Inventory Strategies for Warranty Replacements of Electric Vehicle Batteries Considering Symmetric Demand Statistics
Abstract
:1. Introduction
2. Methods
2.1. Aggregate Warranty Replacement Demand Forecasting
2.1.1. Battery Capacity Degradation Function
2.1.2. Aggregate Warranty Replacement Demand
- Sub-Interval I: .
- Sub-Interval III: .
- Sub-Interval I: .
- Sub-Interval III: .
2.2. Battery Inventory Strategies for Warranty Service
- Lead time is assumed to be zero.
- Shortages are allowed, with an associated penalty applied.
- The replenishment rate is considered infinite, resulting in instantaneous replenishment.
- The initial inventory level is set to zero.
Scripts | |
---|---|
k | Superscript denotes two inventory models |
i | Subscript denotes three time phases |
j | Subscript denotes time intervals of each phase |
Decision Variables | |
Total orders for Model k in phase i | |
Order points of Model k in phase i, time interval j | |
Shortage points for Model k in phase i, time interval j | |
Order quantity of Model k in phase i, time interval j | |
Parameters | |
Time horizon of phase i | |
K | Fixed cost of replenishment per order |
h | Inventory holding cost per unit per unit time |
s | Shortage cost per unit per unit time |
Demand rate at time t for Model B, , | |
Demand at time t in phase i, time interval j | |
Total inventory cost of Model k in phase i |
2.2.1. Service-Level Symmetry Model (SLSM)
2.2.2. Cost-Efficiency Symmetry Model (CESM)
- (i)
- For a fixed value of , determine the optimal order points and shortage points recursively.
- (ii)
- Find the optimal total orders , which minimizes total costs over .
3. Results
3.1. Validation of Degradation Function and AWRD Forecasting Model
3.2. Inventory Strategies
3.3. Sensitivity Analysis
4. Discussion
4.1. Concluding Remarks
- (i)
- To mathematically characterize the degradation trends of EV batteries, we employ a function capable of accurately capturing the inherent non-linear characteristics of battery degradation, such as decreasing decay rates over time. Additionally, the function demonstrates flexibility in fitting diverse degradation patterns, reflecting its adaptability and broad generalizability in modeling various degradation processes. The function’s practical utility was rigorously validated using actual battery degradation data from leading manufacturers, ensuring its relevance and reliability in real-world applications.
- (ii)
- Given the predetermined threshold of battery performance, which corresponds to the performance guarantee specified in the warranty policy provided by EV manufacturers to consumers, we establish a framework to determine individual EV battery replacement cycles by integrating this performance guarantee with our battery capacity degradation function. Subsequently, by incorporating stochastic sales processes into our analytical model, we derive both the mean and variance of AWRD at any given time point. This theoretical framework provides a robust foundation for optimizing operational activities at service centers, particularly in terms of inventory management and resource allocation.
- (iii)
- Based on distinct assumptions regarding service levels and ordering intervals, we develop two inventory models that are specifically adapted to our demand forecasting framework through normal approximation and demand rate computation. The comparative analysis demonstrates that the CESM achieves superior cost performance, reducing the total cost by 20.3% while maintaining operational stability. Furthermore, incorporating CESM-derived strategies into the SLSM yields a hybrid solution that preserves service-level guarantees and achieves a 3.9% cost reduction. This optimization approach provides valuable insights for inventory management system design and operational decision-making.
