Collaborative Reverse Logistics Network for Infectious Medical Waste Management during the COVID-19 Outbreak
Abstract
:1. Introduction
1.1. IMW Management
1.2. Logistics
- Build a collaborative location and routing optimization model for IMW by introducing MPCs and mobile processing facilities;
- Develop a quantitative method for the estimation of IMW generated in the stage of a pandemic;
- Consider infection risk and transportation timeliness to meet the requirements of the storage time restriction of IMW treatment (i.e., not exceed 48 h);
- Provide a case study in a real situation to obtain general managerial implications.
2. Materials and Methods
2.1. The Structure of IMW Network
- IMW originates from existing hospitals, temporary hospitals, clinics, laboratories, and residential areas.
- IMW has been collected from all generators to the largest public hospital of the district, so the network starts with the largest public hospitals from all districts.
- The processing capacity of FPC is definite. In addition, FPCs and MPCs both have partial storage capability, which is also definite.
- The processing capacity of MPC is proportional to the number of mobile processing facilities. One MPC can accommodate a definite number of mobile processing facilities.
- To improve efficiency, all IMW are transported to the storage centers with no storage in IMW generation centers.
2.2. Model Construction
- First stage: produces demand distribution of different mobile devices.
- The location of storage centers, MPCs, and FPCs;
- The demand flow speed between each center;
- The number of mobile processing facilities in each MPC.
- 2.
- Second stage: generates corresponding mobile scheme, according to demand distribution in different outbreak situations.
- The number of mobile processing facilities transferred between MPCs;
- The path of transferring mobile processing facilities.
Indices | |
c | IMW generation center |
s | IMW storage center |
i | IMW FPC |
j | IMW MPC |
t | outbreaks at different times |
Parameters | |
the amount of IMW produced by IMW generation center c in the time t | |
fixed operating cost for FPC i | |
fixed operating cost for MPC j | |
fixed operating cost for storage center s | |
unit processing cost for FPC i | |
unit processing cost for MPC j | |
unit processing cost for storage center s | |
cost of disassembly and installation for each mobile processing facility | |
procurement cost for each mobile processing facility | |
unit transportation cost using IMW transfer vehicle | |
unit transportation cost for transferring a mobile processing facility | |
distance from IMW generation center c to storage center s | |
distance from storage center s to FPC i | |
distance from storage center s to MPC j | |
distance from MPC j’ to MPC j | |
maximum capacity of storage center s | |
maximum capacity of FPC i | |
maximum capacity of each mobile processing facility | |
maximum number of mobile processing facility accommodated in each MPC j | |
risk of infection around storage centers | |
risk of infection around FPCs | |
risk of infection around MPCs | |
risk of infection during transportation | |
population exposure on the route from IMW generation center c to storage center s | |
population exposure on the route from storage center s to FPC i | |
population exposure on the route from storage center s to MPC j | |
population exposure around storage center s | |
population exposure around FPC i | |
population exposure around MPC j | |
upper limit for the storage time of IMW in the storage center | |
Decision Variables | |
0/1 variable for selection of MPC j in the time t | |
0/1 variable for selection of FPC i in the time t | |
0/1 variable for selection of storage center s in the time t | |
the number of mobile processing facilities in the MPC j in the time t | |
the number of newly acquired mobile processing facilities in MPC j in the time t | |
the number of mobile processing facilities that move from MPC j to MPC j’ at the end of the time t | |
the flow rate of IMW transferred from IMW generation center c to storage center s in the time t | |
the flow rate of IMW transferred from storage center s to FPC i in the time t | |
the flow rate of IMW transferred from storage center s to MPC j in the time t |
2.3. Model Solution
2.3.1. Amount Estimation
- The amount of basic IMW before the outbreak;
- The steep increase in the number of protective suits for health workers, COVID-19 tests, vaccination, and treatment of infected patients after the outbreak.
