
| |
0.005 |
354.380 |
353.880 |
108.770 |
108.269 |
93.191 |
92.689 |
97.945 |
97.444 |
104.959 |
104.458 |
| |
0.01 |
344.258 |
343.758 |
74.094 |
73.592 |
62.302 |
61.800 |
65.850 |
65.348 |
71.162 |
70.660 |
| |
0.03 |
320.589 |
320.089 |
41.380 |
40.877 |
34.208 |
33.704 |
36.337 |
35.834 |
39.570 |
39.067 |
| |
0.05 |
244.904 |
244.403 |
15.242 |
14.733 |
12.457 |
11.947 |
13.275 |
12.765 |
14.530 |
14.021 |
| |
0.1 |
110.372 |
109.871 |
5.115 |
4.588 |
4.204 |
3.670 |
4.469 |
3.938 |
4.880 |
4.352 |
| |
0.5 |
22.489 |
21.983 |
2.183 |
1.607 |
1.859 |
1.264 |
1.952 |
1.363 |
2.099 |
1.518 |
| |
1 |
2.136 |
1.558 |
1.257 |
0.568 |
1.159 |
0.429 |
1.186 |
0.470 |
1.230 |
0.532 |
| PCI |
3.990 |
1.101 |
1 |
1.028 |
1.074 |
| RMI |
8.112 |
0.160 |
0 |
0.048 |
0.120 |
| |
UCL |
|
|
|
|
|
| 0.25 |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
355.884 |
355.384 |
259.081 |
258.581 |
242.500 |
241.999 |
247.880 |
247.379 |
255.319 |
254.819 |
| |
0.003 |
342.398 |
341.898 |
199.346 |
198.845 |
180.307 |
179.806 |
186.322 |
185.821 |
194.872 |
194.371 |
| |
0.005 |
296.965 |
296.465 |
103.869 |
103.368 |
89.168 |
88.667 |
93.638 |
93.136 |
100.254 |
99.753 |
| |
0.01 |
261.719 |
261.219 |
70.353 |
69.851 |
59.347 |
58.845 |
62.650 |
62.148 |
67.606 |
67.105 |
| |
0.03 |
200.646 |
200.145 |
39.103 |
38.600 |
32.476 |
31.972 |
34.441 |
33.937 |
37.427 |
36.924 |
| |
0.05 |
99.380 |
98.879 |
14.388 |
13.878 |
11.835 |
11.324 |
12.584 |
12.074 |
13.735 |
13.225 |
| |
0.1 |
29.866 |
29.361 |
4.870 |
4.341 |
4.037 |
3.501 |
4.280 |
3.747 |
4.656 |
4.125 |
| |
0.5 |
6.722 |
6.202 |
2.118 |
1.539 |
1.821 |
1.222 |
1.906 |
1.314 |
2.040 |
1.457 |
| |
1 |
1.528 |
0.898 |
1.244 |
0.552 |
1.154 |
0.422 |
1.179 |
0.460 |
1.220 |
0.518 |
| PCI |
1.855 |
1.094 |
1 |
1.026 |
1.069 |
| RMI |
3.233 |
0.155 |
0 |
0.046 |
0.116 |
Table 4.
Comparing the capabilities of two-sided control charts, all set with a lower control limit at LCL, using simulated data from the ARI model for various shift sizes when determined with parameters defined as and for , whereas , , and for .
Table 4.
Comparing the capabilities of two-sided control charts, all set with a lower control limit at LCL, using simulated data from the ARI model for various shift sizes when determined with parameters defined as and for , whereas , , and for .
| Model |
ARI(1,2) |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
|
| 0.05 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.0005 |
367.421 |
366.921 |
231.473 |
230.972 |
215.082 |
214.581 |
220.133 |
219.632 |
227.540 |
227.039 |
| |
0.001 |
364.846 |
364.346 |
168.337 |
167.836 |
151.573 |
151.072 |
156.732 |
156.231 |
164.286 |
163.785 |
| |
0.003 |
354.751 |
354.251 |
80.707 |
80.205 |
69.696 |
69.195 |
73.031 |
72.529 |
77.990 |
77.488 |
| |
0.005 |
344.974 |
344.474 |
53.216 |
52.714 |
45.389 |
44.886 |
47.745 |
47.242 |
51.270 |
50.768 |
| |
0.01 |
321.851 |
321.351 |
28.920 |
28.415 |
24.419 |
23.913 |
25.765 |
25.260 |
27.793 |
27.288 |
| |
0.03 |
245.510 |
245.009 |
10.554 |
10.041 |
8.879 |
8.364 |
9.377 |
8.863 |
10.132 |
9.619 |
| |
0.1 |
102.945 |
102.444 |
3.679 |
3.140 |
3.140 |
2.592 |
3.299 |
2.754 |
3.542 |
3.001 |
| |
0.3 |
14.882 |
14.373 |
1.728 |
1.121 |
1.539 |
0.911 |
1.594 |
0.973 |
1.679 |
1.068 |
| |
1 |
1.271 |
0.586 |
1.138 |
0.396 |
1.086 |
0.305 |
1.100 |
0.332 |
1.124 |
0.373 |
| PCI |
3.079 |
1.061 |
1 |
1.017 |
1.045 |
| RMI |
10.252 |
0.137 |
0 |
0.041 |
0.103 |
| 0.15 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
351.662 |
351.162 |
228.321 |
227.820 |
212.227 |
211.726 |
217.307 |
216.806 |
224.374 |
223.873 |
| |
0.003 |
334.729 |
334.229 |
165.036 |
164.535 |
148.874 |
148.373 |
153.907 |
153.406 |
161.085 |
160.584 |
| |
0.005 |
280.241 |
279.741 |
78.477 |
