A Multi-Objective Optimization Model for Multi-Facility Decisions of Infectious Waste Transshipment and Disposal
Abstract
:1. Introduction
- This research proposes a mathematical model to alleviate the high cost of infectious waste disposal which sometimes leads to illegal infectious waste dumping. The model encompasses multiple objectives of a multi-facility decision making problem in which these objectives are based on the three pillars of sustainability for infectious waste disposal.
- The model includes options to consolidate the infectious wastes at transshipment facilities prior to transporting them to the disposal facilities to save the transportation cost. However, the cost of establishing and operating these transshipment facilities must be considered as well. Hence, if the solution reveals that the transshipment facilities should be established, then it implies that their existence can lower the overall costs.
- The model that integrates multiple objectives covering all sustainability pillars, and multi-facility decision making of infectious waste disposal facilities with transshipment options, to our knowledge, has not be proposed elsewhere.
- Moreover, the solution of the numerical application suggests that improvement of the economic objective is possible through management. Specifically, the daily waste collection is compared with a prolonged collection interval of every other day. The results reveal that the every-other-day collection can further save the overall costs.
2. Mathematical Model
2.1. Problem Description
2.2. Problem Formulation
2.3. Lexicographic Weighted Tchebycheff Reformulation
3. Numerical Application
3.1. Input Information
3.2. Solution
4. Sensitivity Analysis
4.1. Prolonged Collection Interval
4.2. Increase of Infectious Waste Quantify
4.3. Increase in Fuel Price
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
Indices: | |
i | index of hospitals in , i = 1, 2, …, I |
j, j′ | index of transshipment location candidates in , j and j′ = 1, 2, …, J |
k | index of disposal location candidates in , k = 1, 2, …, K |
m | index of transshipment facility capacities in M, m = 1, 2, …, M |
n | index of incinerator capacities in N, n = 1, 2, …, N |
o | index of objective functions in O, o = 1, 2, …, O |
Parameters: | |
Area affected by incinerator capacity n, (square kilometer) | |
transportation cost from hospital i to transshipment facility j | |
transportation cost from hospital i to disposal facility k | |
transportation cost from transshipment location candidate j′ to transshipment facility j | |
transportation cost from transshipment location candidate j′ to disposal facility k | |
transportation cost from transshipment facility j to disposal facility k | |
transshipment facility capacity m (kg/day) | |
incinerator capacity n (kg/day) | |
amount of daily infectious waste of hospital i (kg/day) | |
, | amount of infectious waste at transshipment location j′ and j (kg/day) |
accumulated amount of infectious waste at transshipment facility j (kg) | |
facility establishment cost of transshipment facility with capacity m | |
facility establishment cost of incinerator with capacity n | |
population density at disposal location k (Number of people per square kilometer) | |
radius of area affected by incinerator with capacity n | |
carbon dioxide emission at transshipment facility with capacity m (kg of CO2 equivalence/capacity) | |