Parameters | |
district where IMW generation center c is located | |
total population in district d | |
total population of medical staff in district d | |
the number of confirmed cases in district d | |
average PPE’ s weight per worker | |
the weight of items for one COVID-19 test | |
the weight of basic IMW, such as masks per person, before outbreak | |
the weight of IMW produced by treating an infected patient | |
acceptance rate of PPE before outbreak | |
acceptance rate of PPE after outbreak | |
acceptance rate of COVID-19 tests before outbreak | |
acceptance rate of COVID-19 tests after outbreak | |
1 if district d breaks out the pandemic, 0 otherwise |
2.3.2. Linearization
2.3.3. Augmented ε-Constraint Method
2.4. Data Collection
2.4.1. Data on Locations
2.4.2. Data on Estimation of IMW’s Generation
2.4.3. Data on Risks
2.4.4. Data on the Rest Parameters
3. Results and Discussions
3.1. Sensitivity Analysis
3.1.1. For Outbreak Sites
3.1.2. For Capacity and Cost of Mobile Processing Facility
3.1.3. For Time Limit
- The various branches of government need to work together: The public construction department should fully consider the location and function of the processing centers in combination with the actual situation when planning. The financial department should give financial and policy support to the businesses that produce and sell small and mobile processing facilities. The supervision department should supervise the management and treatment of IMW by hospitals and processing institutions, avoiding them disregarding risks for reducing costs. The pandemic prevention and control department should flexibly adjust prevention and control policies, focusing on areas with large populations and high population density.
- The public hospitals are the source of IMW generation and bear the costs and risks in the collection and storage process. Timeliness can greatly reduce the risk of infection. The storage time limit can be set more flexibly. If the storage cost is relatively low, the storage time could be appropriately extended to reduce the total cost. If the processing cost is relatively low, the storage time could be appropriately shortened to reduce the total risk. The public hospitals can flexibly adjust the time limit according to the actual situation of the pandemic to balance the costs and risks.
- Small and mobile processing facilities can greatly respond to emergencies. IMW can be managed more efficiently. The disposal institution can develop new businesses, build MPCs with smaller unit scale and wider distribution, and purchase mobile processing facilities for decentralized processing. Since the capacity and cost of mobile processing facilities have a greater impact on the total cost of the network, disposal institutions should choose mobile processing facilities with appropriate capacity according to their own business conditions and pandemic situation. Multiple disposal institutions can also collaborate to flexibly move facilities based on actual outbreaks to improve facility utilization.
