Remanufacturing Closed-Loop Supply Chain Contract Coordination Considering Quality Control
Abstract
:1. Introduction
- In the absence of a compulsory contract in a CLSC, will members voluntarily undertake verbally committed quality improvement actions?
- Which members of the CLSC are more likely to violate quality improvement commitments?
- Can contract coordination effectively address the quality control issues in a CLSC?
- What types of contracts can be employed for CLSC coordination to promote profit growth while ensuring quality control?
- A contract coordination strategy for remanufacturing CLSC is proposed by integrating contract coordination with quality control.
- The quality control scheme for CLSC from an all-member and whole-process perspective is investigated.
- The use of contracts to promote the rational allocation of profits among members and the profit growth of CLSC while implementing quality control are discussed.
2. Literature Review
2.1. Quality Control
2.2. Contract Coordination
2.3. System Dynamics
3. Methods
3.1. Methods and Prerequisites
- In the CLSC, both remanufactured and new products are homogeneous, and consumers have comparable levels of enthusiasm toward their purchase.
- Given the preference for reproductions, remanufacturers prioritize the production of remanufactured products over new products.
- In the model, the key players are remanufacturers, retailers, and recyclers within the CLSC. All three parties engage in strategic interactions under limited rationality.
3.2. Evolutionary Game Model
3.2.1. Relevant Explanations
- Game participant: The game participants are the relevant enterprises in the CLSC of waste electrical and electronic products, including remanufacturers, retailers, and recyclers.
- Behavior strategy of the remanufacturer: The remanufacturer has two strategy choices in the game. ① High-quality production. In addition to using recycled parts, the remanufacturer optimizes the production process during remanufacturing (investing in energy-saving research or purchasing new equipment to reduce energy consumption, emissions, and wastewater discharge). ② Low-quality production. The remanufacturer only uses recycled parts in production without making additional investments to optimize production processes. The probability of the remanufacturer choosing high-quality production and low-quality production are α and (1-α), respectively.
- Behavior strategy of the retailer: The retailer has two strategy choices in the game. ① High-quality sales. High-quality sales mainly involve increased investment in promoting sales of remanufactured products. ② Low-quality sales. The retailer does not exert much effort on product sales and does not actively promote them. The probability that retailers choose high-quality and low-quality sales is β and (1-β), respectively.
- Behavior strategy of the recycler: The recycler has two strategy choices in the game. ① High-quality recycling. Recyclers increase their investments to improve machinery quality and disassembly processes, thereby providing high-quality recycled parts to remanufacturers. ② Low-quality recycling. Instead of providing high-quality recycled parts, recyclers are less likely to make additional efforts to improve their quality. The probability that recyclers choose to provide high-quality and low-quality recycled recycling is γ and (1-γ), respectively.
3.2.2. Matrix of Payments
3.2.3. Replication Dynamic Equation
3.3. Models and Solutions
3.3.1. Basic SD Model of Remanufacturing CLSC
3.3.2. SD Model of the Quality Control Contract Scheme
3.3.3. SD Model of the Quality Control-Revenue-Sharing Contract Scheme
4. Results and Discussion
4.1. Results
4.1.1. Basic SD Model Simulation Results
4.1.2. Quality Control Contract Scheme Simulation Results
4.1.3. Quality Control–Revenue-Sharing Contract Scheme Simulation Results
4.2. Discussions
4.2.1. Comparison of Each Member’s Quality Improvement Decisions under Different Schemes
4.2.2. Comparison of the Profit of Each Member under Different Schemes
4.2.3. Managerial Implications
5. Conclusions
5.1. Concluding Remarks
- Without mandatory contractual constraints, non-compliance with quality improvement commitments occurs in the CLSC, which is strongly linked to profits. Over time, commitment breaches stemming from members’ myopic tendencies fail to enhance the members’ profits and jeopardize the enterprise’s sustainable development while further undermining its profitability.
- Compared with M remanufacturer and R retailer, T recycler is more likely to break quality improvement promises. The M remanufacturer and R retailer always maintain a high degree of consciousness in fulfilling their quality improvement commitments, while the T recycler is bound to violate their quality improvement commitments without mandatory contract program constraints.
- Contract coordination can effectively address quality control issues in CLSC. The quality control contract scheme effectively regulates the conduct of each CLSC member. Whether implemented through a single contract or a combined contract, it prevents non-compliance with quality improvement commitments, thereby promoting the sustainable production of CLSC enterprises.
