Urban Construction Waste Recycling Path: Robust Optimization
Abstract
:1. Introduction
2. Literature Review
2.1. Design of the Construction Waste Recycling Path in a Deterministic Environment
2.2. Optimizing Construction Waste Recycling Path in an Uncertain Environment
2.3. Optimization Methods
3. Materials and Methods
3.1. Case City Overview
3.2. Model Parameters and Data Sources
3.3. Single-Objective Planning Model in a Deterministic Environment
3.3.1. Underlying Hypotheses of the Model
3.3.2. Objective Function of the Model
- (a)
- Facility construction costs
- (b)
- Transportation costs
- (c)
- Treatment costs
- (d)
- Total cost
3.3.3. Constraints of the Model
- (a)
- Flow balance constraint
- (b)
- Capacity and capability constraints
- (c)
- Environmental and social impact constraints
3.4. Robust Optimization Model in Uncertain Environments
4. Results and Discussion
4.1. Performance Comparison
4.1.1. Total Cost Comparison
4.1.2. Comparison of Treatment Capacity
4.2. Analysis of the Evolution of the Recycling Path
4.2.1. MATLAB Calculation Results
4.2.2. Analysis of Results
- (1)
- Comparison of treatment plant sites under different levels of uncertainty
- (2)
- Comparison of transport paths under different levels of uncertainty
5. Conclusions
- This paper built a deterministic model and robust model considering the reality of Nanjing. The reality is generally consistent with our hypotheses. Hypotheses 1–3 hold. The robust model has a better total cost. From the deterministic model to the robust model, the total cost increases rapidly. And the total cost increases at a slower rate when uncertainty increases. Costs are linearly related to distance and quantities, so the robust model has a greater total cost than the deterministic model. Hypotheses 4–6 hold. The robust model is cost-effective in the face of uncertainty in supply.
- The robust model has better treatment capacity. From the deterministic model to the robust model, the total treatment capacity increases rapidly due to opening more treatment plants. There is no difference in technology among the treatment plants, but treatment capacity and capability are limited. The robust model has more treatment plants, so it has greater total treatment capacity. Hypotheses 7–9 hold. The robust model is immune to supply uncertainty at the cost of building additional treatment plants. Thus, even in the worst-case scenario, it can guarantee a higher treatment capacity.
- Both models follow the proximity principle, transporting and landfilling near the supply and treatment site, while a few other models consider long-distance transportation. This is consistent with the hypothesis that there is no direct landfill. Construction waste should be transported to treatment plants before landfilling. Hypothesis 10 holds. Compared with the deterministic model, the robust model has longer total transportation distances. However, the total cost increases very slowly, because the proximity principle significantly reduces the transportation costs and to some extent offsets the construction and treatment costs of the treatment plants, and ultimately achieves the optimization objective of the model.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Symbols | Meaning | Data Sources |
---|---|---|
i | Supply sites | The data are from the map of Nanjing, selected from the center of each administrative district [32]. |
j | Candidate sites for treatment plants | The data are from the “14th Five-Year Plan for Harmless Treatment of Domestic Waste in Nanjing” [33]. |
qi | Supply of construction waste at point i | Urban construction waste supply (tons/year) = number of inhabitants or households in the city or region × number of people or households per unit construction waste generation base (0.5–1.0 t/year). The data are from Nanjing Statistical Yearbook 2021 [34], with a value of 0.5 t per capita construction waste generation. |
r | Rate of residue | The rate of residue is 10%, the unit transportation cost is CNY 1/t, the unit treatment cost at the treatment plant is CNY 15/t and the unit landfill cost at the landfill site is CNY 150/t. The data are from the January 2022 investigation. |
c2 | Unit transportation costs | |
c3 | Unit treatment cost | |
c4 | Unit landfill costs | |