77.975 |
68.067 |
67.565 |
71.236 |
70.734 |
75.900 |
75.399 |
| |
0.01 |
240.503 |
240.002 |
51.623 |
51.121 |
44.263 |
43.760 |
46.487 |
45.984 |
49.792 |
49.289 |
| |
0.03 |
176.353 |
175.852 |
28.008 |
27.503 |
23.794 |
23.289 |
25.059 |
24.554 |
26.954 |
26.449 |
| |
0.05 |
81.435 |
80.933 |
10.229 |
9.716 |
8.667 |
8.151 |
9.133 |
8.618 |
9.836 |
9.323 |
| |
0.1 |
23.385 |
22.880 |
3.590 |
3.049 |
3.087 |
2.538 |
3.236 |
2.690 |
3.463 |
2.920 |
| |
0.5 |
5.280 |
4.753 |
1.705 |
1.097 |
1.529 |
0.899 |
1.581 |
0.958 |
1.660 |
1.047 |
| |
1 |
1.372 |
0.714 |
1.134 |
0.390 |
1.085 |
0.304 |
1.099 |
0.330 |
1.121 |
0.369 |
| PCI |
1.723 |
1.057 |
1 |
1.016 |
1.042 |
| RMI |
3.729 |
0.132 |
0 |
0.040 |
0.099 |
| |
UCL |
|
|
|
|
|
| 0.25 |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
311.216 |
310.716 |
225.241 |
224.740 |
209.829 |
209.328 |
214.758 |
214.257 |
221.809 |
221.308 |
| |
0.003 |
268.299 |
267.799 |
161.952 |
161.451 |
146.541 |
146.040 |
151.374 |
150.873 |
158.363 |
157.862 |
| |
0.005 |
172.642 |
172.141 |
76.472 |
75.970 |
66.637 |
66.135 |
69.641 |
69.139 |
74.080 |
73.578 |
| |
0.01 |
127.031 |
126.530 |
50.205 |
49.702 |
43.273 |
42.770 |
45.373 |
44.871 |
48.499 |
47.996 |
| |
0.03 |
76.136 |
75.634 |
27.202 |
26.697 |
23.245 |
22.739 |
24.436 |
23.930 |
26.219 |
25.714 |
| |
0.05 |
28.539 |
28.035 |
9.944 |
9.431 |
8.479 |
7.964 |
8.918 |
8.403 |
9.577 |
9.063 |
| |
0.1 |
8.307 |
7.791 |
3.511 |
2.969 |
3.040 |
2.490 |
3.180 |
2.633 |
3.393 |
2.849 |
| |
0.5 |
2.614 |
2.054 |
1.685 |
1.075 |
1.520 |
0.889 |
1.569 |
0.945 |
1.643 |
1.028 |
| |
1 |
1.198 |
0.487 |
1.131 |
0.385 |
1.085 |
0.303 |
1.098 |
0.328 |
1.119 |
0.365 |
| PCI |
1.230 |
1.054 |
1 |
1.015 |
1.040 |
| RMI |
1.338 |
0.126 |
0 |
0.038 |
0.095 |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
|
| 0.05 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.0005 |
367.823 |
367.323 |
252.081 |
251.581 |
233.930 |
233.429 |
239.577 |
239.076 |
247.786 |
247.285 |
| |
0.001 |
365.432 |
364.932 |
191.141 |
190.640 |
170.925 |
170.424 |
177.177 |
176.676 |
186.290 |
185.789 |
| |
0.003 |
356.047 |
355.547 |
97.377 |
96.876 |
82.483 |
81.981 |
86.975 |
86.474 |
93.688 |
93.187 |
| |
0.005 |
346.939 |
346.439 |
65.476 |
64.974 |
54.497 |
53.995 |
57.775 |
57.273 |
62.725 |
62.223 |
| |
0.01 |
325.319 |
324.819 |
36.188 |
35.685 |
29.666 |
29.161 |
31.594 |
31.090 |
34.536 |
34.032 |
| |
0.03 |
253.067 |
252.567 |
13.329 |
12.819 |
10.834 |
10.322 |
11.566 |
11.054 |
12.691 |
12.181 |
| |
0.1 |
112.911 |
112.410 |
4.592 |
4.061 |
3.770 |
3.232 |
4.009 |
3.473 |
4.380 |
3.847 |
| |
0.3 |
18.540 |
18.033 |
2.061 |
1.479 |
1.760 |
1.157 |
1.846 |
1.250 |
1.982 |
1.395 |
| |
1 |
1.447 |
0.805 |
1.243 |
0.550 |
1.148 |
0.412 |
1.174 |
0.452 |
1.217 |
0.514 |
| PCI |
3.325 |
1.099 |
1 |
1.027 |
1.072 |
| RMI |
9.051 |
0.167 |
0 |
0.049 |
0.124 |
| 0.15 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
355.341 |
354.841 |
249.393 |
248.892 |
231.429 |
230.928 |
237.298 |
236.797 |
245.353 |
244.852 |
| |
0.003 |
341.423 |
340.923 |
188.144 |
187.643 |
168.400 |
167.899 |
174.646 |
174.145 |
183.515 |
183.014 |
| |
0.005 |
294.845 |
294.345 |
95.120 |
94.619 |
80.809 |
80.307 |
85.153 |
84.652 |
91.596 |
91.095 |
| |
0.01 |
259.037 |
258.537 |
63.802 |
63.300 |
53.306 |
52.803 |
56.450 |
55.948 |
61.179 |
60.677 |
| |
0.03 |
197.644 |
197.143 |
35.195 |
34.691 |
28.987 |
28.483 |
30.825 |
30.321 |
33.623 |
33.119 |
| |
0.05 |
97.590 |
97.089 |
12.963 |
12.452 |
10.597 |
10.085 |
11.291 |
10.779 |
12.357 |
11.847 |
| |
0.1 |
29.884 |
29.379 |
4.486 |
3.955 |
3.709 |
3.170 |
3.936 |
3.399 |
4.286 |
3.753 |
| |
0.5 |
7.092 |
6.573 |
2.032 |
1.448 |
1.748 |
1.144 |
1.830 |
1.232 |
1.958 |
1.370 |
| |
1 |
1.647 |
1.032 |
