Irrational Carbon Emission Transfers in Supply Chains under Environmental Regulation: Identification and Optimization
Abstract
:1. Introduction
2. Problem Description and Assumptions
2.1. Problem Description
- (1)
- Scenario 1 is the rational transfer of supply chain carbon emissions. The transfer increases the profits of the manufacturer, supplier, and the entire supply chain.
- (2)
- Scenario 2 is the irrational transfer of supply chain carbon emissions. The profits of the manufacturer and the entire supply chain increase, but that of the supplier decreases after the transfer.
- (3)
- Scenario 3 also represents the irrational transfer of supply chain carbon emissions. Only the manufacturer’s profit increases, whereas those of the other two entities decrease.
2.2. Assumptions of the Model
- (1)
- Both the supplier and the manufacturer are rational decision-makers of risk neutrality, the information is completely symmetrical, and the manufacturer consumes one unit of raw material provided by the supplier for each unit of production.
- (2)
- Consumers prefer low-carbon products and suppliers can reduce emissions at a positive rate to promote the prices of low-carbon products [54,55,56]. In addition, the transfers of carbon emissions from suppliers to manufacturers is reflected in the reduction in carbon emissions per unit of the supplier’s product. Therefore, the market price of a low-carbon product is set to , where is the retail price when no factors are taken into account, represents the price of the demand-sensitive factor, and represents the intensity of the consumers’ low-carbon awareness. Qi, Wang and Bai, and Panda et al. have formulated similar hypotheses [57,58].
- (3)
- The supplier and manufacturer’s unit production costs are expressed as and , respectively. To ensure that the supply chain is profitable, .
- (4)
- According to Zhang, Wang and You, Zhou and Ye, and Yu et al., suppliers need to invest in the research and development (R&D) of emission reduction technologies [59,60,61]. Our study assumed that the R&D costs are , where indicates the investment level coefficient for emission reduction. The difficulty of reducing emissions increases with the number of emissions to be reduced. The required input increases sharply.
- (5)
- It is assumed that the processing cost after the supplier undertakes the carbon emission transfer is , where represents the cost coefficient after the supplier undertakes the carbon emission transfer, which mainly reflects the cost invested by suppliers to offset the transfer of carbon emissions from manufacturers. For example, companies such as Apple and Dell have transferred part of their carbon emissions to their suppliers in the process of manufacturing outsourcing. Suppliers need to use manpower, material resources, emission reduction technology, and other means to offset and deal with these carbon emissions. Therefore, suppliers need to invest funds to undertake the transfer of carbon emissions.
3. Identification of Irrational Transfers
3.1. Ignoring Carbon Emission Transfers
3.2. Acknowledging Carbon Emission Transfers
3.3. Identification Interval of Irrational Transfers
4. Optimization of Irrational Transfers
4.1. Interval Optimization of Irrational Transfers
4.2. Point Optimization of Irrational Transfers
5. Numerical Analysis
5.1. Interval Identification of Irrational Transfers
5.2. Influence Variables Analysis of Irrational Transfer Intervals
5.3. Optimization of Irrational Transfers
6. Main Conclusions and Practical Implications
6.1. Main Conclusions
6.2. Practical Implications
6.3. Research Limitations and Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
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Scenario | Manufacturer | Supplier | Supply Chain | Identification |
---|---|---|---|---|
1 | + | + | + | Rational carbon emission transfers |
2 | + | - | + | Irrational but controllable carbon emission transfers |
3 | + | - | - | Irrational and uncontrollable carbon emission transfers |
Notations. | Description |
---|---|
Market price per unit product | |
Supplier’s unit wholesale price | |
Product order quantity | |
Manufacturer’s unit production cost | |
Supplier’s unit production cost | |
Manufacturer’s initial emissions per unit | |
Supplier’s initial emissions per unit | |
Manufacturer’s total emissions allocated by the government | |
Supplier’s total emissions allocated by the government | |
Manufacturer’s transfer per unit product | |
Supplier’s capacity coefficient for receiving transfers | |
Supplier’s investment level coefficient for receiving transfers | |
Supplier’s emission reduction per unit product | |
Supplier’s investment level coefficient for emission reduction | |
Unit carbon trading price | |
Manufacturer’s profit | |
Supplier’s profit | |
Supply chain’s overall profit |
0.25 | 0.82 | 67.47 | 60.90 | 128.37 | 0.75 | 63.28 | 57.72 | 121.00 |
0.5 | 0.65 | 68.70 | 59.67 | 128.37 | 0.70 | 63.51 | 57.49 | 121.00 |
0.75 | 0.47 | 70.01 | 58.36 | 128.37 | 0.65 | 63.74 | 57.26 | 121.00 |
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Sun, L.; Fang, S. Irrational Carbon Emission Transfers in Supply Chains under Environmental Regulation: Identification and Optimization. Sustainability 2022, 14, 1099. https://doi.org/10.3390/su14031099
Sun L, Fang S. Irrational Carbon Emission Transfers in Supply Chains under Environmental Regulation: Identification and Optimization. Sustainability. 2022; 14(3):1099. https://doi.org/10.3390/su14031099
Chicago/Turabian StyleSun, Licheng, and Sui Fang. 2022. "Irrational Carbon Emission Transfers in Supply Chains under Environmental Regulation: Identification and Optimization" Sustainability 14, no. 3: 1099. https://doi.org/10.3390/su14031099
APA StyleSun, L., & Fang, S. (2022). Irrational Carbon Emission Transfers in Supply Chains under Environmental Regulation: Identification and Optimization. Sustainability, 14(3), 1099. https://doi.org/10.3390/su14031099