m | Landfill sites | The data are from the public information on disposal sites published by the Nanjing Municipal Bureau of Urban Management [35]. |
Vm | Maximum capacity of the landfill at point m | |
c1 | Construction costs of the treatment plant at point j | The data are from the environmental impact reports of various construction waste reutilization projects [36]. |
Gj | Design capacity of treatment plant at point j | |
dij | Distance from point i to point j | The data are from Google Maps [37]. |
djm | Distance from point j to point m |
Symbols | Meanings | |
---|---|---|
Collection | I | Set of potential construction waste supply sites; each element of the set is denoted by i |
J | Set of potential construction waste treatment plants; each element of the set is denoted by j | |
M | Set of potential landfill sites; each element of the set is denoted by m | |
Parameter | qi | Amount of construction waste supplied at site i |
c1 | Construction cost of treatment plant j | |
Gj | Design treatment capacity at treatment plant j | |
r | Rate of construction waste treatment residue | |
c2 | Unit transportation cost; the transportation cost per unit mass of waste is proportional to the distance traveled | |
c3 | Unit treatment cost of treatment plant j | |
c4 | Unit landfill cost of landfill m | |
Vm | Maximum capacity of landfill m | |
dij | Distance from i to j | |
djm | Distance from j to m | |
uij’ | Transport capacity of construction waste from i to treatment plant j | |
uij | Actual amount of construction waste transported from i to treatment plant j | |
ujm’ | Transport capacity of construction waste from j to landfill m | |
ujm | Actual quantity of construction waste transported from j to landfill m | |
Decision variable | Xj | 1 if the treatment plant is established at j; 0 otherwise |
Tij | 1 if supply site i is assigned to j; 0 otherwise | |
Yjm | 1 if the treatment plant is assigned to m; 0 otherwise |
Uncertainty ρ | Qi(Rj) |
---|---|
0 | Q1(R1R4R11)Q2(R17)Q3(R1)Q4(R8R13)Q5(R8R12)Q6(R2R4R19)Q7(R1R13R17)Q8(R17R18)Q9(R9R12)Q10(R7)Q11(R7) |
0.3 | Q1(R1R2R4R8R9R11R17R19)Q2(R1R2R4R6R11R12R15R18R19)Q3(R1R8R11R13R17)Q4(R3R4R6R11R15R18) Q5(R5R8R10R12R18)Q6(R2R3R4R6R18R19)Q7(R1R4R8R11R13R17R18R19)Q8(R5R14R18)Q9(R1R2R3R4R8R9R12R18R19) Q10(R1R2R4R6R7R8R9R11R12R13R15R19)Q11(R1R2R4R6R7R8R9R11R13R15R17R19) |
0.6 | Q1(R1R2R4R7R8R9R11R12R19)Q2(R2R3R4R6R7R9R11R12R15R18R19)Q3(R1R2R4R8R11R13R15R17)Q4(R3R4R6R11R13R15R17R18) Q5(R5R8R10R12R14R18)Q6(R2R3R4R6R11R12R15R18R19)Q7(R1R2R4R8R11R13R15R17R18R19)Q8(R5R14R18) Q9(R1R2R3R4R8R9R10R12R18R19)Q10(R1R2R4R6R7R8R9R11R12R13R15R19)Q11(R1R2R4R6R7R8R9R11R13R15R17R19) |
0.9 | Q1(R1R2R4R8R9R11R12R17R18R19)Q2(R2R3R4R6R11R12R15R18R19)Q3(R1R2R4R8R11R13R15R17)Q4(R3R4R11R12R13R14R18) Q5(R5R8R10R12R14R18)Q6(R2R3R4R12R14R18R19)Q7(R1R2R4R8R11R13R17R18R19)Q8(R5R14R18) Q9(R1R2R3R4R8R9R10R12R18R19)Q10(R1R2R4R6R7R8R9R11R12R13R15R18R19)Q11(R1R2R4R6R7R8R9R11R13R15R17R19) |
Uncertainty ρ | Rj(Lm) |
---|---|
0 | R1(L3)R2(L4)R3(L4)R4(L4)R5(L5)R7(L1)R8(L3)R9(L2)R10(L1)R11(L4)R12(L2)R15(L1)R18(L3)R19(L4) |
0.3 | R1(L3)R2(L4L5)R3(L4)R4(L4L5)R5(L3L5)R6(L1L5)R7(L1L3L4)R8(L1L3)R9(L2)R10(L1L2)R11(L4L5)R12(L2)R13(L1L3) R14(L4L5)R15(L1L3)R17(L1L3)R18(L3L5)R19(L4L5) |
0.6 | R1(L3L5)R2(L4L5)R3(L4L5)R4(L4L5)R5(L3L5)R6(L1L5)R7(L1L5)R8(L1L3L4)R9(L1L3)R10(L1L2)R11(L4L5)R12(L2L3) R13(L1L3)R14(L4L5)R15(L1L3)R17(L1L3)R18(L3L5)R19(L4L5) |
0.9 | R1(L3)R2(L4)R3(L4)R4(L4)R5(L3L5)R6(L1L5)R7(L1L3L4)R8(L3)R9(L2)R10(L1L2)R11(L4)R12(L2)R13(L1L3)R14(L4L5) R15(L1L3)R17(L1L3)R18(L3)R19(L4L5) |
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Wu, F.; Mei, S.; Xu, H.; Hsu, W.-L. Urban Construction Waste Recycling Path: Robust Optimization. Buildings 2023, 13, 2802. https://doi.org/10.3390/buildings13112802
Wu F, Mei S, Xu H, Hsu W-L. Urban Construction Waste Recycling Path: Robust Optimization. Buildings. 2023; 13(11):2802. https://doi.org/10.3390/buildings13112802
Chicago/Turabian StyleWu, Fan, Shue Mei, Haiying Xu, and Wei-Ling Hsu. 2023. "Urban Construction Waste Recycling Path: Robust Optimization" Buildings 13, no. 11: 2802. https://doi.org/10.3390/buildings13112802
APA StyleWu, F., Mei, S., Xu, H., & Hsu, W. -L. (2023). Urban Construction Waste Recycling Path: Robust Optimization. Buildings, 13(11), 2802. https://doi.org/10.3390/buildings13112802