1.237 |
0.542 |
1.147 |
0.411 |
1.172 |
0.449 |
1.213 |
0.508 |
| PCI |
1.992 |
1.094 |
1 |
1.026 |
1.069 |
| RMI |
3.627 |
0.162 |
0 |
0.048 |
0.121 |
| |
UCL |
|
|
|
|
|
| 0.25 |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
321.870 |
321.370 |
247.050 |
246.549 |
229.559 |
229.058 |
234.997 |
234.496 |
243.038 |
242.537 |
| |
0.003 |
284.602 |
284.102 |
185.510 |
185.009 |
166.348 |
165.847 |
172.254 |
171.753 |
180.965 |
180.464 |
| |
0.005 |
194.282 |
193.781 |
93.142 |
92.640 |
79.380 |
78.878 |
83.516 |
83.014 |
89.735 |
89.234 |
| |
0.01 |
147.265 |
146.764 |
62.337 |
61.835 |
52.280 |
51.777 |
55.274 |
54.771 |
59.815 |
59.312 |
| |
0.03 |
91.400 |
90.898 |
34.328 |
33.824 |
28.399 |
27.895 |
30.148 |
29.644 |
32.823 |
32.319 |
| |
0.05 |
35.563 |
35.059 |
12.644 |
12.133 |
10.391 |
9.879 |
11.051 |
10.539 |
12.066 |
11.556 |
| |
0.1 |
10.613 |
10.101 |
4.395 |
3.863 |
3.656 |
3.116 |
3.871 |
3.334 |
4.204 |
3.670 |
| |
0.5 |
3.317 |
2.772 |
2.007 |
1.422 |
1.737 |
1.132 |
1.815 |
1.216 |
1.937 |
1.347 |
| |
1 |
1.346 |
0.682 |
1.233 |
0.535 |
1.147 |
0.410 |
1.170 |
0.447 |
1.209 |
0.503 |
| PCI |
1.328 |
1.089 |
1 |
1.025 |
1.065 |
| RMI |
1.334 |
0.157 |
0 |
0.046 |
0.118 |
Table 5.
Comparing the capabilities of one-sided control charts, all set with a lower control limit at LCL, using simulated data from the ARFI model for various shift sizes when determined with parameters defined as and , , and .
Table 5.
Comparing the capabilities of one-sided control charts, all set with a lower control limit at LCL, using simulated data from the ARFI model for various shift sizes when determined with parameters defined as and , , and .
| Model |
ARFI(1,0.2) |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
|
| 0.05 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.0005 |
365.942 |
365.442 |
265.801 |
265.301 |
248.911 |
248.410 |
254.246 |
253.746 |
261.658 |
261.158 |
| |
0.001 |
361.739 |
361.239 |
207.162 |
206.661 |
187.499 |
186.998 |
193.651 |
193.150 |
202.378 |
201.877 |
| |
0.003 |
345.443 |
344.943 |
110.174 |
109.673 |
94.490 |
93.988 |
99.261 |
98.759 |
106.291 |
105.790 |
| |
0.005 |
329.942 |
329.442 |
75.134 |
74.633 |
63.247 |
62.745 |
66.822 |
66.320 |
72.163 |
71.661 |
| |
0.01 |
294.403 |
293.903 |
41.982 |
41.479 |
34.741 |
34.238 |
36.895 |
36.392 |
40.155 |
39.651 |
| |
0.03 |
188.741 |
188.240 |
15.430 |
14.921 |
12.617 |
12.107 |
13.446 |
12.936 |
14.713 |
14.204 |
| |
0.1 |
45.590 |
45.087 |
5.133 |
4.605 |
4.216 |
3.682 |
4.484 |
3.952 |
4.897 |
4.369 |
| |
0.3 |
2.690 |
2.133 |
2.163 |
1.586 |
1.840 |
1.243 |
1.933 |
1.343 |
2.079 |
1.497 |
| |
1 |
1.003 |
0.053 |
1.241 |
0.546 |
1.147 |
0.411 |
1.173 |
0.450 |
1.215 |
0.511 |
| PCI |
1.393 |
1.099 |
1 |
1.028 |
1.072 |
| RMI |
4.428 |
0.159 |
0 |
0.047 |
0.119 |
| 0.15 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
367.919 |
367.419 |
260.213 |
259.713 |
243.514 |
243.013 |
248.714 |
248.213 |
256.077 |
255.577 |
| |
0.003 |
365.136 |
364.636 |
200.472 |
199.971 |
181.433 |
180.932 |
187.336 |
186.835 |
195.806 |
195.305 |
| |
0.005 |
354.284 |
353.784 |
104.648 |
104.147 |
89.975 |
89.473 |
94.420 |
93.919 |
101.001 |
100.500 |
| |
0.01 |
343.862 |
343.362 |
70.912 |
70.410 |
59.923 |
59.421 |
63.220 |
62.718 |
68.158 |
67.656 |
| |
0.03 |
319.544 |
319.044 |
39.411 |
38.907 |
32.791 |
32.287 |
34.758 |
34.254 |
37.737 |
37.234 |
| |
0.05 |
242.303 |
241.802 |
14.466 |
13.957 |
11.917 |
11.406 |
12.668 |
12.158 |
13.817 |
13.308 |
| |
0.1 |
107.241 |
106.740 |
4.859 |
4.330 |
4.029 |
3.494 |
4.272 |
3.739 |
4.646 |
4.116 |
| |
0.5 |
21.264 |
20.757 |
2.091 |
1.510 |
1.798 |
1.198 |
1.883 |
1.289 |
2.015 |
1.430 |
| |
1 |
2.020 |
1.435 |
1.228 |
0.529 |
1.142 |
0.403 |
1.166 |
0.440 |
1.205 |
0.497 |
| PCI |
3.871 |
