Submitted:
17 July 2025
Posted:
21 July 2025
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Abstract
Keywords:
1. Introduction
2. Scientific Approach and Model Formulation
2.1. Scientific Approach, Literature Review, and Justification
2.2. Justification for the Compartmental Model
2.3. A Guide to Model Formulation
2.4. Model Formulation
- Product Refinement/Importation : Initial supply of petroleum products
- Transporter/NUPENG/PENGASSAN/PPMC: Distributors responsible for delivering products to retail stations.
- Retail Stations : Points of sale, classified into major marketers (NNPC Retail/Mega Stations) and independent marketers.
- Consumers (): The final stage where petroleum products are utilized.
2.4.1. Basic Assumption of the Model
- Fuel scarcity leads to price increases, either directly at the pump or through parallel markets (black markets), prompting hoarding and diversion.
- Ideally, retail marketers are meant to be the sole suppliers to consumers unless tanker drivers siphon products, so a siphon parameter () is included in the model.
- All parameters are non-negative; any negative results in the model will be interpreted as impractical.
- Fuel scarcity can be resolved when consumer demand is lower than supply from major and independent marketers. Therefore, policy and good implementation are embedded in the model simulation
2.4.2. General Form of the Model
3. Properties and Analysis of the Mathematical Model
3.1. Model Properties
- represents a set of storage facilities owned by NNPC/MOMAN for distributing products.
- represents the storage at retail (refilling) stations.
- represents the quantity of fuel stored by consumers, and
- Ω is the combined quantity of refined products in the country.
3.2. Existence and Uniqueness of Solutions
4. Model Analysis: Equilibrium Points, Threshold Parameter, and Stability Analysis
-
High Pipeline Vandalism:
- Significant vandalism severely disrupts product distribution,
- The system relies solely on pipelines, with no secured alternative distribution routes.
- Despite the stability of other system components, high vandalism creates a major bottleneck.
- No Pipeline Vandalism: Assumes no vandalism, ensuring uninterrupted pipeline distribution. However, industrial actions may still disrupt supply despite functional infrastructure.
-
Mitigation Measures and Alternative Routes:
- Policies and interventions are implemented to curb vandalism.
- Alternative distribution routes (e.g., railways for inter-state transportation and long distance transport) reduce dependence on pipelines.
- A diversified distribution strategy enhances system resilience against disruptions.
4.1. POINTS OF EQUILIBRIUM
- (vandalism level),
- (industrial action level),
- Critical Collapse - Severe fuel scarcity with widespread economic and social disruption.
- Partial Collapse - Significant shortages are causing moderate disruptions to daily activities.
- Partial Functionality - Limited fuel availability with manageable impacts.
- Moderate Functionality - Consistent but suboptimal fuel supply meeting most consumer needs.
- Optimal Distribution - Smooth and efficient fuel supply, fully satisfying demand.
- Critical Collapse (): When vandalism reaches its peak and industrial actions (e.g., strikes by key transporters or workers such as NUPENG) occur, the entire fuel distribution system collapses. In this state, fuel is confined to the White Tank storage with no distribution across the supply chain. This scenario mirrors recent events where industrial actions triggered nationwide fuel crises [65].
- Partial Collapse (): In this scenario, vandalism remains at maximum levels , and no alternative transportation routes exist , but transporter activities continue . This state may give the illusion of operational functionality while the system struggles to maintain supply. Further details are provided in Equation (A10).
- Partial Functionality (): This event occurs when vandalism is significantly reduced, but the absence of transporters disrupts distribution. Although the system is less strained, the lack of transporter involvement continues to impair functionality.
- Moderate Functionality (): In this case, vandalism is minimal , and while transporters are active , no alternative transportation routes are available . However, this scenario does not account for the anticipated population growth, which will inevitably lead to increased fuel demand.
- Optimal Functionality (): This scenario represents a state of crisis preparedness and ensures optimal operation at all times. It is characterized by minimal vandalism, active transporters, and alternative routes that provide resilience against disruptions.
4.2. THRESHOLD FOR PRODUCT DISTRIBUTION
- , , in the event of a pipeline crisis.
- under smooth transportation conditions.
4.3. STABILITY ANALYSIS OF THE MODEL
4.3.1. Methodology for Stability Analysis
- Eigenvalue Computation: Evaluate the eigenvalues of the Jacobian matrix,
- Conditions for Stability: Derive conditions on system parameters that ensure the eigenvalues meet the stability criteria.
| Eigenvalues of J | Type of Critical Point | Remark |
| Source | Unstable | |
| Sink | Asymptotically Stable | |
| Saddle Point | Unstable | |
| Outward Spiral | Unstable | |
| Inward Spiral | Asymptotically Stable | |
| , | Centre | Indeterminate |
4.4. Stability Result Summary
- ,
- and , ensuring product demand does not exceed supply, regardless of the distribution method.