carbon dioxide emission at disposal facility with capacity n (kg of CO2 equivalence/capacity) | |
objective function o | |
Decision variables | |
binary variable; = 1 if infectious waste from hospital i is transported to transshipment facility j, otherwise = 0 | |
binary variable; = 1 if infectious waste from hospital i is transported to disposal facility k, otherwise = 0 | |
binary variable; = 1 if infectious waste from transshipment location candidate j′ is transported to disposal facility k, otherwise = 0 | |
binary variable; = 1 if infectious waste from transshipment location candidate j′ is transported to transshipment facility j, otherwise = 0 | |
binary variable; = 1 if infectious waste from transshipment facility j is transported to disposal facility k, otherwise = 0 | |
binary variable; = 1 if transshipment facility j is built with capacity m, otherwise = 0 | |
binary variable; = 1 if disposal facility k is installed with incinerator capacity n, otherwise = 0 |
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Costs | Transshipment | Incinerator | ||
---|---|---|---|---|
Capacity (kg/Day) | Capacity (kg/Day) | |||
1000 | 2000 | 1000 | 2000 | |
1. Fixed cost per day 1.1 Construction 1.2 Labor cost | 1267 2000 | 2000 1500 | 6333 3000 | 10,000 5000 |
2. Variable cost per day 2.1 Infectious solid treatment 2.2 Infectious waste treatment 2.3 Landfill 2.4 Maintenance cost | 55 14 - 19 | 75 18 - 30 | 198 76 58 95 | 274 152 115 150 |
Total cost (Baht/day) | 2355 | 3623 | 9760 | 15,691 |
Disposal Location Candidate | Density (People/km2) |
---|---|
Maha Sarakham (K1) | 1648 |
Kalasin (K2) | 3107 |
Khon Kaen (K3) | 888 |
Roi Et (K4) | 2038 |
Type of Facility and Capacity | CO2 Emission (kg of CO2) |
---|---|
Transshipment facility with 1000 kg capacity | 356 |
Transshipment facility with 2000 kg capacity | 712 |
Incinerator with 1000 kg capacity | 1074 |
Incinerator with 2000 kg capacity | 2148 |
Objective | Min Z1 | Min Z2 | Min Z3 |
---|---|---|---|
Z1 | 36,619 | 62,684 | 36,619 |
Z2 | 57,646 | 17,933 | 57,646 |
Z3 | 2860 | 3572 | 2860 |
Solution | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | 12 | 13 | 14 | 15 | 16 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
0.10 | 0.10 | 0.10 | 0.10 | 0.20 | 0.20 | 0.25 | 0.25 | 0.30 | 0.33 | 0.40 | 0.40 | 0.50 | 0.60 | 0.70 | 0.80 | |
0.10 | 0.60 | 0.70 | 0.80 | 0.10 | 0.40 | 0.25 | 0.50 | 0.10 | 0.33 | 0.20 | 0.40 | 0.25 | 0.30 | 0.20 | 0.10 | |
0.80 | 0.30 | 0.20 | 0.10 | 0.70 | 0.40 | 0.50 | 0.25 | 0.60 | 0.33 | 0.40 | 0.20 | 0.25 | 0.10 | 0.10 | 0.10 |
Objective | Solution | |||
---|---|---|---|---|
1 | 2 | 3 | 4 | |
37,902 | 62,684 | 62,684 | 62,684 | |
46,614 | 17,933 | 17,933 | 17,933 | |
2860 | 3572 | 3572 | 3572 | |
CPU(s) | 852 | 54 | 185 | 1341 |
5 | 6 | 7 | 8 | |
36,619 | 38,959 | 37,902 | 39,503 | |
57,646 | 25,118 | 46,614 | 20,691 | |
2860 | 2860 | 2860 | 3216 | |
CPU(s) | 3869 | 3622 | 2972 | 267 |
9 | 10 | 11 | 12 | |
36,619 | 38,959 | 36,619 | 38,298 | |
57,646 | 26,065 | 57,646 | 26,065 | |
2860 | 3216 | 2860 | 2860 | |
CPU(s) | 619 | 1614 | 3053 | 1673 |
13 | 14 | 15 | 16 | |
36,619 | 38,959 | 38,999 | 36,619 | |
57,646 | 26,065 | 26,065 | 57,646 | |
2860 | 3216 | 3216 | 2860 | |
CPU(s) | 586 | 504 | 4641 | 172 |
Hospital | Transshipment | Disposal |
---|---|---|
H1, H2, H3, H4, H5, H8, H10, H11, H12, H14, H15, H16, H17, H18, H19, H34, H36 H39, H41 | H5 (1000 kg) | K4 (2000 kg) |
H6, H7, H9, H13, H20, H21, H22, H24, H25 H27, H28, H31, H32, H33, H37, H40 | H27 (1000 kg) | |