1.091 |
1 |
1.026 |
1.067 |
| RMI |
8.276 |
0.153 |
0 |
0.045 |
0.114 |
| |
UCL |
|
|
|
|
|
| 0.25 |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
354.944 |
354.444 |
254.761 |
254.261 |
238.636 |
238.135 |
243.715 |
243.214 |
250.913 |
250.413 |
| |
0.003 |
340.928 |
340.428 |
194.223 |
193.722 |
175.998 |
175.497 |
181.675 |
181.174 |
189.835 |
189.334 |
| |
0.005 |
294.040 |
293.540 |
99.741 |
99.240 |
86.022 |
85.520 |
90.182 |
89.681 |
96.348 |
95.847 |
| |
0.01 |
258.014 |
257.514 |
67.220 |
66.718 |
57.038 |
56.536 |
60.095 |
59.593 |
64.676 |
64.174 |
| |
0.03 |
196.296 |
195.795 |
37.193 |
36.689 |
31.111 |
30.607 |
32.919 |
32.415 |
35.658 |
35.154 |
| |
0.05 |
95.907 |
95.406 |
13.644 |
13.135 |
11.317 |
10.806 |
12.004 |
11.493 |
13.052 |
12.542 |
| |
0.1 |
28.430 |
27.925 |
4.626 |
4.095 |
3.870 |
3.332 |
4.091 |
3.556 |
4.432 |
3.900 |
| |
0.5 |
6.328 |
5.806 |
2.030 |
1.446 |
1.762 |
1.159 |
1.840 |
1.243 |
1.960 |
1.372 |
| |
1 |
1.472 |
0.833 |
1.217 |
0.514 |
1.138 |
0.396 |
1.160 |
0.431 |
1.196 |
0.484 |
| PCI |
1.807 |
1.084 |
1.000 |
1.024 |
1.062 |
| RMI |
3.265 |
0.147 |
0.000 |
0.044 |
0.110 |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
|
| 0.05 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.0005 |
366.130 |
365.630 |
262.849 |
262.349 |
246.728 |
246.227 |
251.808 |
251.308 |
259.022 |
258.522 |
| |
0.001 |
361.900 |
361.400 |
203.783 |
203.282 |
184.886 |
184.385 |
190.794 |
190.293 |
199.265 |
198.764 |
| |
0.003 |
345.504 |
345.004 |
107.443 |
106.942 |
92.445 |
91.944 |
97.010 |
96.509 |
103.754 |
103.253 |
| |
0.005 |
329.912 |
329.412 |
73.045 |
72.543 |
61.717 |
61.215 |
65.128 |
64.626 |
70.227 |
69.725 |
| |
0.01 |
294.180 |
293.680 |
40.697 |
40.194 |
33.823 |
33.319 |
35.871 |
35.367 |
38.968 |
38.465 |
| |
0.03 |
188.111 |
187.610 |
14.926 |
14.417 |
12.265 |
11.755 |
13.051 |
12.541 |
14.250 |
13.741 |
| |
0.1 |
45.069 |
44.567 |
4.967 |
4.439 |
4.102 |
3.567 |
4.355 |
3.823 |
4.745 |
4.216 |
| |
0.3 |
2.639 |
2.080 |
2.103 |
1.523 |
1.801 |
1.201 |
1.888 |
1.295 |
2.025 |
1.441 |
| |
1 |
1.003 |
0.051 |
1.223 |
0.522 |
1.136 |
0.394 |
1.160 |
0.431 |
1.199 |
0.489 |
| PCI |
1.402 |
1.092 |
1 |
1.026 |
1.068 |
| RMI |
4.544 |
0.154 |
0 |
0.046 |
0.115 |
| 0.15 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
367.307 |
366.807 |
257.201 |
256.701 |
241.085 |
240.584 |
246.371 |
245.870 |
253.315 |
252.815 |
| |
0.003 |
364.475 |
363.975 |
197.063 |
196.562 |
178.698 |
178.197 |
184.545 |
184.044 |
192.626 |
192.125 |
| |
0.005 |
353.439 |
352.939 |
101.972 |
101.471 |
87.953 |
87.452 |
92.243 |
91.742 |
98.509 |
98.007 |
| |
0.01 |
342.848 |
342.348 |
68.888 |
68.387 |
58.434 |
57.932 |
61.593 |
61.091 |
66.281 |
65.779 |
| |
0.03 |
318.172 |
317.672 |
38.180 |
37.676 |
31.908 |
31.404 |
33.781 |
33.277 |
36.600 |
36.097 |
| |
0.05 |
240.128 |
239.627 |
13.988 |
13.479 |
11.582 |
11.071 |
12.293 |
11.783 |
13.377 |
12.867 |
| |
0.1 |
105.062 |
104.561 |
4.702 |
4.172 |
3.921 |
3.385 |
4.151 |
3.616 |
4.503 |
3.971 |
| |
0.5 |
20.471 |
19.965 |
2.035 |
1.451 |
1.761 |
1.158 |
1.840 |
1.244 |
1.964 |
1.376 |
| |
1 |
1.948 |
1.359 |
1.211 |
0.505 |
1.132 |
0.386 |
1.154 |
0.421 |
1.190 |
0.475 |
| PCI |
3.791 |
1.085 |
1 |
1.024 |
1.063 |
| RMI |
8.366 |
0.149 |
0 |
0.045 |
0.111 |
| |
UCL |
|
|
|
|
|
| 0.25 |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
355.059 |
354.559 |
251.801 |
251.301 |
235.735 |
235.234 |
241.022 |
240.521 |
248.281 |
247.780 |
| |
0.003 |
340.637 |
340.137 |
190.853 |
190.352 |
173.024 |
172.523 |
178.702 |
178.201 |
186.738 |
186.237 |
| |
0.005 |
292.629 |
292.129 |
97.134 |
96.633 |
83.991 |
83.490 |
88.012 |
87.510 |
93.933 |
93.432 |
| |
0.01 |
255.992 |
255.492 |
65.264 |
64.762 |
55.572 |
55.070 |
58.500 |
