A Study of Electronic Product Supply Chain Decisions Considering Quality Control and Cross-Channel Returns
Abstract
:1. Introduction
- (1)
- What are the outcomes of decisions made by supply chain members in different types of supply chains?
- (2)
- What is the influence of the decision order of supply chain members on supply chain decision and profit?
- (3)
- What is the impact of different return loss bearers on supply chain decisions and profits?
- (4)
- How do quality control effects and consumers’ perception of quality control affect supply chain decisions and profits?
- (5)
- How can the internal logic of contract coordination be explored and how can the coordination effect be verified?
2. Description and Assumptions
3. Solution and Analysis of the Models
3.1. MM Model
3.2. RM Model
3.3. MR Model
3.4. RR Model
3.5. SS Model
4. Comparison and Analysis of Models
5. Joint Contract Coordination
6. Numerical Example
- (i)
- The parameter value conforms to the actual market sales of electronic products;
- (ii)
- The parameter setting conforms to all the assumptions above;
- (iii)
- , , .
6.1. Comparison of Models
- (1)
- Compared with the other four supply chain models, the SS model is a centralized decision model, that is, all members of the supply chain make decisions together, and the goal of the decisions is to achieve the optimal overall profit of the supply chain. The total profit of the supply chain is positively correlated with the level of quality control and negatively correlated with the retail price. Therefore, the SS model has the highest level of quality control, the lowest retail price and the highest total profit of the supply chain.
- (2)
- When the manufacturer is the leader: the manufacturer gives priority to the decision of the wholesale price and quality control level. In the MM model, considering the input cost of quality control, the manufacturer is more inclined to adjust the wholesale price to transfer its return losses. Therefore, the quality control level, retail price and profit in the RM model are the same as those in the MM model, and the wholesale price of the MM model is higher than that of the RM model.
- (3)
- When the retailer is the leader: in the RR model, the retailer can only compensate for the loss of profit caused by the return by increasing the retail price; in the MR model, the manufacturer will improve the quality control level, reduce the rate of defective products, and then reduce the return loss. Therefore, compared with the RR model, the quality control level in the MR model is higher and the retail price is lower. This will cause the total profit of the MR model to be higher than the total profit of the RR model.
- (4)
- When the manufacturer bears the loss: under the premise of considering the input cost, the manufacturer will appropriately improve the quality control level and adjust the wholesale price to reduce the return loss. However, in the MR model, in order to obtain greater market demand, the retailer will indirectly guide the manufacturer to improve the quality control level of products through decisions, while reducing retail prices. Therefore, compared with the MM model, the MR model has a higher level of quality control, a lower retail price and a greater total profit of the supply chain.
- (5)
- In the MM model and RM model, as the leader of supply chain decisions, the manufacturer obtains more profits than the retailer in the decision game. In the MR model and the RR model, the retailer’s profit is higher than the manufacturer’s. This is because the leader can predict the follower’s decision when making priority decisions, which can make it dominant in the interest game.