- The quality control–revenue-sharing combination contract solution can solve the quality control problem and promote the CLSC profit improvement. Under the coordinated contract scheme, the overall CLSC profit is effectively improved, and the sustainability of enterprise production is greatly enhanced. From the profit perspective, the profit coordination function of the combined contract scheme is better.
5.2. Limitations and Future Research Directions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Parameters | Descriptions | Parameters | Descriptions |
---|---|---|---|
Wholesale price of remanufactured products | Coefficient of government subsidy to the sale of remanufactured products | ||
Quantity of remanufactured products shipped | T recovers the unit price | ||
R actively promotes M’s corporate image | T Quantity of recovery | ||
Cost of new components for remanufacturing production | T Additional inputs for high-quality recycling | ||
Cost of recycled parts for remanufacturing production | T Fixed expenditure | ||
Quality inspection cost | Coefficient of government subsidy for recycling of remanufactured goods | ||
M Additional inputs for high-quality production | M low-quality production affects the penalty on R sales | ||
M Fixed expenditure | M’s subsidy for R’s high-quality sales | ||
Coefficient of government subsidy for the manufacture of remanufactured goods | T low-quality recycling affects the penalty when M produces | ||
R Unit price of sales | M and R’s support for T’s high-quality recycling | ||
R Sales quantity | MR Revenue sharing | ||
R actively promotes additional inputs | RT Revenue sharing | ||
R Potential losses from negative sales | MR Revenue sharing coordinates the unit price difference | ||
R Fixed expenditure | RT Revenue sharing coordinates the unit price difference |
Retailer (R) | Recycler (T) | |
---|---|---|
High-Quality Recycling (γ) | Low-Quality Recycling (1-γ) | |
High-quality sales (β) | ||
Low-quality sales (1-β) | ||
Retailer (R) | Recycler (T) | |
---|---|---|
High-Quality Recycling (γ) | Low-Quality Recycling (1-γ) | |
High-quality sales (β) | ||
Low-quality sales (1-β) | ||
Variable | Values | Variable | Values |
---|---|---|---|
Remanufactured product demand smoothing time | 3 (days) | R Basic sales coefficient | 0.3 |
R Order smoothing time | 3 (days) | T Basic recovery coefficient | 0.5 |
T Recovery supply rate smoothing time | 0.5 (days) | Recycled parts value coefficient | 0.1 |
M Delivery delay | 2 (days) | Quality inspection cost coefficient | 0.05 |
M New product production delay | 0.3 (days) | New part value coefficient | 0.18 |
Recycled parts supply delay | 1 (days) | Wholesale unit price | 100 (CNY) |
T Recovery delay | 0.2 (days) | Sale unit price | 130 (CNY) |
Average life of the product | 60 (months) | Recycle unit price | 13 (CNY) |
Variable | Values | Variable | Values |
---|---|---|---|
C | 0.15 | MR Revenue sharing coordinates unit price difference | 10 |
D | 0.45 | RT Revenue sharing coordinates unit price difference | 6.5 |
Time | Basic SD Model | Quality Control Contract Scheme | Quality Control–Revenue-Sharing Contract Scheme |
---|---|---|---|
1 | 78,680 | 92,722 | 94,625 |
5 | 194,895 | 296,195 | 329,959 |
10 | 665,728 | 895,453 | 979,242 |
15 | 1,286,000 | 1,598,000 | 1,709,000 |
20 | 1,933,000 | 2,300,000 | 2,433,000 |
25 | 2,593,000 | 3,002,000 | 3,161,000 |
Basic SD Model | Quality Control Contract Scheme | Quality Control–Revenue-Sharing Contract Scheme | |
---|---|---|---|
M remanufacturer | 1,988,000 | 1,925,000 | 2,014,000 |
R retailer | 575,703 | 872,067 | 969,089 |
T recycler | 28,402 | 205,361 | 177,908 |
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Duan, W.; Liu, M.; Xu, D.; Han, L. Remanufacturing Closed-Loop Supply Chain Contract Coordination Considering Quality Control. Systems 2024, 12, 350. https://doi.org/10.3390/systems12090350
Duan W, Liu M, Xu D, Han L. Remanufacturing Closed-Loop Supply Chain Contract Coordination Considering Quality Control. Systems. 2024; 12(9):350. https://doi.org/10.3390/systems12090350
Chicago/Turabian StyleDuan, Wei, Mingli Liu, Desheng Xu, and Liping Han. 2024. "Remanufacturing Closed-Loop Supply Chain Contract Coordination Considering Quality Control" Systems 12, no. 9: 350. https://doi.org/10.3390/systems12090350