57.998 |
62.867 |
62.365 |
| |
0.03 |
193.725 |
193.224 |
36.012 |
35.508 |
30.256 |
29.751 |
31.975 |
31.471 |
34.569 |
34.066 |
| |
0.05 |
93.774 |
93.273 |
13.188 |
12.679 |
10.996 |
10.484 |
11.645 |
11.134 |
12.633 |
12.123 |
| |
0.1 |
27.544 |
27.039 |
4.477 |
3.945 |
3.766 |
3.228 |
3.975 |
3.439 |
4.296 |
3.763 |
| |
0.5 |
6.086 |
5.563 |
1.976 |
1.389 |
1.726 |
1.120 |
1.799 |
1.199 |
1.912 |
1.320 |
| |
1 |
1.438 |
0.794 |
1.200 |
0.491 |
1.128 |
0.380 |
1.148 |
0.413 |
1.181 |
0.462 |
| PCI |
1.777 |
1.079 |
1 |
1.022 |
1.058 |
| RMI |
3.290 |
0.143 |
0 |
0.043 |
0.108 |
Table 6.
Comparing the capabilities of two-sided control charts, all set with a lower control limit at LCL, using simulated data from the ARFI model for various shift sizes when determined with parameters defined as , , and , whereas , and .
Table 6.
Comparing the capabilities of two-sided control charts, all set with a lower control limit at LCL, using simulated data from the ARFI model for various shift sizes when determined with parameters defined as , , and , whereas , and .
| Model |
ARFI(2,0.2) |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
|
| 0.05 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.0005 |
368.108 |
367.608 |
260.444 |
259.944 |
241.398 |
240.897 |
247.572 |
247.071 |
256.144 |
255.644 |
| |
0.001 |
365.787 |
365.287 |
200.981 |
200.480 |
179.183 |
178.682 |
186.065 |
185.564 |
195.871 |
195.370 |
| |
0.003 |
356.671 |
356.171 |
105.252 |
104.751 |
88.430 |
87.928 |
93.525 |
93.024 |
101.105 |
100.604 |
| |
0.005 |
347.816 |
347.316 |
71.445 |
70.943 |
58.842 |
58.340 |
62.605 |
62.103 |
68.286 |
67.784 |
| |
0.01 |
326.771 |
326.271 |
39.827 |
39.324 |
32.225 |
31.721 |
34.465 |
33.961 |
37.893 |
37.390 |
| |
0.03 |
256.106 |
255.606 |
14.752 |
14.243 |
11.806 |
11.295 |
12.664 |
12.153 |
13.993 |
13.483 |
| |
0.1 |
117.014 |
116.513 |
5.068 |
4.541 |
4.088 |
3.553 |
4.371 |
3.838 |
4.813 |
4.284 |
| |
0.3 |
20.188 |
19.682 |
2.240 |
1.667 |
1.875 |
1.281 |
1.979 |
1.392 |
2.144 |
1.566 |
| |
1 |
1.542 |
0.914 |
1.304 |
0.630 |
1.183 |
0.465 |
1.216 |
0.512 |
1.271 |
0.587 |
| PCI |
3.411 |
1.119 |
1 |
1.033 |
1.087 |
| RMI |
8.560 |
0.181 |
0 |
0.053 |
0.135 |
| 0.15 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
356.362 |
355.862 |
258.309 |
257.809 |
239.540 |
239.039 |
245.595 |
245.094 |
253.853 |
253.353 |
| |
0.003 |
343.633 |
343.133 |
198.430 |
197.929 |
177.052 |
176.551 |
183.767 |
183.266 |
193.275 |
192.774 |
| |
0.005 |
300.370 |
299.870 |
103.173 |
102.672 |
86.855 |
86.354 |
91.775 |
91.273 |
99.098 |
98.596 |
| |
0.01 |
266.414 |
265.914 |
69.865 |
69.363 |
57.690 |
57.188 |
61.310 |
60.807 |
66.784 |
66.282 |
| |
0.03 |
206.710 |
206.209 |
38.868 |
38.365 |
31.554 |
31.050 |
33.700 |
33.196 |
36.994 |
36.491 |
| |
0.05 |
105.162 |
104.661 |
14.391 |
13.882 |
11.567 |
11.056 |
12.387 |
11.876 |
13.660 |
13.150 |
| |
0.1 |
33.146 |
32.642 |
4.963 |
4.435 |
4.026 |
3.490 |
4.296 |
3.763 |
4.718 |
4.189 |
| |
0.5 |
8.048 |
7.531 |
2.211 |
1.636 |
1.863 |
1.268 |
1.962 |
1.373 |
2.119 |
1.540 |
| |
1 |
1.805 |
1.206 |
1.298 |
0.622 |
1.182 |
0.464 |
1.214 |
0.510 |
1.267 |
0.581 |
| PCI |
2.124 |
1.114 |
1 |
1.032 |
1.083 |
| RMI |
3.581 |
0.177 |
0 |
0.052 |
0.132 |
| |
UCL |
|
|
|
|
|
| 0.25 |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
326.213 |
325.713 |
256.661 |
256.161 |
237.527 |
237.026 |
243.556 |
243.055 |
252.038 |
251.538 |
| |
0.003 |
291.333 |
290.833 |
196.322 |
195.821 |
174.977 |
174.476 |
181.583 |
181.082 |
191.111 |
190.610 |
| |
0.005 |
203.842 |
203.341 |
101.398 |
100.897 |
85.435 |
84.934 |
90.210 |
89.709 |
97.381 |
96.880 |
| |
0.01 |
156.563 |
156.062 |
68.510 |
68.008 |
56.669 |
56.166 |
60.168 |
59.665 |
65.495 |
64.993 |
| |
0.03 |
98.753 |
