2.1. Response Surface Model Construction
The Response Surface Method (RSM) is a method to establish a one-to-one mathematical relationship between the selected road design parameters and the pressure of each feature point based on the experimental design results. For the n-dimensional input factor
, the response target is
. The function expression between the input factor x and the response objective y is:
Where, is the sub-item of the fitting polynomial with order of x, is the coefficient of each item, which is fitted by the least square method from the response target , and is the number of items of the fitting polynomial.
Based on FFD, 112 sample point matrices were generated to construct a response surface approximation model. Then, the significant
p-value analysis of each sub-item of the constructed response surface approximation model is carried out.
Table 3 gives the significant
p-values of each sub-item of the A-point, B-point and P
max response surface model under different parameters. In the response surface polynomial,
represents the inlet angle;
represents the number of lanes;
represents the outer radius of the intersection.
For the A-point response surface model, the significance p values of the polynomial sub-items , , , , , and are less than 0.05, indicating that the above sub-items have significant effects. For the B-point response surface model, the polynomial sub-terms , , , , and have a significant effect. For the Pmax response surface model, the polynomial subformulas , , , , , , and have a significant effect.
According to the significance
p-value analysis results of each sub-item of the polynomial response surface of point A, point B and P
max, combined with the significance
p-value analysis evaluation criteria, the sub-items with significant influence are retained, and the sub-items with insignificant influence are removed. Finally, the polynomial response surface approximation model is obtained, and the mathematical relationship is as follows.
The polynomial response surface model is gradually approaching the actual value through the approximate value, so there is a random error in the process of fitting the polynomial response surface model. In order to ensure the accuracy of the fitted response surface approximation model, it is necessary to analyze the error of the fitted response surface approximation model. The commonly used error evaluation criteria are Maximum Error (ME), Root Mean Square Error (RMSE), Average Error (AE) and Coefficient of Determination (R
2). As shown in
Table 4, the 1-3 order error values of the polynomial response surface approximation model of point A, point B and P
max are given.
From
Table 4, it can be found that with the gradual increase of the fitting order of the polynomial response surface approximation model of A point, B point and P
max, the values of the polynomial function ME, AE and RMSE show a decreasing trend. On the contrary, the value of R
2 gradually increases with the increase of the polynomial function fitting order, and the value gradually approaches 1. For the second-order and third-order polynomial response surface, the error of each polynomial response surface approximation model is relatively close, which indicates that the accuracy of the second-order polynomial response surface approximation model is sufficient to meet the design requirements. Therefore, this paper chooses the second-order polynomial to fit the A-point, B-point and P
max polynomial response surface approximation model.
2.2. Single Parameter Influence Analysis
Using the obtained response surface approximation model and the single factor analysis method, the independent influence of the inlet angle (
x1), the number of lanes (
x2) and the outer radius (
x3) on the A point, B point and P
max is analyzed respectively. The influence of specific parameters is shown in
Figure 2.
Figure 2 (a), (b) and (c) are the curves of point A, point B and P
max pressure at different inlet angles. It can be seen that with the increase of the inlet angle, the pressure of point A and P
max is positively correlated, and the pressure of point B is negatively correlated.
Figure 2 (d), (e) and (f) are the pressure change curve of each feature point when setting different number of lanes. It can be seen that the pressure of point A, point B and P
max shows a strong negative correlation with the increase of the number of lanes, indicating that the more the number of lanes set within a certain range, the better the pressure relief effect in the ring.
Figure 2 (g), (h) and (i) are the pressure curve of each feature point when the outer radius is different. It can be seen that with the increase of the outer radius, the pressure at point A is positively correlated, and the pressure at point B and P
max is negatively correlated.
2.4. Full Parameter Impact Analysis
In the Global Sensitivity Analysis [
37] (GSA) method, the moment independent sensitivity analysis method is selected to quantitatively analyze the influence of different parameters of the roundabout road design. According to the above, FFD is used to construct the response surface model of A point, B point and P
max respectively, and the statistics of the response surface approximation model
of each feature point can be obtained. The moment independent sensitivity analysis method is applied to the sensitivity analysis of key parameters of different roads at roundabouts through Python.
Where and are empirical unconditional cumulative distribution function and conditional cumulative distribution function respectively.