6.2. Sensitivity Analysis
6.3. Verification of Contract Coordination Effect
6.4. Optimization Verification of the Solutions
7. Conclusions
- (1)
- The supply chain decision under the centralized decision model is optimal, which makes the total profit of the supply chain reach the ideal level;
- (2)
- The total profit and quality control level of the supply chain under the RM model and the MM model are the same, and the manufacturer transfers its own return loss by adjusting the wholesale price;
- (3)
- The supply chain decision under the MR model is better than the MM model and the RR model;
- (4)
- The supply chain leader’s profit is always higher than its followers;
- (5)
- The quality control level and total profit under different supply chain models are positively correlated with and . In addition, in order to solve the problem of supply chain imbalance in the decentralized decision model, this paper designs a joint contract to coordinate the cooperative relations of supply chain members. It is found that under the coordination contract, the supply chain members realize the transfer of benefits through the adjustment of the wholesale price, and the change in the wholesale price in a given interval will not affect the contract coordination effect. Finally, this paper verifies the validity of the relevant conclusions and contracts through an example analysis. The research conclusions provide a theoretical basis for supply chain decisions under different modes. Among them, contract coordination plays an important role in improving the quality of electronic products and promoting the stability of supply chains. According to the relevant research conclusions, this paper puts forward some suggestions to supply chain members and managers: supply chain members should strengthen cooperation and actively strive for decision leadership; under contract constraints, supply chain members should take the initiative to exert their negotiating advantages to obtain greater profits; and supply chain managers should pay attention to the effect of quality control and strengthen the publicity of product quality control.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Reference | Goal and Perspective | Method | Deficiency |
---|---|---|---|
[2,3] | Reduce the rate of defective products by studying how to improve quality control. | This paper puts forward the use of intelligent equipment to improve and measure the production process and improve the production efficiency. | Product quality control is not taken as the main factor of supply chain decision to study supply chain coordination. |
[16] | Consider the impact of product quality on return rates in supply chain optimization. | Based on the situation that product quality affects the return rate, this paper uses the game theory method to analyze the supply chain decision in the two models of unified pricing and autonomous pricing. | Does not consider the impact of product quality on market demand, that is, consumers have a certain degree of perception of product quality control. |
[21] | The influence of consumers’ cross-channel return behavior on supply chain decision is studied. | Based on Stackelberg game and Nash equilibrium game theory, centralized and decentralized supply chain models are analyzed. | The impact of product quality control on consumer return rate is not considered. |
[23,28] | In the study of return supply chain, the loss of consumer return to supply chain is considered. | A Stackelberg game model was established for the return of defective products. In the model, a single member of the supply chain was considered to bear the return loss. | Only a single supply chain member is considered to bear the return loss, and the impact of different return loss bearers on the supply chain is not considered. |
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Manufacturer-First Decision (Manufacturer-Led) | Retailer-First Decision (Retailer-Led) | |
---|---|---|
The manufacturer bears the loss of return | MM model | MR model |
The retailer bears the loss of return | RM model | RR model |
Symbol | Definition |
---|---|
Retail price | |
Wholesale price | |
Average salvage value of defective goods | |
Production cost | |
Quality control level | |
Cost coefficient of quality control | |
Rate of return | |
The proportion of consumers who choose to return goods offline | |
Rate of defective goods | |
Initial rate of defective goods | |
Effect of quality control | |
Consumer perception of defective goods | |
Initial market size | |
Price sensitivity coefficient | |
Sensitivity coefficient of quality control level | |
Additional return costs incurred during offline return | |
Market demand | |
Manufacturer’s profit | |
The retailer’s profit | |
Total supply chain profit |
Symbol | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Value | 100 | 20 | 10 | 0.5 | 0.1 | 0.1 | 0.9 | 1 | 100 | 0.1 | 0.5 |
Model Type | ||||||
---|---|---|---|---|---|---|
MM model | 80.3029 | 0.3137 | 60.4490 | 783.4352 | 394.1777 | 1177.6129 |
RM model | 80.3029 | 0.3137 | 59.7078 | 783.4352 | 394.1777 | 1177.6129 |
M R model | 80.1785 | 0.1357 | 40.7185 | 394.1932 | 788.3864 | 1182.5796 |
RR model | 80.2413 | 0.0990 | 39.8082 | 391.8760 | 781.6333 | 1173.5093 |
SS model | 60.3569 | 0.6313 | —— | —— | —— | 1576.7729 |
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Ren, H.; Chen, R.; Lin, Z. A Study of Electronic Product Supply Chain Decisions Considering Quality Control and Cross-Channel Returns. Sustainability 2023, 15, 12304. https://doi.org/10.3390/su151612304
Ren H, Chen R, Lin Z. A Study of Electronic Product Supply Chain Decisions Considering Quality Control and Cross-Channel Returns. Sustainability. 2023; 15(16):12304. https://doi.org/10.3390/su151612304
Chicago/Turabian StyleRen, Haiping, Rui Chen, and Zhijun Lin. 2023. "A Study of Electronic Product Supply Chain Decisions Considering Quality Control and Cross-Channel Returns" Sustainability 15, no. 16: 12304. https://doi.org/10.3390/su151612304
APA StyleRen, H., Chen, R., & Lin, Z. (2023). A Study of Electronic Product Supply Chain Decisions Considering Quality Control and Cross-Channel Returns. Sustainability, 15(16), 12304. https://doi.org/10.3390/su151612304