98.252 |
38.044 |
37.541 |
30.967 |
30.462 |
33.034 |
32.530 |
36.222 |
35.719 |
| |
0.05 |
39.115 |
38.611 |
14.081 |
13.572 |
11.360 |
10.849 |
12.147 |
11.637 |
13.374 |
12.864 |
| |
0.1 |
11.812 |
11.301 |
4.872 |
4.343 |
3.972 |
3.436 |
4.231 |
3.697 |
4.637 |
4.106 |
| |
0.5 |
3.694 |
3.155 |
2.185 |
1.610 |
1.852 |
1.256 |
1.947 |
1.357 |
2.097 |
1.517 |
| |
1 |
1.432 |
0.787 |
1.293 |
0.616 |
1.182 |
0.464 |
1.213 |
0.508 |
1.263 |
0.576 |
| PCI |
1.377 |
1.109 |
1 |
1.030 |
1.080 |
| RMI |
1.333 |
0.174 |
0 |
0.051 |
0.129 |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
|
| 0.05 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.0005 |
368.039 |
367.539 |
261.666 |
261.166 |
242.670 |
242.169 |
248.749 |
248.248 |
257.340 |
256.840 |
| |
0.001 |
365.729 |
365.229 |
202.441 |
201.940 |
180.508 |
180.007 |
187.388 |
186.887 |
197.278 |
196.777 |
| |
0.003 |
356.653 |
356.153 |
106.455 |
105.954 |
89.358 |
88.856 |
94.523 |
94.022 |
102.231 |
101.730 |
| |
0.005 |
347.838 |
347.338 |
72.366 |
71.864 |
59.518 |
59.016 |
63.347 |
62.845 |
69.141 |
68.639 |
| |
0.01 |
326.880 |
326.380 |
40.394 |
39.891 |
32.623 |
32.119 |
34.909 |
34.405 |
38.414 |
37.911 |
| |
0.03 |
256.464 |
255.964 |
14.976 |
14.467 |
11.957 |
11.446 |
12.835 |
12.324 |
14.197 |
13.687 |
| |
0.1 |
117.575 |
117.074 |
5.143 |
4.616 |
4.138 |
3.603 |
4.427 |
3.895 |
4.881 |
4.353 |
| |
0.3 |
20.429 |
19.923 |
2.269 |
1.697 |
1.893 |
1.300 |
2.000 |
1.414 |
2.170 |
1.593 |
| |
1 |
1.557 |
0.931 |
1.314 |
0.643 |
1.188 |
0.473 |
1.223 |
0.522 |
1.280 |
0.598 |
| PCI |
3.421 |
1.123 |
1 |
1.034 |
1.089 |
| RMI |
8.485 |
0.183 |
0 |
0.054 |
0.136 |
| 0.15 |
UCL |
|
|
|
|
|
| |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
356.810 |
356.310 |
259.669 |
259.169 |
240.516 |
240.015 |
246.677 |
246.176 |
255.155 |
254.655 |
| |
0.003 |
344.229 |
343.729 |
199.997 |
199.496 |
178.225 |
177.724 |
185.050 |
184.549 |
194.763 |
194.262 |
| |
0.005 |
301.387 |
300.887 |
104.422 |
103.921 |
87.750 |
87.249 |
92.769 |
92.268 |
100.258 |
99.757 |
| |
0.01 |
267.658 |
267.158 |
70.812 |
70.311 |
58.353 |
57.850 |
62.051 |
61.549 |
67.657 |
67.155 |
| |
0.03 |
208.156 |
207.655 |
39.447 |
38.944 |
31.948 |
31.444 |
34.145 |
33.641 |
37.523 |
37.020 |
| |
0.05 |
106.347 |
105.846 |
14.618 |
14.109 |
11.718 |
11.207 |
12.558 |
12.048 |
13.866 |
13.356 |
| |
0.1 |
33.659 |
33.155 |
5.039 |
4.511 |
4.076 |
3.540 |
4.352 |
3.820 |
4.787 |
4.258 |
| |
0.5 |
8.200 |
7.683 |
2.240 |
1.666 |
1.881 |
1.287 |
1.983 |
1.396 |
2.145 |
1.567 |
| |
1 |
1.831 |
1.234 |
1.308 |
0.635 |
1.188 |
0.473 |
1.221 |
0.519 |
1.275 |
0.593 |
| PCI |
2.144 |
1.117 |
1 |
1.032 |
1.086 |
| RMI |
3.576 |
0.180 |
0 |
0.053 |
0.134 |
| |
UCL |
|
|
|
|
|
| 0.25 |
|
|
|
|
|
|
|
|
|
|
|
| |
0.001 |
326.519 |
326.019 |
257.741 |
257.241 |
238.829 |
238.328 |
244.861 |
244.360 |
253.246 |
252.746 |
| |
0.003 |
292.053 |
291.553 |
197.751 |
197.250 |
176.338 |
175.837 |
183.006 |
182.505 |
192.566 |
192.065 |
| |
0.005 |
205.138 |
204.637 |
102.628 |
102.127 |
86.381 |
85.879 |
91.247 |
90.745 |
98.547 |
98.045 |
| |
0.01 |
157.891 |
157.390 |
69.455 |
68.953 |
57.355 |
56.853 |
60.930 |
60.428 |
66.375 |
65.873 |
| |
0.03 |
99.852 |
99.351 |
38.627 |
38.123 |
31.369 |
30.865 |
33.486 |
32.983 |
36.756 |
36.253 |
| |
0.05 |
39.666 |
39.162 |
14.310 |
13.801 |
11.512 |
11.001 |
12.320 |
11.810 |
13.582 |
13.072 |
| |
0.1 |
12.002 |
11.491 |
4.949 |
4.421 |
4.022 |
3.487 |
4.288 |
3.755 |
4.706 |
4.176 |
| |
0.5 |
3.755 |
3.216 |
2.214 |
1.640 |
1.870 |
1.276 |
1.968 |
1.380 |
2.123 |
1.544 |
| |
1 |
1.446 |
0.803 |
1.303 |
0.629 |
1.188 |
0.472 |
1.220 |
0.517 |
1.272 |
0.588 |
| PCI |
1.385 |
1.113 |
1 |
1.031 |
1.082 |
| RMI |
1.332 |
0.176 |
0 |
0.052 |
0.131 |
Table 7.