Then the sensitivity index
of point A, point B and P
max response surface model can be calculated:
The main geometric parameters affecting the internal pressure of the ring at the roundabout include the vehicle entrance angle
, the number of lanes
, and the outer ring radius
, which are defined as the following unified form :
2.4.1. Sensitivity Analysis Results of Different Parameters at Point A
Based on the existing response surface approximation model of point A, the sensitivity analysis of different key parameters of the road is carried out by using the moment independent sensitivity analysis method, so as to obtain the quantitative influence degree of different parameters on the pressure of point A. The results of K-S statistical distribution and cumulative distribution function (CDF) of different parameters are shown in
Figure 4.
Through Formula (13), the sensitivity index
of different parameters of roundabout road design can be obtained. However, since the expected value is very sensitive to the extreme value of K-S, for some specific conditional values
, the median is used as the summary statistic, supplemented by the maximum value [
38]. The sensitivity index
is shown in
Table 5.
Based on the sensitivity indicators given in
Figure 4 and
Table 5, the following rules can be summarized:
(1) According to the relevant content of CDF, if the distance between the conditional CDF
(gray solid line) and the unconditional CDF
(red dotted line) is larger, or the conditional CDF
is more dispersed around the unconditional cumulative distribution function
, then this parameter has a greater impact on the output response. From the distribution results of CDF with different parameters in
Figure 4 (d), (e) and (f), it can be found that the design parameters
and
of the roundabout road have a great influence on the pressure in the ring, and
has the least influence on the pressure in the ring.
(2) According to the relevant content of the statistical sensitivity index, it can be concluded that the larger the value of the sensitivity index is, the greater the influence of the parameter on the response value is. According to the sensitivity index given in table 5, it can be seen that the design parameters and of the roundabout road have a great influence on the pressure in the ring, and has the least influence.
(3) In general, the order of the influence of different parameters on the pressure in the ring is : > > , that is, number of lanes> inlet angle> outer radius.
2.4.2. The Sensitivity Analysis Results of Different Parameters of B Point
Combining the second-order polynomial response surface approximation model of B point fitted by experimental design with sensitivity analysis method, the sensitivity analysis of different key parameters is carried out, so as to obtain the quantitative influence degree of different road geometric parameters on B point pressure. The statistical distribution of different parameters and the results of CDF are shown in
Figure 5.
According to Formula (13), the sensitivity indexes of different parameters for point B pressure can be obtained. The specific values are shown in
Table 6.
Based on the sensitivity index
for different parameters of point B pressure given in
Figure 5 and
Table 6, the following rules can be summarized:
(1) From the distribution results of different parameters CDF in
Figure 5 (d), (e) and (f), it can be found that for parameter
, a significant deviation is observed between the conditional CDF
and the unconditional CDF
, indicating that
has the most pronounced influence on the output response. Parameter
also exhibits a moderate impact on the in-ring pressure.
(2) According to the K-S statistical sensitivity index of different parameters given in table 6, it can be seen that the value of sensitivity index is the largest, which indicates that the road design parameter has the greatest influence on the response output value.
(3) It is found that the influence of different road design parameters on the pressure of point B in the ring is sorted from large to small as follows: > > , that is, the number of lanes> outer radius> inlet angle.
2.4.3. Sensitivity Analysis Results of Different Parameters of Pmax
The sensitivity analysis of different parameters is also carried out. The sensitivity analysis of different key parameters is carried out by moment independent sensitivity analysis method combined with P
max response surface approximation model. The statistical distribution and CDF results of different parameters are shown in
Figure 6.
The sensitivity indexes of different parameters are shown in
Table 7.
From the sensitivity index
of different parameters listed in
Figure 6 and
Table 7, the following rules can be obtained:
(1) From the distribution results of different parameters CDF in
Figure 6 (d), (e) and (f), it can be seen that the difference between the conditional CDF
and the unconditional CDF
of parameter
is the largest, indicating that
has the most significant influence on the output response.
exhibits a secondary influence, while
has the minimal impact.
(2) From the K-S statistical sensitivity index
of different parameters given in
Table 7, parameter
shows the largest maximum and median values of the sensitivity index
, further confirming its dominant effect on the target response.
(3) Based on the above conclusions, the quantified influence of parameters on the in-ring Pmax follows the order > > , corresponding to outer radius> number of lanes> inlet angle.