Research on Green Distribution Problems of Mixed Fleets Considering Multiple Charging Methods
Abstract
1. Introduction
- We propose the MFGVRPTW-C model, which integrates mixed fleet route planning, time windows, multi-mode charging, and carbon cost accounting, achieving unified optimization under a single objective.
- We design an IALNS framework tailored to the problem, incorporating problem-specific construction methods, operators, and local improvement strategies, jointly addressing charging mode selection.
- Through benchmark tests and a real-world case study, we provide managerial insights into how fleet composition and charging methods influence cost and emission outcomes.
2. Literature Review
3. Problem Description and Mathematical Formulations
3.1. Problem Description
- (1)
- Each customer is exclusively served once by one vehicle (either fuel-powered or electric), with customer demand non-splittable.
- (2)
- When a vehicle arrives at a customer node or charging station, its engine is turned off, resulting in no energy consumption or carbon emissions.
- (3)
- Each charging station has no capacity limit, allowing multiple vehicles to receive charging or battery-swapping services simultaneously. Only one charging method can be selected per vehicle, the charging amount is linearly proportional to the charging time, and each vehicle is limited to a single charging event.
- (4)
- The two types of delivery vehicles (fuel and electric) are homogeneous within their respective types and have the same travel speed.
- (5)
- During the delivery process, a sufficient number of EVs and FVs are available for selection; that is to say, there is no restriction on the number of fuel-powered vehicles and electric vehicles.
3.2. Mathematical Formulations
3.2.1. Objective Function
3.2.2. Model Formulation
4. IALNS Algorithm
- Employing the K-means clustering method to generate an initial feasible solution.
- Designing distinct removal and repair operators for customer nodes and charging stations, tailored to the transportation process of a mixed fleet.
- Developing two local optimization operators to accelerate convergence.
4.1. Encoding Scheme
4.2. Construction of Initial Solutions
4.3. Removal Operators
4.3.1. Customer Node Removal
4.3.2. Charging Station Removal
4.4. Insertion Operators
4.4.1. Customer Node Insertion
4.4.2. Charging Station Insertion
4.5. Local Optimization Operators
| Algorithm 1: Route merging strategy. |
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| Algorithm 2: Select charging methods. |
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4.6. Operator Selection Strategy and Adaptive Adjustment Mechanism
- When operator i generates a solution that improves the best-known solution, its score is increased by .
- When operator i generates a solution that improves the current solution, its score is increased by .
- When operator i generates a solution worse than the current solution but the solution is accepted, its score is increased by .
4.7. Solution Acceptance Criterion and Algorithm Termination Conditions
5. Computational Results
5.1. Experiment Preparation
5.2. Performance of the Algorithm
5.2.1. Small-Scale Numerical Example Experiment
5.2.2. Medium- and Large-Scale Numerical Example Analysis
5.2.3. Simulation Case Study Experiment
5.3. Sensitivity Analysis
5.3.1. Fleet Configuration
5.3.2. Different Charging Methods
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
| The starting and ending depot nodes. | |
| C | Set of customer nodes. |
| R | Set of charging station nodes. |
| Set of all customer and charging station nodes. | |
| Set of origin nodes, including the depot, customers, and charging | |
| stations. | |
| Set of destination nodes, including customers, charging stations, | |
| and the end depot. | |
| Set of all vehicles available at the depot. | |
| Sets of electric and fuel vehicles, respectively. | |
| Demand of customer node . | |
| Load carried by vehicle on arc . | |
| Distance of arc . | |
| Travel time from node i to node j. | |
| Arrival time of vehicle at node i. | |
| Departure time of vehicle from node i. | |
| Charging time of vehicle at node . | |
| Waiting time of vehicle at node i. | |
| Service time at node for vehicle . | |
| Service time window for customer node . | |
| Maximum load capacity of electric and fuel vehicles, respectively. | |
| Battery capacity of electric vehicles. | |
| Energy consumption rate of electric vehicles (in kWh/km). | |
| Battery level of vehicle upon arrival at/departure from node i. | |
| Amount of energy recharged by vehicle at node . | |
| Binary variable, equal to 1 if vehicle traverses arc , | |