Comparing the capabilities of EWMA, Modified EWMA, and New Modified EWMA control charts, all set with a lower control limit at LCL for one-sided and LCL for two-sided control charts, under the ARI model using the monthly Walmart stock prices with parameters defined as , , and and determined .
Table 7.
Comparing the capabilities of EWMA, Modified EWMA, and New Modified EWMA control charts, all set with a lower control limit at LCL for one-sided and LCL for two-sided control charts, under the ARI model using the monthly Walmart stock prices with parameters defined as , , and and determined .
| Model |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
| ARI(2,2) |
0.05 |
LCL |
UCL |
|
|
|
| |
|
0 |
|
|
|
|
|
|
|
| |
|
|
0.0005 |
368.385 |
367.885 |
297.371 |
296.871 |
287.180 |
286.680 |
| |
|
|
0.001 |
366.764 |
366.264 |
248.560 |
248.059 |
234.620 |
234.119 |
| |
|
|
0.003 |
360.370 |
359.870 |
150.272 |
149.771 |
135.688 |
135.187 |
| |
|
|
0.005 |
354.112 |
353.612 |
107.876 |
107.375 |
95.627 |
95.126 |
| |
|
|
0.01 |
339.040 |
338.540 |
63.536 |
63.034 |
55.283 |
54.780 |
| |
|
|
0.03 |
286.093 |
285.593 |
24.588 |
24.083 |
21.085 |
20.579 |
| |
|
|
0.1 |
165.700 |
165.199 |
8.504 |
7.989 |
7.291 |
6.773 |
| |
|
|
0.3 |
48.054 |
47.551 |
3.615 |
3.075 |
3.143 |
2.595 |
| |
|
|
1 |
4.872 |
4.343 |
1.840 |
1.243 |
1.659 |
1.046 |
| |
|
PCI |
5.460 |
1.117 |
1 |
| |
|
RMI |
6.762 |
0.119 |
0 |
| |
|
LCL |
UCL |
|
|
|
| |
|
|
|
|
|
|
|
|
|
| |
|
|
0.001 |
366.237 |
365.737 |
292.438 |
291.938 |
281.750 |
281.250 |
| |
|
|
0.003 |
362.045 |
361.545 |
241.754 |
241.253 |
227.447 |
226.946 |
| |
|
|
0.005 |
346.091 |
345.591 |
143.026 |
142.525 |
128.692 |
128.191 |
| |
|
|
0.01 |
331.329 |
330.829 |
101.757 |
101.256 |
89.932 |
89.431 |
| |
|
|
0.03 |
298.849 |
298.349 |
59.411 |
58.909 |
51.586 |
51.083 |
| |
|
|
0.05 |
210.629 |
210.128 |
22.884 |
22.378 |
19.610 |
19.103 |
| |
|
|
0.1 |
92.469 |
91.967 |
7.975 |
7.459 |
6.843 |
6.323 |
| |
|
|
0.5 |
26.007 |
25.502 |
3.458 |
2.915 |
3.013 |
2.463 |
| |
|
|
1 |
4.526 |
3.995 |
1.808 |
1.209 |
1.634 |
1.018 |
| |
|
PCI |
4.011 |
1.115 |
1 |
| |
|
RMI |
4.635 |
0.120 |
0 |
Table 8.
Comparing the capabilities of EWMA, Modified EWMA, and New Modified EWMA control charts, all set with a lower control limit at LCL for one-sided, and LCL for two-sided control charts, under the ARFI model using the monthly Amazon.com stock prices with parameters defined as , and determined .
Table 8.