H23, H26, H29, H30, H35, H38, H42, H43 H44, H45, H46, H47, H48, H49, H50, H51, H52, H53, H54, H55, H56, H57, H58, H59 H60, H61 | Direct to K4 |
Hospital | Transshipment | Disposal |
---|---|---|
H3, H4, H5, H8, H14, H15, H16, H18, H36, H40, H42 | H5 (1000 kg) | K3 (1000 kg) |
H7, H20, H21, H22, H27, H31, H32, H33, H37, H38 | H7 (1000 kg) | |
H1, H2, H6, H9, H10, H11, H12, H13, H17, H19 | Direct to K3 | |
H24, H25, H26, H28, H30, H48, H49, H53 | H26 (1000 kg) | K1 (1000 kg) |
H39, H44, H45, H47, H50, H51, H54, H58, H59 | H47 (1000 kg) | |
H23, H29, H34, H35, H41, H43, H46, H52 H55, H56, H57, H60, H61 | Direct to K1 |
Hospital | Transshipment | Disposal |
---|---|---|
H2, H3, H4, H8, H10, H14, H15, H16, H18, H36, H41, H51 | H5 (1000 kg) | K3 (1000 kg) |
H6, H7, H9, H13, H20, H21, H22, H24, H31, H32, H33, H37 | H27 (1000 kg) | |
H1, H11, H12, H17, H19 | Direct to K3 | |
H43, H44, H45, H50, H52, H58, H59 | H47 (1000 kg) | K4 (1000 kg) |
H23, H25, H26, H28, H29, H30, H34, H35 H38, H39, H40, H42, H46, H48, H49, H53, H54, H55, H56, H57, H60, H61 | Direct to K4 |
Objective | Current Value | Every-Other-Day Collection | Change | % |
---|---|---|---|---|
Cost (THB) | 39,503 | 31,882 | −6621 | −17% |
Social (Number of people) | 20,691 | 20,691 | 0 | 0% |
CO2 (kg of CO2) | 3216 | 3216 | 0 | 0% |
Objective | Current Value | +100% Waste | Change | % |
---|---|---|---|---|
Cost (THB) | 39,503 | 81,101 | +42,598 | +111% |
Social (Number of people) | 20,691 | 54,315 | +33,624 | +163% |
CO2 (kg of CO2) | 3216 | 5008 | +1793 | +56% |
Objective | Current Value | +20% Fuel Price | Change | % |
---|---|---|---|---|
Cost (THB) | 39,503 | 42,096 | +3593 | +9% |
Social (Number of people) | 20,691 | 20,691 | 0 | 0% |
CO2 (kg of CO2) | 3216 | 3216 | 0 | 0% |
Scenario | Transshipment Facility | Disposal Facility | Cost | Social | CO2 | |||
---|---|---|---|---|---|---|---|---|
K1 | K2 | K3 | K4 | |||||
Base scenario: Compromising solution | H5: 1000 kg H27: 1000 kg H47: 1000 kg | - | - | 1000 kg | 1000 kg | 39,503 | 20,691 | 3216 |
Scenario 1: Every-other-day collection interval | H5: 1000 kg H27: 1000 kg H47: 1000 kg | - | - | 1000 kg | 1000 kg | 31,882 (−19%) | 20,691 (0%) | 3216 (0%) |
Scenario 2: +100% waste | H5: 1000 kg H27: 1000 kg | 1000 kg | 1000 kg | 1000 kg | 1000 kg | 81,101 (+111%) | 54,315 (+163%) | 5008 (+56%) |
Scenario 3: +20% fuel price | H5: 1000 kg H27: 1000 kg H47: 1000 kg | - | - | 1000 kg | 1000 kg | 42,096 (+9%) | 20,691 (0%) | 3216 (0%) |
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Kailomsom, P.; Khompatraporn, C. A Multi-Objective Optimization Model for Multi-Facility Decisions of Infectious Waste Transshipment and Disposal. Sustainability 2023, 15, 4808. https://doi.org/10.3390/su15064808
Kailomsom P, Khompatraporn C. A Multi-Objective Optimization Model for Multi-Facility Decisions of Infectious Waste Transshipment and Disposal. Sustainability. 2023; 15(6):4808. https://doi.org/10.3390/su15064808
Chicago/Turabian StyleKailomsom, Prasit, and Charoenchai Khompatraporn. 2023. "A Multi-Objective Optimization Model for Multi-Facility Decisions of Infectious Waste Transshipment and Disposal" Sustainability 15, no. 6: 4808. https://doi.org/10.3390/su15064808
APA StyleKailomsom, P., & Khompatraporn, C. (2023). A Multi-Objective Optimization Model for Multi-Facility Decisions of Infectious Waste Transshipment and Disposal. Sustainability, 15(6), 4808. https://doi.org/10.3390/su15064808