A Sustainable Production Planning Scheme for New Energy Vehicles in China
Abstract
:1. Introduction
2. Literature Review
3. Methodology
3.1. Grey Prediction Model GM (1,1)
3.1.1. Model Establishment
3.1.2. Analysis of Original Data and Prediction Results
3.2. Objective Function
3.2.1. Minimize Carbon Emissions
- (1)
- Vehicle raw material acquisition stage
- (2)
- Manufacturing and assembly stage
- (3)
- Scrap recovery stage
3.2.2. Maximize Profits
3.3. Constraints
- (1)
- Supply and demand constraints. The number of cars manufactured by enterprises should meet the market demand as much as possible. Therefore, the supply and demand constraints are as follows:
- (2)
- Capacity constraints of automobile enterprises. The maximum production capacity that vehicle enterprise k can provide is , the number of cars manufactured by any enterprise should not exceed its maximum production capacity, namely:
- (3)
- Discount restrictions on car purchases. Different automobile enterprises develop different discount strategies for customers when purchasing different models,
- (4)
- Price constraints. The upper limit of the sales price of automobiles is set as , is the cost of automobile manufacturing, and is the elasticity coefficient of the price [69].
4. Multi-Objective Optimization Model
4.1. Membership Transformation of the Objective Function
4.2. Application of Sigmoid and Anti-Sigmoid Functions
4.3. Method of Maximum and Minimum Satisfaction
4.4. Genetic Algorithm Solution
5. Scenario Design and Case Analysis
5.1. Information About Case
5.2. Analysis of the Results of the Case
5.3. Sensitivity Analysis
- (1)
- Changes in the discount rate
- (2)
- Body lightweight
6. Conclusions and Policy Implications
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
Appendix A
Appendix A.1. The Steps of Grey Model GM (1,1) Are as Follows
- (1)
- Accumulate the original data to obtain a new data sequence:
- (2)
- The first order linear differential equation of is established based on year t:
- (3)
- Generate B and constant vector Y by averaging the accumulated data, that is:
- (4)
- Solving grey parameter by the least square method
- (5)
- Substitute the grey parameter into (1.4) and solve.
- (6)
- Discrete the function expressions and , and make a difference between them to restore the original sequence of . The approximate data sequence is as follows:
Appendix A.2. Model Inspection and Precision Analysis
- (1)
- Calculate the residual and relative error between and ,
- (2)
- Calculate the mean and variance S1 of the original data
- (3)
- Calculate the average value of and the variance S2 of the residual.
- (4)
- Calculate variance ratio C
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Indices | Description | Variables Related to Carbon Emissions | |
---|---|---|---|
j | Vehicle type, j ∈ {1,2, …, n1} | u | The items of parts and components |
k | Auto companies, k ∈ {1,2, …, g} | The quality of the i raw material of vehicle j | |
Variables related to enterprise profits | αnn | The processing utilization rate of the n material | |
xjk | The number of vehicles of type j produced by enterprise k | The conversion rate of the preparation process of the i material | |
Rmax | Maximum carbon emissions of NEVs at the peak of carbon (annual/100 million tons) | The quantity of raw material f required for part u | |
Pjk | The price of vehicle of type j sold by enterprise k | The CO2 emission of the f unit mass raw material during acquisition | |
Cjk | The cost of a vehicle of type j sold by enterprise k | Matrix of the mass of the n part required by component u | |
Discount rate provided by enterprise k for consumer i who j-type vehicles(0 < < 1) | The CO2 emission of the n part during the manufacturing | ||
rijk | If rijk = 1, enterprise k offers discounts; if rijk = 0, enterprise k does not offer discounts | Quality of vehicle materials consumed in the manufacturing process of parts processing | |
λjk | If λjk = 1, enterprise k produces vehicles of type j; If λjk = 0, enterprise k does not produce vehicles of type j | The quality of the i component of the vehicle | |
dj | The demand for vehicles of type j | The CO2 emission intensity of the i component in the manufacturing process | |
The environmental pollution expenditure of enterprise k | H | Recovered parts and components | |
The penalty price of CO2 (kg/yuan) | Ab | The matrix of materials in the scrap recycling process | |
The CO2 emissions of vehicles in the manufacturing stage (kg) | Wb1 | The matrix of CO2 emissions per unit mass of recovered materials | |
q* | Price elasticity coefficient | Wb2 | The matrix of CO2 emission reduction per unit mass |
Name of Material | The Emission Factor of CO2 (kg·t−1) | Name of Material | The Emission Factor of CO2 (kg·t−1) |
---|---|---|---|
Steel | 8.2 | copper | 18.382 |
Cast iron | 0.942 | Glass | 1.471 |
Wrought aluminum | 19.436 | rubber | 2.908 |
Cast aluminum | 20.588 | plastic | 2.427 |
Related Parameters | Numerical Value |
---|---|
Vehicle mileage in one year (km) | 15,000.00 |
Carbon emissions of NEVs in vehicle cycle (100 million tons/year) | 0.165 |
The penalty price for CO2 emission (tons/yuan) | 50.00 |
The rate of discount on sales (%) | 88.00 |
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Xiao, L.; Yang, F.; Yang, Y.; Chen, C.; Ha, W. A Sustainable Production Planning Scheme for New Energy Vehicles in China. Sustainability 2024, 16, 8543. https://doi.org/10.3390/su16198543
Xiao L, Yang F, Yang Y, Chen C, Ha W. A Sustainable Production Planning Scheme for New Energy Vehicles in China. Sustainability. 2024; 16(19):8543. https://doi.org/10.3390/su16198543
Chicago/Turabian StyleXiao, Lu, Feiyue Yang, Yong Yang, Che Chen, and Wuer Ha. 2024. "A Sustainable Production Planning Scheme for New Energy Vehicles in China" Sustainability 16, no. 19: 8543. https://doi.org/10.3390/su16198543
APA StyleXiao, L., Yang, F., Yang, Y., Chen, C., & Ha, W. (2024). A Sustainable Production Planning Scheme for New Energy Vehicles in China. Sustainability, 16(19), 8543. https://doi.org/10.3390/su16198543