| and 0 otherwise. | |
| Binary variable, equal to 1 if vehicle uses slow charging at node | |
| , and 0 otherwise. | |
| Binary variable, equal to 1 if vehicle uses fast charging at node | |
| , and 0 otherwise. | |
| Binary variable, equal to 1 if vehicle uses battery swapping at | |
| node , and 0 otherwise. | |
| M | A large positive constant used for constraint enforcement. |
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| Instance | Gurobi | IALNS Algorithm | %GAP | ||
|---|---|---|---|---|---|
| T | TC | T | TC | ||
| c101C10F5 | 1013.24 | 3686.34 | 31.34 | 3686.34 | 0.00% |
| c104C10F5 | 1800.00 | 1861.47 | 20.57 | 1861.47 | 0.00% |
| c201C10F5 | 1054.28 | 1709.61 | 48.12 | 1709.61 | 0.00% |
| c205C10F5 | 34.92 | 1592.25 | 19.89 | 1592.25 | 0.00% |
| r102C10F5 | 16.25 | 1833.37 | 21.45 | 1833.37 | 0.00% |
| r103C10F5 | 1800 | 1319.26 | 16.73 | 1319.26 | 0.00% |
| r201C10F5 | 76.45 | 1631.39 | 35.19 | 1631.39 | 0.00% |
| r203C10F5 | 1800 | 1087.26 | 55.68 | 1087.26 | 0.00% |
| rc102C10F5 | 19.63 | 2670.25 | 21.02 | 2638.86 | −1.18% |
| rc108C10F5 | 1247.90 | 1733.88 | 22.91 | 1733.88 | 0.00% |
| rc201C10F5 | 180.14 | 1797.89 | 37.47 | 1797.89 | 0.00% |
| rc205C10F5 | 83.72 | 2175.70 | 28.83 | 2175.70 | 0.00% |
| c103C15F5 | 1800 | 3644.41 | 90.25 | 3644.41 | 0.00% |
| c106C15F5 | 23.19 | 2848.19 | 54.96 | 2848.19 | 0.00% |
| c202C15F5 | 1800 | 2279.88 | 99.14 | 2279.88 | 0.00% |
| c208C15F5 | 430.61 | 1778.02 | 76.60 | 1778.02 | 0.00% |
| r102C15F5 | 1800 | 3006.59 | 59.39 | 3020.79 | 0.47% |
| r105C15F5 | 1800 | 2676.02 | 51.71 | 2676.02 | 0.00% |
| r202C15F5 | 1800 | 1984.58 | 135.05 | 1984.58 | 0.00% |
| r209C15F5 | 1800 | 1855.30 | 138.28 | 1855.30 | 0.00% |
| rc103C15F5 | 1800 | 2764.30 | 48.84 | 2741.91 | −0.82% |
| rc108C15F5 | 1800 | 2351.23 | 61.67 | 2351.23 | 0.00% |
| rc202C15F5 | 1800 | 2921.81 | 123.93 | 2867.18 | −1.86% |
| rc204C15F5 | 1800 | 1914.40 | 256.50 | 1914.40 | 0.00% |
| Instance | GA | IALNS | ALNS | %GAP | |||
|---|---|---|---|---|---|---|---|
| TC | T | TC | T | TC | T | ||
| c101C5OF21 | 5259.05 | 2083.72 | 4769.55 | 2117.96 | 5130.78 | 2127.35 | 7.57 |
| c106C5OF21 | 4874.84 | 2796.98 | 4162.45 | 2712.98 | 4733.41 | 2881.83 | 13.72 |
| c206C50F21 | 4057.38 | 4253.67 | 3661.08 | 4208.18 | 3920.17 | 4436.93 | 7.08 |
| r102C50F21 | 9938.52 | 2073.62 | 9738.76 | 1755.99 | 9743.65 | 2361.12 | 0.05 |
| r103C50F21 | 8470.51 | 2613.79 | 8036.42 | 2007.97 | 8144.72 | 2504.2 | 1.35 |
| rc206C50F21 | 4564.76 | 3121.76 | 4509.05 | 3078.52 | 4439.28 | 3152.24 | 2.79 |
| rc108C75F21 | 6925.46 | 3836.63 | 5955.41 | 3968.49 | 6710.72 | 4409.67 | 12.68 |
| rc202C75F21 | 4841.49 | 4918.75 | 4278.13 | 4870.41 | 4636.31 | 5287.53 | 8.37 |
| Parameters | Valve | Parameters | Valve |
|---|---|---|---|
| 100, 150 yuan/per vehicle | 90 kwh | ||
| 1.5, 1.2 yuan/km | 0.88 kwh/km | ||
| 5, 10 yuan/h | 4.9, 4.5 t | ||
| 0.5 yuan/kg | V | 50 km/h | |
| 0.24, 0.08 L/km | 30, 10 kw | ||
| 2.65 kg/L | 0.68, 1.46 yuan/kwh | ||
| 0.72 | 80 yuan | ||
| 0.94 kg/kwh | p | 8 min |
| Algorithm | Vehicle EV_FV | Total Distance (km) | Total Time (min) | Charging Cost (Yuan) | Total Cost (Yuan) |
|---|---|---|---|---|---|
| GA | 4_5 | 1155.74 | 2119.40 | 253.88 | 4578.32 |
| ALNS | 4_5 | 1107.90 | 2087.54 | 241.79 | 4497.39 |
| IALNS | 5_3 | 976.73 | 1873.92 | 228.98 | 4365.02 |
| IALNS vs. GA Reduction (%) | 11.1% | 15.5% | 13.1% | 9.8% | 4.6% |
| IALNS vs. ALNS Reduction (%) | 11.1% | 11.7% | 11.4% | 5.3% | 2.9% |
| Configuration Method | Total Cost (Yuan) | Transportation Cost (Yuan) | Carbon Cost (Yuan) | Time Window Cost (Yuan) | Charging Time (min) |
|---|---|---|---|---|---|
| Pure Fuel | 4972.86 | 2234.18 | 872.25 | 0 | 0 |
| Mixed Fleet | 4365.02 | 2257.51 | 451.41 | 241.59 | 351.92 |
| Pure Electric | 4738.52 | 2720.56 | 264.91 | 418.36 | 634.63 |
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Yin, L.; Zhu, R.; Jian, D. Research on Green Distribution Problems of Mixed Fleets Considering Multiple Charging Methods. Energies 2025, 18, 5220. https://doi.org/10.3390/en18195220
Yin L, Zhu R, Jian D. Research on Green Distribution Problems of Mixed Fleets Considering Multiple Charging Methods. Energies. 2025; 18(19):5220. https://doi.org/10.3390/en18195220
Chicago/Turabian StyleYin, Lvjiang, Ruixue Zhu, and Dandan Jian. 2025. "Research on Green Distribution Problems of Mixed Fleets Considering Multiple Charging Methods" Energies 18, no. 19: 5220. https://doi.org/10.3390/en18195220
APA StyleYin, L., Zhu, R., & Jian, D. (2025). Research on Green Distribution Problems of Mixed Fleets Considering Multiple Charging Methods. Energies, 18(19), 5220. https://doi.org/10.3390/en18195220



