Optimization Models for Reducing Off-Cuts of Raw Materials in Construction Site
Abstract
:1. Introduction
1.1. Literature Review
1.2. Objectives and Contributions
- (1)
- Theoretical contribution. The literature usually adopts heuristic algorithms to solve the cutting stock problem. In this study, we first develop a general model to minimize the off-cuts in construction sites. Additionally, we then develop two solution methods. The first is a mixed-integer linear programming model to obtain exact optimal solutions by considering all possible patterns and the proposed cutting pattern generation method is innovative. The second method is based on column generation, which deals with large scale problems. We compare the effectiveness of column generation method with two heuristics, which could provide insights of these three approaches. Using real-word cases, we demonstrate that our methods are effective and efficient.
- (2)
- Practical contribution. The proposed optimization model and the two solution methods can be used to reduce the waste produced by cutting construction materials, e.g., steel bars and PVC pipes. Our study will help construction contractors reduce waste, save costs, and achieve sustainable and green construction targets.
2. Model
3. Solution Method
3.1. Mixed-Integer Linear Programming Method
3.2. Column Generation Method
4. Numerical Experiments
4.1. Data
4.2. Computational Analysis
Algorithm 1: Greedy heuristic |
Initialize: Number of steel bars of length to cut: Number of raw steel bars that have been used Remaining length of the current raw steel bar While true: While true: boolCannotCutAnyMore = true For : // we prioritize longer steel bars If and // cut a steel bar of type boolCannotCutAnyMore = false Break If boolCannotCutAnyMore: If for all , return; Else: Set Break; |
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Study | Application | Method(s) |
---|---|---|
Gradisar et al. [34] | Clothing Industry | Bi-objective model solved by heuristics |
Gradisar and Trkman [35] | General one-dimensional cutting stock problem | Heuristic procedure and branch-and-bound |
Dimitriadis and Kehris [36] | Manufacturing industry | Heuristics |
Cui and Yang [37] | Stock bars | Linear programming and heuristics |
Gracia et al. [38] | Construction industry | Heuristics based on Genetic algorithms |
Sets | |
Set of categories of steel bars, | |
Set of types of steel bars of diameter , , | |
Set of cutting patterns for raw steel bars of diameter , , | |
Indices | |
A category of steel bars | |
A type for category | |
A cutting pattern for category | |
Parameters | |
The diameter of steel bars of category | |
The length of steel bars of diameter and type that the site requires | |
Total number of steel bars of the length of diameter and type that the site requires | |
The length of raw steel bars of diameter that the plant sells | |
Decision Variables | |
Number of raw steel bars of diameter to purchase from the plant | |
Number of steel bars of length that a raw steel bar of of diameter and cutting pattern will be cut into | |
Number of raw steel bars of diameter that will be cut according to pattern |
Pattern No. | Length of Steel Bars the Site Requires | Cutting Pattern |
---|---|---|
1 | ||
2 | ||
3 | ||
4 | ||
5 | ||
6 |
Diameter | Types of Steel Bars | Length of Steel Bars the Site Requires | Total Number of Steel Bars the Site Requires |
---|---|---|---|
12 mm | 1 | 7860 | 2 |
2 | 7460 | 4 | |
3 | 7220 | 4 | |
4 | 7060 | 4 | |
5 | 4950 | 2 | |
6 | 4920 | 8 | |
7 | 4420 | 8 | |
8 | 3860 | 4 | |
9 | 3560 | 4 | |
10 | 3390 | 4 | |
11 | 3260 | 4 | |
12 | 3160 | 2 | |
13 | 3120 | 4 | |
14 | 2850 | 4 | |
15 | 2810 | 12 | |
16 | 2360 | 10 | |
17 | 2060 | 12 | |
18 | 1960 | 6 | |
19 | 1710 | 2 | |
20 | 1690 | 2 | |
21 | 1520 | 2 | |
22 | 1390 | 2 | |
23 | 1360 | 4 | |
24 | 760 | 4 | |
18 mm | 1 | 7240 | 4 |
2 | 4480 | 2 | |
3 | 4070 | 4 | |
4 | 3520 | 2 | |
5 | 2740 | 4 | |
6 | 2730 | 2 | |
7 | 2690 | 4 | |
8 | 2580 | 2 | |
9 | 2450 | 4 | |
10 | 2430 | 2 | |
11 | 2220 | 2 | |
12 | 2090 | 4 | |
13 | 2050 | 4 | |
14 | 1510 | 4 | |
15 | 1220 | 2 | |
16 | 950 | 2 |
Diameter | Types of Steel Bars | Solutions (Cutting Pattern Number of Raw Steel Bars, i.e., ) | CPU Time (s) |
---|---|---|---|
0.05 | |||
0.30 | |||
{1,2,3,4,5,6} | 1.73 | ||
{1,2,3,4,5,6,7,8} | N.A. | >600 | |
0.09 | |||
1.09 | |||
{1,2,3,4,5,6,7} | 33.11 | ||
{1,2,3,4,5,6,7,8,9} | N.A. | >600 |
Diameter | Types of Steel Bars | Solutions (Cutting Pattern Number of Raw Steel Bars, i.e., ) | CPU Time (s) |
---|---|---|---|
0.40 | |||
0.23 | |||
Number of Types of Steel Bars | Average CPU Time (s) |
---|---|
50 | 1.75 |
100 | 2.34 |
200 | 3.41 |
500 | 6.93 |
1000 | 12.51 |
Number of Types of Steel Bars | Average Optimal Objective Value by Column Generation | Average Optimal Objective Value by One-Length-per-Raw-Bar Heuristic | Average Optimal Objective Value by Greedy Heuristic | Percentage of Cost Reduction by Column Generation Compared with One-Length-per-Raw-Bar Heuristic | Percentage of Cost Reduction by Column Generation Compared with Greedy Heuristic |
---|---|---|---|---|---|
50 | 436.10 | 517.60 | 509.80 | 15.75% | 14.46% |
100 | 830.70 | 976.10 | 959.20 | 14.90% | 13.40% |
200 | 1837.20 | 1968.60 | 1934.10 | 6.67% | 5.01% |
500 | 4707.10 | 4964.90 | 4873.70 | 5.19% | 3.42% |
1000 | 9452.00 | 9886.00 | 9711.50 | 4.39% | 2.67% |
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Wang, H.; Yi, W. Optimization Models for Reducing Off-Cuts of Raw Materials in Construction Site. Mathematics 2022, 10, 4651. https://doi.org/10.3390/math10244651
Wang H, Yi W. Optimization Models for Reducing Off-Cuts of Raw Materials in Construction Site. Mathematics. 2022; 10(24):4651. https://doi.org/10.3390/math10244651
Chicago/Turabian StyleWang, Haoqing, and Wen Yi. 2022. "Optimization Models for Reducing Off-Cuts of Raw Materials in Construction Site" Mathematics 10, no. 24: 4651. https://doi.org/10.3390/math10244651
APA StyleWang, H., & Yi, W. (2022). Optimization Models for Reducing Off-Cuts of Raw Materials in Construction Site. Mathematics, 10(24), 4651. https://doi.org/10.3390/math10244651