A Review on Remanufacturing Reverse Logistics Network Design and Model Optimization
Abstract
:1. Introduction
2. Literature Review
Author | Year | NS | RL | MM | CLSC | R | PC | Main Focus |
---|---|---|---|---|---|---|---|---|
Pokharel and Mutha [8] | 2009 | √ | √ | 164 | The present situation of reverse logistics research and practice is discussed | |||
Govindan et al. [9] | 2015 | √ | √ | √ | 382 | Research status of reverse logistics and closed loop supply chain | ||
Agrawal et al. [19] | 2015 | √ | √ | √ | 242 | RL networks and disposal decisions for forecasting product returns, outsourcing, secondary market perspective | ||
Bazan et al. [20] | 2016 | √ | √ | - | Literature on modelling reverse logistics inventory systems based on economic order/production quantity (EOQ/EPQ) and joint economic batch | |||
Govindan and Soleimani [12] | 2017 | √ | √ | 83 | Literature on reverse logistics and closed loop supply chain in cleaner production | |||
Kazemi et al. [13] | 2018 | √ | √ | 94 | Literature on reverse logistics and closed loop supply chain IJPR (International Journal of Production Research) | |||
Braz et al. [22] | 2018 | √ | 56 | Bullwhip effect in a closed loop supply chain | ||||
Islam and Huda [14] | 2018 | √ | √ | 157 | Waste electrical and electronic equipment/electronic waste reverse logistics and closed loop supply chain | |||
Tombido et al. [23] | 2018 | √ | 134 | 3PL benefits in reverse logistics | ||||
Pushpamali et al. [16] | 2019 | √ | 54 | The research status of reverse logistics in construction industry is evaluated | ||||
Mahmoudi et al. [17] | 2019 | √ | 70 | The current study systematically investigates global research on EOL photovoltaic modules to identify gaps for further exploration. | ||||
Prajapati et al. [10] | 2019 | √ | 449 | According to the structure dimension and content of the paper, the paper is evaluated and classified in detail | ||||
Rachih et al. [11] | 2019 | √ | 120 | This paper reviews the previous papers on reverse logistics and classifies them according to the meta-heuristic method and the background of reverse supply chain | ||||
Doan et al. [15] | 2019 | √ | √ | - | Research on e-waste resource sharing is divided into four categories, namely implementation factor performance assessment and decision forest product return and network design | |||
Karagoz et al. [18] | 2019 | √ | √ | - | End-of-life vehicle management | |||
Van et al. [21] | 2020 | √ | √ | √ | √ | 207 | Strategic network design using mathematical optimization models in waste reverse supply chains | |
our work | 2020 | √ | √ | √ | √ | √ | 125 | Network Design and Optimization of remanufacturing reverse logistics |
3. Methodology
3.1. Material Collection
- (1)
- The network mathematical model or the network structure diagram should be contained in the papers;
- (2)
- The location of remanufacturing facilities is considered in the design and optimization of the network model;
- (3)
- Remanufacturing is the main treatment method for the waste products.
3.2. Descriptive Analysis
3.3. Category Selection
4. Network Structure
4.1. General Network Structure
4.2. Network Structure of Closed-Loop Supply Chain
4.3. Special Network Structure
5. Model Analyses
5.1. Decision Variables
5.2. Objective Function
5.3. Constraints
5.4. Solution Method
5.5. Model Validation
6. Gaps and Research Trends Analyses
6.1. Novel Structures in Networks
6.2. Different Elements in the Model
6.3. Product Type
6.4. Research Trends
7. Conclusions
- (1)
- The research on RRL networks has been focused on closed-loop supply chain structure. Some papers adopted a hybrid facility network structure, in which enterprises can establish reverse logistics networks on the basis of existing logistics networks. This network structure provides a method for the establishment of reverse logistics network with lower cost and shorter time, which provides a good direction for researchers.
- (2)
- Among various mathematical models, the constraints of remanufacturing technology and products have been the concern of many scholars and provide a reference for model building. Considering remanufacturing techniques for different products can make the networks more specific and more applicable to real life. In addition, we found that in terms of uncertainty, factors such as the uncertainty of collecting time and collecting channel are worth studying.
- (3)
- We conducted a descriptive analysis of existing new technologies in order to bring new opinions to existing RRL networks. These new technologies will change the structure of existing networks and have impacts on mathematical models, which is worth further study.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Decision-Making Level | Common Decision Variables |
---|---|
Strategic level | Facility location |
Mode of transportation | |
Remanufacturing technology | |
Facility capacity | |
Capacity extension | |
The investment amount of the network | |
Tactical level | Inventory level |
Production volume | |
Connection between nodes | |
Recovery price of waste products | |
The sales price after remanufacturing |
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Zhang, X.; Zou, B.; Feng, Z.; Wang, Y.; Yan, W. A Review on Remanufacturing Reverse Logistics Network Design and Model Optimization. Processes 2022, 10, 84. https://doi.org/10.3390/pr10010084
Zhang X, Zou B, Feng Z, Wang Y, Yan W. A Review on Remanufacturing Reverse Logistics Network Design and Model Optimization. Processes. 2022; 10(1):84. https://doi.org/10.3390/pr10010084
Chicago/Turabian StyleZhang, Xumei, Bo Zou, Zhaohui Feng, Yan Wang, and Wei Yan. 2022. "A Review on Remanufacturing Reverse Logistics Network Design and Model Optimization" Processes 10, no. 1: 84. https://doi.org/10.3390/pr10010084
APA StyleZhang, X., Zou, B., Feng, Z., Wang, Y., & Yan, W. (2022). A Review on Remanufacturing Reverse Logistics Network Design and Model Optimization. Processes, 10(1), 84. https://doi.org/10.3390/pr10010084