4.2. Limitations and Future Work
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Simulation Algorithm for Forecasting AWRD
Algorithm A1 Simulation Algorithm for Forecasting AWRD |
Input: W, L, , , t, Output: Mean and variance of AWRD: ,
|
Appendix B. Optimal Ordering Policies
Order No. | Phase 1 | Phase 2 | Phase 3 | |||
---|---|---|---|---|---|---|
1 | 0.000 | 373 | 2.000 | 5785 | 4.000 | 8202 |
2 | 0.182 | 1097 | 2.133 | 5780 | 4.200 | 7342 |
3 | 0.364 | 1816 | 2.267 | 5776 | 4.400 | 6480 |
4 | 0.546 | 2533 | 2.400 | 5773 | 4.600 | 5618 |
5 | 0.727 | 3250 | 2.533 | 5770 | 4.800 | 4755 |
6 | 0.909 | 3965 | 2.667 | 5768 | 5.000 | 3892 |
7 | 1.091 | 4680 | 2.800 | 5766 | 5.200 | 3028 |
8 | 1.273 | 5394 | 2.933 | 5764 | 5.400 | 2164 |
9 | 1.455 | 6109 | 3.067 | 5762 | 5.600 | 1299 |
10 | 1.636 | 6822 | 3.200 | 5761 | 5.800 | 433 |
11 | 1.818 | 7536 | 3.333 | 5759 | 6.000 | – |
12 | 2.000 | – | 3.467 | 5758 | ||
13 | 3.600 | 5757 | ||||
14 | 3.733 | 5756 | ||||
15 | 3.867 | 5755 | ||||
16 | 4.000 | – | ||||
m* | 11 | 15 | 10 | |||
TC* | 4434.03 | 6136.52 | 4271.40 |
Order No. | Phase 1 | Phase 2 | Phase 3 | |||
---|---|---|---|---|---|---|
1 | 0.269 | 1935 | 2.043 | 4615 | 4.045 | 4803 |
2 | 0.596 | 2756 | 2.194 | 4615 | 4.211 | 4594 |
3 | 0.857 | 3278 | 2.344 | 4615 | 4.384 | 4363 |
4 | 1.085 | 3676 | 2.495 | 4615 | 4.568 | 4105 |
5 | 1.292 | 4005 | 2.645 | 4615 | 4.764 | 3808 |
6 | 1.484 | 4287 | 2.796 | 4615 | 4.979 | 3456 |
7 | 1.665 | 4537 | 2.946 | 4615 | 5.220 | 3011 |
8 | 1.836 | 4760 | 3.097 | 4615 | 5.510 | 2363 |
9 | 2.000 | – | 3.247 | 4615 | 6.000 | – |
10 | 3.398 | 4615 | ||||
11 | 3.548 | 4615 | ||||
12 | 3.699 | 4615 | ||||
13 | 3.849 | 4615 | ||||
14 | 4.000 | – | ||||
m* | 8 | 13 | 8 | |||
TC* | 3387.40 | 5091.98 | 3348.88 |
Order No. | Phase 1 | Phase 2 | Phase 3 | |||
---|---|---|---|---|---|---|
1 | 0.269 | 3110 | 2.043 | 6549 | 4.045 | 6680 |
2 | 0.596 | 4147 | 2.194 | 6500 | 4.211 | 6379 |
3 | 0.857 | 4829 | 2.344 | 6539 | 4.384 | 6044 |
4 | 1.085 | 5358 | 2.495 | 6492 | 4.568 | 5669 |
5 | 1.292 | 5798 | 2.645 | 6532 | 4.764 | 5227 |
6 | 1.484 | 6195 | 2.796 | 6486 | 4.979 | 4697 |
7 | 1.665 | 6502 | 2.946 | 6527 | 5.220 | 3988 |
8 | 1.836 | 6829 | 3.097 | 6482 | 5.510 | 2595 |
9 | 2.000 | – | 3.247 | 6524 | 6.000 | – |
10 | 3.398 | 6479 | ||||
11 | 3.548 | 6521 | ||||
12 | 3.699 | 6476 | ||||
13 | 3.849 | 6518 | ||||
14 | 4.000 | – | ||||
m* | 8 | 13 | 8 | |||
TC* | 4193.51 | 6118.02 | 3955.26 |
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References | Focus Area | Method | Demand Forecasting | Performance- Based Warranties | Customized Inventory Strategy |
---|---|---|---|---|---|
Shokouhyar et al. [16] | 3C products | Random Forrest algorithm | ✓ | ||
Luo and Wu [19] | 3C products | stochastic process and integrated cost model | ✓ | ✓ | |
Wang et al. [33] | spare parts | stochastic process and inventory control | ✓ | ✓ | |
Panagiotidou [29] | spare parts | inventory control | ✓ | ✓ | |
Xie et al. [34] | spare parts | stochastic process and inventory control | ✓ | ✓ | |
this work | EV battery | stochastic process and inventory control and Monte Carlo simulation | ✓ | ✓ | ✓ |
Model | SLSM | CESM |
---|---|---|
Target | Ensure a promised service level | Maximum the cost savings |