- is globally asymptotically stable
- is globally asymptotically stable whenever the arithmetic mean exceeds the geometric mean of Lyapnouv function for
4.4.1. Interpretation
4.4.2. Terminology Consistency
- Scenario IIa is referred to as the Products Distribution-Free Equilibrium (PDE), representing conditions where no products are distributed.
- Scenario IIb is referred to as the Products Distribution Persistent Equilibrium (PDP), representing conditions where product distribution continues over time.
- The parameter is introduced as a generalized threshold encompassing both and , serving as a comprehensive indicator of system stability.
- Analytical results use conditions or to establish equilibrium stability, following classical approaches.
- Numerical simulations compute actual values to provide a realistic representation of fuel distribution dynamics.
4.4.3. Appendix Reference
5. Numerical Simulation and Discussion of Results
5.1. Parametrization and Base Value
5.1.1. Assumption of Parameters Value
- Values for are assumed due to insufficient direct empirical data.
- Loss rates at and are denoted as () and is treated uniformly in their respective subsystems for simplicity.
5.1.2. Simulation Setup
5.1.3. Brief About the Data
5.2. Scenario Simulation and Results Discussion
5.2.1. Effect of Vandalism and Alternative Routes on ()
5.2.2. Effect of Hoarding and Diversion of Product on the
5.2.3. General Model Simulation
Hoarding by Retail Marketers
- Without stricter regulations, hoarding disrupts distribution and fuels smuggling to neighboring countries where PMS prices are higher will on the daily basis increase.
- This highlights the urgent need for regulatory measures targeting independent marketers to ensure equitable fuel distribution.
Transportation Efficiency and Industrial Actions
- These findings emphasize the need for policymakers to address stakeholder grievances in the Z class to maintain supply chain stability.
6. Summary, Conclusions, and Limitation
6.1. Summary from mathematical Analysis
- Model Validation: The feasibility region, positivity of solutions, and existence and uniqueness of the model were established, ensuring alignment with real-world scenarios and validating the model’s applicability.
- Equilibrium Points: Five equilibrium points were identified, representing conditions under which fuel scarcity could be mitigated or resolved.
- Threshold Analysis: A critical supply PMS threshold of 42 million liters per day was derived, indicating the minimum volume required to meet consumer demand and eliminate queues at service stations.
- Stability Analysis: Using the Lyapunov function and Routh-Hurwitz criteria, the study demonstrated that effective fuel distribution could achieve stability, provided government policies create a conducive environment for stakeholders such as NUPENG, MOMAN, and tanker drivers.
-
Simulation Results: Numerical simulations, conducted using the classical Runge-Kutta method in Maple 18, highlighted that:
- Hoarding by private retail stations exacerbates fuel scarcity and drives up prices of fuel and other commodities.
- Industrial actions by marketers and transporters (Z) have a more significant impact on fuel distribution crises than pipeline vandalism, underscoring the need for robust government intervention.
6.2. Insights, Challenges, and Future Directions in Fuel Distribution Modeling
6.3. Conclusion, Recommendation, and Limitation
- Advanced security systems (e.g., smart surveillance) to protect pipelines.
- Infrastructure improvements to mitigate vandalism, corruption, and poor road conditions.
- Effective regulatory oversight of private marketers (Z) to ensure supply stability.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A.
Appendix A.1. Existence and Uniqueness of Solutions
Appendix A.2. Equilibrium Points
- Partial functionality: When vandalism is significantly reduced () and , the system stabilizes at:
- Moderate functionality: Vandalism is reduced (), , and . The equilibrium is:where:
Appendix A.3. Proof of the Threshold Parameter
Appendix A.4. Stability Analysis
Appendix A.4.1. Application of the Methodology
Proof of Local Stability
- Step 1: Linearization: The Jacobian matrix of the system is obtained and evaluated near the partial functionality equilibrium and for a specific case; in the absence of alternative routes, the Jacobian reduces to:
- Step 2: Eigenvalue Computation: The eigenvalues are determined from the characteristic equation .
- Step 3: Characterization of Eigenvalues: The eigenvalues of the Jacobian are:
-
Step 4: Stability Criteria: By the Routh-Hurwitz stability criterion, all eigenvalues must be negative for local asymptotic stability.
- -
- hold true.