- In addition to just-in-time transportation of IMW, the third-party logistics providers can also operate the transfer business of mobile processing facilities. Some third-party logistics providers can even combine transshipment and processing operations to operate mobile IMW incinerators. In these transportation links, the choice of the route is the key to saving costs, and the third-party logistics provider should choose the globally optimal route.
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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No. | Generation Center | Population | Population Density (People/km2) | Medical Staff (People) |
---|---|---|---|---|
1 | Wanzhou | 165 | 477.8 | 11,429 |
2 | Qianjiang | 49 | 205 | 3359 |
3 | Fuling | 117 | 397.8 | 8104 |
4 | Yuzhong | 66 | 28,695.7 | 4572 |
5 | Jiangbei | 90 | 4306.2 | 6234 |
6 | Shapingba | 117 | 2954.5 | 8104 |
7 | Jiulongpo | 123 | 2853.8 | 8520 |
8 | Nanan | 91 | 3475.2 | 6303 |
9 | Beibei | 82 | 1091.9 | 5680 |
10 | Yubei | 168 | 1153.1 | 11,637 |
11 | Banan | 109 | 597.9 | 7550 |
12 | Changshou | 87 | 612.2 | 6026 |
13 | Jiangjing | 141 | 438.4 | 9767 |
14 | Hechuan | 141 | 601.8 | 9767 |
15 | Yongchuan | 116 | 734.6 | 8035 |
16 | Nanchuan | 60 | 231.7 | 4156 |
17 | Qijiang | 110 | 400.4 | 7619 |
18 | Dazu | 79 | 550.9 | 5472 |
19 | Bishan | 76 | 830.6 | 5264 |
20 | TongLiang | 73 | 544.4 | 5057 |
21 | Tongnan | 72 | 454.3 | 4987 |
22 | Rongchang | 72 | 668.5 | 4987 |
23 | Kaizhou | 118 | 297.7 | 8174 |
24 | Liangping | 66 | 349.6 | 4572 |
25 | Wulong | 35 | 121 | 2424 |
26 | Chengkou | 18 | 54.7 | 1247 |
27 | Fengdu | 59 | 203.5 | 4087 |
28 | Dianjiang | 71 | 468 | 4918 |
29 | Zhong | 75 | 342.9 | 5195 |
30 | Yunyang | 94 | 258.5 | 6511 |
31 | Fengjie | 74 | 180.6 | 5126 |
32 | Wushan | 45 | 152.3 | 3117 |
33 | Wuxi | 38 | 94.6 | 2632 |
34 | Shizhu | 38 | 126.1 | 2632 |
35 | XiuShan | 49 | 199.8 | 3394 |
36 | YouYang | 55 | 106.4 | 3810 |
37 | Pengshui | 49 | 125.7 | 3394 |
38 | Liangjiang | 270 | 2250.0 | 18,702 |
39 | High-tech | 13 | 1689.2 | 866 |
40 | Wansheng | 26 | 459.4 | 1801 |
41 | Dadukou | 36 | 3495.1 | 2494 |
Operating Cost (Yuan/d) | Processing Cost (Yuan/kg) | Transportation Cost (Yuan/km·kg) | |
---|---|---|---|
FPC | 70 | 1 | 0.35 |
MPC | 50 | 2 | |
Storage center | 20 | 0.5 |
No. | Processing Capacity (kg/d) | Storage Capacity (kg/d) |
---|---|---|
Fixed center1 | 30,000 | 5000 |
Fixed center2 | 30,000 | 5000 |
Fixed center3 | 10,000 | 5000 |
Fixed center4 | 30,000 | 5000 |
Fixed center5 | 10,000 | 5000 |
Fixed center6 | 20,000 | 5000 |
Fixed center7 | 10,000 | 5000 |
Fixed center8 | 10,000 | 5000 |
Fixed center9 | 10,000 | 5000 |
Mobile center1 | 1500 × Z1 | 2000 |
Mobile center2 | 1500 × Z2 | 2000 |
Mobile center3 | 1500 × Z3 | 2000 |
Mobile center4 | 1500 × Z4 | 2000 |
Mobile center5 | 1500 × Z5 | 2000 |
Mobile center6 | 1500 × Z6 | 2000 |