Premise | Employ equal-interval ordering, and ensure a low shortage probability of 0.01 | Allow different order intervals, and optimize the reorder points and shortage points simultaneously |
Demand | Generate from simulation | Calculate three-phase linear demand rates from |
Objective function | Equation (40) | Equation (42) |
Technical Process | Normal approximation of AWRD Simulation Search | Mathematical derivations Simulation Search , , |
Data Source | a | b | c | R2 | RMSE |
---|---|---|---|---|---|
Tesla | −0.2359 | 0.3711 | 1.0104 | 0.9892 | 0.0030 |
M1 | −1.0347 | 1.1656 | 1.0164 | 0.9928 | 0.0040 |
M2 | −1.2296 | 1.1446 | 1.0185 | 0.9964 | 0.0034 |
M3 | −1.2144 | 1.0299 | 1.0208 | 0.9950 | 0.0048 |
Parameter | Value (Scaled) | Source |
---|---|---|
Assumption | ||
L | 16 (4) | |
61,308 (15,327) | Xie et al. (2023) [34] (unit of time is converted from week to year) | |
K | ||
h | ||
s | ||
G | 0.8 | Official warranty policies from major EV makers like BYD and Tesla |
W | 8 (2) |
Total Orders | Optimal Cost | Performance % | |
---|---|---|---|
Phase 1 | |||
SLSM | 11 | 4434.03 | – |
CESM | 8 | 3387.4 | −23.60% |
Optimized SLSM | 8 | 4193.51 | −5.42% |
Phase 2 | |||
SLSM | 15 | 6136.52 | – |
CESM | 13 | 5091.98 | −17.02% |
Optimized SLSM | 13 | 6118.02 | −0.30% |
Phase 3 | |||
SLSM | 10 | 4271.4 | – |
CESM | 8 | 3348.88 | −21.60% |
Optimized SLSM | 8 | 3955.26 | −7.40% |
Total | |||
SLSM | 36 | 14,841.95 | – |
CESM | 29 | 11,828.26 | −20.31% |
Optimized SLSM | 29 | 14,266.79 | −3.88% |
Data Source | Degradation Function | Phase 1 | Phase 2 | Phase 3 | |||
---|---|---|---|---|---|---|---|
m* | TC* | m* | TC* | m* | TC* | ||
Tesla | 8 | 3388.65 | 13 | 5091.87 | 8 | 3348.88 | |
M1 | 11 | 4590.47 | 17 | 6888.48 | 11 | 4545.06 | |
M2 | 12 | 4991.49 | 19 | 7490.75 | 12 | 4944.52 | |
M3 | 13 | 5385.99 | 20 | 8138.29 | 13 | 5376.82 |
Parameter | Value | Phase 1 | Phase 2 | Phase 3 | |||
---|---|---|---|---|---|---|---|
m* | TC* | m* | TC* | m* | TC* | ||
G | 0.75 | 6 | 2529.37 | 9 | 5414.48 | 6 | 3224.00 |
0.80 | 8 | 3387.40 | 13 | 5091.98 | 8 | 3348.88 | |
0.85 | 12 | 4896.78 | 18 | 7350.33 | 12 | 4851.53 | |
W | 1.0 | 3 | 1162.24 | 16 | 6630.58 | 3 | 1146.27 |
1.5 | 5 | 2182.80 | 14 | 5515.75 | 5 | 2151.42 | |
2.0 | 8 | 3387.40 | 13 | 5091.98 | 8 | 3348.88 | |
5000 | 5 | 1914.62 | 7 | 2890.30 | 5 | 1890.36 | |
10,000 | 7 | 2727.34 | 10 | 4100.60 | 7 | 2696.07 | |
15,327 | 8 | 3387.40 | 13 | 5091.98 | 8 | 3348.88 |
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Feng, M.; Xie, W.; Wang, X. Inventory Strategies for Warranty Replacements of Electric Vehicle Batteries Considering Symmetric Demand Statistics. Symmetry 2025, 17, 928. https://doi.org/10.3390/sym17060928
Feng M, Xie W, Wang X. Inventory Strategies for Warranty Replacements of Electric Vehicle Batteries Considering Symmetric Demand Statistics. Symmetry. 2025; 17(6):928. https://doi.org/10.3390/sym17060928
Chicago/Turabian StyleFeng, Miaomiao, Wei Xie, and Xia Wang. 2025. "Inventory Strategies for Warranty Replacements of Electric Vehicle Batteries Considering Symmetric Demand Statistics" Symmetry 17, no. 6: 928. https://doi.org/10.3390/sym17060928
APA StyleFeng, M., Xie, W., & Wang, X. (2025). Inventory Strategies for Warranty Replacements of Electric Vehicle Batteries Considering Symmetric Demand Statistics. Symmetry, 17(6), 928. https://doi.org/10.3390/sym17060928