Comparing the capabilities of EWMA, Modified EWMA, and New Modified EWMA control charts, all set with a lower control limit at LCL for one-sided, and LCL for two-sided control charts, under the ARFI model using the monthly Amazon.com stock prices with parameters defined as , and determined .
| Model |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
| ARFI(1,0.2) |
0.05 |
LCL |
UCL |
|
|
|
| |
|
0 |
|
|
|
|
|
|
|
| |
|
|
0.0005 |
359.142 |
358.642 |
293.164 |
292.664 |
288.881 |
288.381 |
| |
|
|
0.001 |
348.560 |
348.060 |
242.517 |
242.016 |
236.890 |
236.389 |
| |
|
|
0.003 |
311.673 |
311.173 |
143.673 |
143.172 |
137.998 |
137.497 |
| |
|
|
0.005 |
281.661 |
281.161 |
102.279 |
101.778 |
97.564 |
97.063 |
| |
|
|
0.01 |
226.495 |
225.994 |
59.760 |
59.258 |
56.616 |
56.113 |
| |
|
|
0.03 |
124.740 |
124.239 |
23.045 |
22.540 |
21.723 |
21.217 |
| |
|
|
0.1 |
44.779 |
44.276 |
8.049 |
7.533 |
7.595 |
7.077 |
| |
|
|
0.3 |
13.280 |
12.770 |
3.501 |
2.959 |
3.325 |
2.781 |
| |
|
|
1 |
3.274 |
2.729 |
1.834 |
1.236 |
1.766 |
1.163 |
| |
|
PCI |
2.333 |
1.041 |
1 |
| |
|
RMI |
2.261 |
0.044 |
0 |
| |
|
LCL |
UCL |
|
|
|
| |
|
|
|
|
|
|
|
|
|
| |
|
|
0.001 |
338.903 |
338.403 |
291.315 |
290.815 |
287.333 |
286.833 |
| |
|
|
0.003 |
312.530 |
312.030 |
240.121 |
239.620 |
234.692 |
234.191 |
| |
|
|
0.005 |
238.302 |
237.801 |
141.271 |
140.770 |
135.710 |
135.209 |
| |
|
|
0.01 |
192.528 |
192.027 |
100.287 |
99.786 |
95.667 |
95.166 |
| |
|
|
0.03 |
129.995 |
129.494 |
58.439 |
57.937 |
55.362 |
54.860 |
| |
|
|
0.05 |
56.362 |
55.860 |
22.506 |
22.000 |
21.214 |
20.708 |
| |
|
|
0.1 |
18.744 |
18.237 |
7.882 |
7.365 |
7.437 |
6.919 |
| |
|
|
0.5 |
6.507 |
5.986 |
3.451 |
2.908 |
3.278 |
2.733 |
| |
|
|
1 |
2.369 |
1.800 |
1.823 |
1.225 |
1.756 |
1.153 |
| |
|
PCI |
1.491 |
1.041 |
1 |
| |
|
RMI |
0.904 |
0.044 |
0 |
Table 9.
Comparing the capabilities of EWMA, Modified EWMA, and New Modified EWMA control charts, all set with a lower control limit at LCL for one-sided, and LCL for two-sided control charts, under the ARFI model using the monthly Microsoft stock prices with parameters defined as , , and determined .
Table 9.
Comparing the capabilities of EWMA, Modified EWMA, and New Modified EWMA control charts, all set with a lower control limit at LCL for one-sided, and LCL for two-sided control charts, under the ARFI model using the monthly Microsoft stock prices with parameters defined as , , and determined .
| Model |
|
Control Chart |
EWMA |
Modified EWMA |
New Modified EWMA |
| |
|
|
|
|
|
| ARFI(2,0.4) |
0.05 |
LCL |
UCL |
|
|
|
| |
|
0 |
|
|
|
|
|
|
|
| |
|
|
0.0005 |
341.540 |
341.040 |
291.125 |
290.625 |
289.381 |
288.881 |
| |
|
|
0.001 |
317.109 |
316.609 |
240.017 |
239.516 |
237.308 |
236.807 |
| |
|
|
0.003 |
246.505 |
246.004 |
141.269 |
140.768 |
138.257 |
137.756 |
| |
|
|
0.005 |
201.555 |
201.054 |
100.303 |
99.802 |
97.757 |
97.255 |
| |
|
|
0.01 |
138.321 |
137.820 |
58.458 |
57.955 |
56.739 |
56.237 |
| |
|
|
0.03 |
61.027 |
60.525 |
22.514 |
22.009 |
21.787 |
21.281 |
| |
|
|
0.1 |
20.314 |
19.808 |
7.883 |
7.366 |
7.632 |
7.115 |
| |
|
|
0.3 |
6.924 |
6.405 |
3.450 |
2.907 |
3.353 |
2.809 |
| |
|
|
1 |
2.432 |
1.866 |
1.822 |
1.224 |
1.785 |
1.183 |
| |
|
PCI |
1.521 |
1.023 |
1 |
| |
|
RMI |
0.966 |
0.024 |
0 |
| |
|
LCL |
UCL |
|
|
|
| |
|
|
|
|
|
|
|
|
|
| |
|
|
0.001 |
321.083 |
320.583 |
290.382 |
289.882 |
288.191 |
287.691 |
| |
|
|
0.003 |
283.596 |
283.096 |
238.890 |
238.389 |
235.878 |
235.377 |
| |
|
|
0.005 |
193.408 |
192.907 |
140.029 |
139.528 |
136.928 |
136.427 |
| |
|
|
0.01 |
146.825 |
146.324 |
99.258 |
98.757 |
96.679 |
96.178 |
| |
|
|
0.03 |
91.786 |
91.284 |
57.757 |
57.255 |
56.038 |
55.536 |
| |
|
|
0.05 |
37.050 |
36.547 |
22.227 |
21.721 |
21.505 |
20.999 |
| |
|
|
0.1 |
12.447 |
11.937 |
7.794 |
7.276 |
7.545 |
7.028 |
| |
|
|
0.5 |
4.776 |
4.247 |
3.423 |
2.880 |
3.327 |
2.782 |
| |
|
|
1 |
2.078 |
1.497 |
1.816 |
1.218 |
1.779 |
1.177 |
| |
|
PCI |
1.228 |
1.023 |
1 |
| |
|
RMI |
0.429 |
0.024 |
0 |