Mobile center7 | 1500 × Z7 | 2000 |
Mobile center8 | 1500 × Z8 | 2000 |
Mobile center9 | 1500 × Z9 | 2000 |
Mobile center10 | 1500 × Z10 | 2000 |
Mobile center11 | 1500 × Z11 | 2000 |
Mobile center12 | 1500 × Z12 | 2000 |
Mobile center13 | 1500 × Z13 | 2000 |
Mobile center14 | 1500 × Z14 | 2000 |
Storage center1 | 4000 | |
Storage center2 | 4000 | |
Storage center3 | 4000 | |
Storage center4 | 4000 | |
Storage center5 | 4000 | |
Storage center6 | 4000 | |
Storage center7 | 4000 | |
Storage center8 | 4000 |
No. | Generation Center | The Amount of IMW (kg/d) | ||
---|---|---|---|---|
t = 1 | t = 2 | t = 3 | ||
1 | Wanzhou | 4341.10 | 4341.10 | 37,519.92 |
2 | Qianjiang | 1276.02 | 1276.02 | 1276.02 |
3 | Fuling | 3078.24 | 3078.24 | 3078.24 |
4 | Yuzhong | 1736.44 | 1736.44 | 1736.44 |
5 | Jiangbei | 2367.87 | 2367.87 | 2367.87 |
6 | Shapingba | 3078.24 | 27,594.13 | 3078.24 |
7 | Jiulongpo | 3236.09 | 3236.09 | 3236.09 |
8 | Nanan | 2394.18 | 2394.18 | 2394.18 |
9 | Beibei | 2157.40 | 2157.40 | 2157.40 |
10 | Yubei | 4420.03 | 4420.03 | 4420.03 |
11 | Banan | 2867.76 | 2867.76 | 2867.76 |
12 | Changshou | 2288.94 | 2288.94 | 2288.94 |
13 | Jiangjing | 3709.67 | 3709.67 | 3709.67 |
14 | Hechuan | 3709.67 | 3709.67 | 3709.67 |
15 | Yongchuan | 3051.93 | 27,387.34 | 3051.93 |
16 | Nanchuan | 1578.58 | 1578.58 | 1578.58 |
17 | Qijiang | 2894.07 | 2894.07 | 2894.07 |
18 | Dazu | 2078.47 | 19,736.20 | 2078.47 |
19 | Bishan | 1999.54 | 19,115.84 | 1999.54 |
20 | TongLiang | 1920.61 | 18,495.48 | 1920.61 |
21 | Tongnan | 1894.30 | 1894.30 | 1894.30 |
22 | Rongchang | 1894.30 | 1894.30 | 1894.30 |
23 | Kaizhou | 3104.55 | 3104.55 | 27,800.91 |
24 | Liangping | 1736.44 | 1736.44 | 1736.44 |
25 | Wulong | 920.84 | 920.84 | 920.84 |
26 | Chengkou | 473.57 | 473.57 | 7122.17 |
27 | Fengdu | 1552.27 | 1552.27 | 1552.27 |
28 | Dianjiang | 1867.99 | 1867.99 | 1867.99 |
29 | Zhong | 1973.23 | 1973.23 | 1973.23 |
30 | Yunyang | 2473.11 | 2473.11 | 22,838.02 |
31 | Fengjie | 1946.92 | 1946.92 | 1946.92 |
32 | Wushan | 1183.94 | 1183.94 | 1183.94 |
33 | Wuxi | 999.77 | 999.77 | 11,257.92 |
34 | Shizhu | 999.77 | 999.77 | 999.77 |
35 | XiuShan | 1289.18 | 1289.18 | 1289.18 |
36 | YouYang | 1447.03 | 1447.03 | 1447.03 |
37 | Pengshui | 1289.18 | 1289.18 | 1289.18 |
38 | Liangjiang | 7103.62 | 7103.62 | 7103.62 |
39 | High-tech | 328.87 | 328.87 | 328.87 |
40 | Wansheng | 684.05 | 684.05 | 684.05 |
41 | Dadukou | 947.15 | 947.15 | 947.15 |
Total | 90,294.93 | 190,495.15 | 185,441.77 |
t | Outbreak Sites | Storage Centers | FPCs | MPCs (the Amount of Mobile Processing Facilities) |
---|---|---|---|---|
1 | Sites No. 0 | 1, 2, 4, 6, 7, 13, 15, 16, 19, 22, 23, 26, 28, 30, 31 | 1, 4, 7, 8, 9 | |
2 | Sites No. 6, 15, 18, 19, 20 | 1, 2, 4, 6, 7, 8, 10, 11, 13, 14, 15, 16, 19, 20, 22, 23, 26, 28, 29, 30, 31 | 1, 2, 3, 4, 5, 6, 7, 8, 9 | 1 (3), 2 (3), 4 (3), 6 (3) |