- -
- For , the vandalism rate must satisfy .
- -
- For , the consumer demand must exceed the supply at retailer filling stations, implying .
Consequently, stability depends on controlling vandalism and ensuring the supply chain meets consumer demand. The model is locally asymptotically stable under these conditions, affirming Theorem 5.
Reduced System Analysis
- PDE (): ,
- PDP (): ,
Global Stability Analysis
-
At : The Jacobian matrix evaluated at yields the characteristic equation:Eigenvalues are:Stability holds if , establishing as globally asymptotically stable under this condition.Theorem A1.The stability at is Globally Asymptotically stable if and the system transits to instability .Proof:Consider the Lyapnouv function with derivative offrom PDE (partial functionality), , (A23) becomessimplification givesTherefore if and if . Thus, F is a Lyapnouv function and by LaSellei invariance principle, every solution of (A19) approaches as .
- At : Using the Goh-Volterra nonlinear Lyapunov function, global stability at is confirmed if .
Appendix A.5. Global Stability at Moderate Functionality
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| ACRONYMS | DESCRIPTION |
|---|---|
| AGO | Automotive Gas Oil |
| PMS | Premium Motor Spirit |
| DPK | Dual Purpose Kerosene |
| HHK | House Hold Kerosene |
| LPG | Liquefied Petroleum Gas |
| DPR | Department for Petroleum Resources |
| PPD | Petroleum Products Distribution |
| WRPC | Warri Refining and Petrochemical Company |
| mbbls | Million Barrels |
| PHRC | Port Harcourt Refining Company |
| FAAC | Federation Account Allocation Committee |
| PPMC | Pipelines and Products Marketing Company Limited |
| PIMS | Pipeline Information Management System |
| PPPRA | Petroleum Product Price Regulatory Agency |
| PEFMB | Petroleum Equalization Fund (Management Board) |
| NMDPRA | Nigerian Midstream and Downstream Petroleum Regulatory Authority |
| PENGASSAN | Petroleum and Natural Gas Senior Staff Association of Nigeria |
| NUPENG | Nigeria Union of Petroleum and Natural Gas Workers |
| OECD | Organization for Economic Co-operation and Development |
| MOMAN | Major Oil Marketers Association of Nigeria |
| NNPC | Nigerian National Petroleum Corporation Limited |
| Parameter | Description |
| Quantity of products refined/imported for NNPC Downstream | |
| Proportion of products pumped from refineries/PPMC import storage | |
| V | Constant function & representing vandalism on the pipeline |
| Percentage of natural loss on product pumped via pipeline | |
| c | Operational efficiency of product pumped/transported from A(t) to Z(t) |
| x and y | Percentage of sharing formula for stakeholders involvement in products |
| Proportion of product siphoned by Tanker drivers during transportation | |
| and | the rate of sale of products to final consumers by retail filling stations |
| proportion of natural loss of the product at , and | |
| Q(t) | White Depot/PPMC Depot |
| A(t) | NNPC/PPMC Retail Deport |
| Z(t) | NUPENG/Transporters |
| NNPC Mega Station/Independent Marketers Filling Station | |
| Private Marketers Filling Stations | |
| M(t) | Petroleum Products Consumers |
| Par. | Short Description (Unit) | Baseline Value | Range | Source |
|---|---|---|---|---|
| Total fuel supply per day (Mltr/day) | 100 Mltr/Day | 1-100 | [40,44,60,63] | |
| Rate of pipeline supply to large storage distributors(Fraction/day) | 0.99 | [0,1] | Assumed | |
| V | Vandalism activity parameter(percentage) | 0.01 | (0,1] | Table 29.0 in [38] |
| Fuel natural loss at and (Percentage) | 0.043 | Estimated | [39,40,41,42,57,58,59,60,61,63] | |
| c | Proportion of product pumped/transported from A(t) to Z(t) (Percentage) | 0.25 | [0,1] | [39,40,41,42,57,58,59,60,61,63] |
| x, y | NNPC Retailing Plc (23.43%) + 6 major marketers 25.47%, and 3800 Independent/private marketers (51%) | 0.489, 0.510 | 0.489, 0.510 | Estimated [9] |
| Proportion of product siphon by Tanker drivers during transportation (Fraction/day) | 0.001 | 0.001 | Assumed | |
| , | the rate of sale of products to final consumers by retail filling stations(dimensionless) | 0.8, 0.8 | [0,1] | Assumed |
| proportion of natural loss of the product at , and | 0.02 | 0.02 | Assumed | |
| proportion of natural loss of the product at | 0.0095 | 0.0095 | Assumed |
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