3 | Sites No. 1, 23, 26, 30, 33 | 1, 2, 4, 6, 7, 8, 10, 11, 13, 14, 15, 16, 19, 20, 22, 23, 26, 28, 29, 30, 31 | 1, 2, 3, 4, 5, 6, 7, 8, 9 | 1 (3), 2 (2), 7 (3), 8 (3) |
t | Single Objective | Multi-Objective | ||||
---|---|---|---|---|---|---|
z1min (Million Yuan) | z1max (Million Yuan) | z2min | z2max | z1 (Million Yuan) | z2 | |
1 | 7.7559 | 1.2006 | 0.14115 | 1.2174 | ||
2 | 16.476 | 22.237 | 1.1231 | 2.6882 | 16.636 | 2.2374 |
3 | 15.985 | 23.997 | 1.0041 | 2.7628 | 16.165 | 2.2496 |
If No MPC | Single Objective | Multi-Objective | ||||
---|---|---|---|---|---|---|
t | z1min (Million Yuan) | z1max (Million Yuan) | z2min | z2max | z1 (Million Yuan) | z2 |
3 | 15.943 | 21.515 | 2.1061 | 2.6217 | 16.178 | 2.4670 |
MPC | The Demand of Mobile Processing Facilities in MPC | ||||
t = 1 | The Number and Path of Transfer | t = 2 | the Number and Path of Transfer | t = 3 | |
1 | 1 | 3 | 3 | ||
2 | 1 | 3 | 1facility→7 | 2 | |
3 | 1 | 1 | 1 | ||
4 | 1 | 3 | 3facilities→8 | 0 | |
5 | 1 | 1facility→4 | 0 | 0 | |
6 | 1 | 3 | 0 | ||
7 | 1 | 1facility→2 | 0 | adding 2 facilities | 3 |
8 | 1 | 1facility→4 | 0 | 3 | |
9 | 1 | 1facility→1 | 0 | 0 | |
10 | 1 | 1facility→6 | 0 | 0 | |
11 | 1 | 1facility→6 | 0 | 0 | |
12 | 1 | 1facility→2 | 0 | 0 | |
13 | 1 | 0 | 0 | ||
14 | 1 | 1facility→1 | 1 | 1 |
Stage 2 | z3 (Thousand Yuan) | |
---|---|---|
Mobile Processing Facilities | No Mobile Processing Facilities | |
t = 1~t = 2 | 564.12 | 1920 |
t = 2~t = 3 | 502.16 | 1440 |
Total | 1066.28 | 3360 |
MCA | PRC (Million Yuan) | Sites No. 6, 15, 18, 19, 20 | z3 (Million Yuan) | New Devices | ||
---|---|---|---|---|---|---|
z1 (Million Yuan) | z2 | Distribution 1–2 | Distribution 2–3 | |||
1600 | 0.16 | 16.611 | 2.2879 | 0.6267 | 0.7018 | 2 |
1800 | 0.18 | 16.634 | 2.2422 | 0.5368 | 0.4834 | 1 |
2000 | 0.2 | 16.636 | 2.2374 | 0.4851 | 0.5483 | 2 |
2200 | 0.22 | 16.65 | 2.2085 | 0.4851 | 0.4248 | 0 |
2400 | 0.24 | 16.656 | 2.1957 | 0.4023 | 0.4248 | 0 |
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Luo, X.; Liao, W. Collaborative Reverse Logistics Network for Infectious Medical Waste Management during the COVID-19 Outbreak. Int. J. Environ. Res. Public Health 2022, 19, 9735. https://doi.org/10.3390/ijerph19159735
Luo X, Liao W. Collaborative Reverse Logistics Network for Infectious Medical Waste Management during the COVID-19 Outbreak. International Journal of Environmental Research and Public Health. 2022; 19(15):9735. https://doi.org/10.3390/ijerph19159735
Chicago/Turabian StyleLuo, Xuan, and Wenzhu Liao. 2022. "Collaborative Reverse Logistics Network for Infectious Medical Waste Management during the COVID-19 Outbreak" International Journal of Environmental Research and Public Health 19, no. 15: 9735. https://doi.org/10.3390/ijerph19159735
APA StyleLuo, X., & Liao, W. (2022). Collaborative Reverse Logistics Network for Infectious Medical Waste Management during the COVID-19 Outbreak. International Journal of Environmental Research and Public Health, 19(15), 9735. https://doi.org/10.3390/ijerph19159735