Multi-Objective Optimization for Sustainable Pavement Maintenance Decision Making by Integrating Pavement Image Segmentation and TOPSIS Methods
Abstract
:1. Introduction
2. Research Framework
2.1. Recognizing Dimensions of Pavement Distresses
2.2. Compiling a List of Viable Pavement Maintenance Strategies
2.3. Assessing the Carbon Emissions and Costs of These Strategies
2.3.1. Carbon Emissions Calculation Model
2.3.2. Maintenance Costs Calculation Model
2.4. Optimizing Decisions on Pavement Maintenance
3. Data Collection and Processing
3.1. Data Collection
3.2. Data Processing
4. Experiments and Results
4.1. Model Training
4.2. Dimension Recognition Result
4.3. Optimal Maintenance Strategy
5. Conclusions
- (1)
- The U-Net algorithm is known for its symmetric U-shaped structure and effective jump connections, which enables it to achieve accurate image segmentation even on limited datasets, and likewise U-Net has a smaller dimension compared to other image segmentation algorithms. In the training process of this paper, the algorithm has achieved a loss value of 0.3312, which indicates that the segmentation is 96.88% efficient. Through accurate image segmentation, combining picture pixels with actual dimensions, this study accurately identifies the detected pavement damage dimensions, which provides a basis for calculating the pavement condition index, the carbon emissions of the maintenance program, and the maintenance cost.
- (2)
- This study accurately categorizes and identifies the dimension of the pavement damage in combination with actual cases and gives the decision of whether maintenance is needed or not by combining the PCI calculation formula. On this basis, decomposing the pavement damage maintenance process lists the labor, materials, and machines needed for maintenance, and then proposes all feasible maintenance strategies. Then, the carbon emissions and maintenance costs of these maintenance options were calculated by combining the actual dimensions of the pavement damage. Finally, through the multi-objective decision-making method based on the improved entropy-weighted TOPSIS model, the optimal maintenance strategy for cracks, in this case, was obtained by using petroleum asphalt as the material, grooving with a motorized cutter, cleaning and drying the cracks with a handheld motorized blower, grouting with an asphalt grouting machine, and, finally, repairing manually. For potholes, the optimal maintenance strategy is to use emulsified asphalt as material, use a road breaker for grooving, portable electric blower for cleaning and drying cracks, take manual paving, and, finally, use a small light wheel roller for compaction. The comprehensive score of this program is 99.16, the carbon emission generated in this case is 33.75 kg, and the cost of maintenance is CNY 464.99.
- (3)
- From Conclusion 2, it can be seen that the multi-objective decision-making model proposed in this study is able to give a specific low-carbon and economical maintenance strategy based on specific pavement conditions instead of giving a maintenance strategy that applies to all pavements. The problem that one model cannot be applied to most pavements is solved, and the generalizability of the decision-making model is greatly improved.
- (1)
- In this study, only the actual area of the pavement damage was recognized when the pavement damage dimension recognition was performed, and the depth of the damage could not be accurately recognized, so the common depth of these damages was taken as the actual depth of the pavement damage. Future research can combine 3D image recognition technology to obtain a more accurate depth of pavement damage.
- (2)
- Due to the limitation of obtaining the carbon emission factor of materials, this study is not comprehensive enough in the selection of materials, and in the future, if the carbon emission factor of more new materials can be obtained, a lower carbon economic maintenance strategy can be proposed.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Grading | Exceptional | Excellent | Good | Moderate | Poor | Very Poor |
---|---|---|---|---|---|---|
PCI | 100~91 | 90~8l | 80~71 | 70~51 | 50~31 | ≤30 |
Maintenance Countermeasures | - | Routine maintenance | Minor repair | Medium repair | Major repair | Reconstruction |
Pavement Damage | Material | Grooving | Cleaning and Drying | Sealing Paving | Adjusting Compaction |
---|---|---|---|---|---|
Crack | Petroleum asphalt, emulsified asphalt, modified asphalt | Electric concrete saw, manual grooving | Handheld electric blower | Asphalt crack sealer | Manual adjusting |
Pothole | Petroleum asphalt, emulsified asphalt, modified asphalt | Road breaker, manual grooving | Handheld electric blower | Mini asphalt paver, manual paving | Manual operation of an electric compactor, mini smooth wheel roller |
No. | Distress | Material | Grooving | Cleaning and Drying | Sealing Paving | Adjusting Compaction |
---|---|---|---|---|---|---|
1 | Crack | Petroleum asphalt | Manual grooving | Handheld electric blower | Asphalt crack sealer | Manual adjusting |
Pothole | Emulsified asphalt | Manual grooving | Manual paving | Manual operation of an electric compactor | ||
2 | Crack | Petroleum asphalt | Manual grooving | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Manual grooving | Mini asphalt paver | Manual operation of an electric compactor | ||
3 | Crack | Petroleum asphalt | Manual grooving | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Manual grooving | Manual paving | Mini Smooth wheel roller | ||
4 | Crack | Petroleum asphalt | Manual grooving | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Manual grooving | Mini asphalt paver | Mini Smooth wheel roller | ||
5 | Crack | Petroleum asphalt | Electric concrete saw | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Manual grooving | Manual paving | Manual operation of an electric compactor | ||
6 | Crack | Petroleum asphalt | Electric concrete saw | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Manual grooving | Mini asphalt paver | Manual operation of an electric compactor | ||
103 | Crack | Modified asphalt | Electric concrete saw | Handheld electric blower | Asphalt crack sealer | Manual adjusting |
Pothole | Emulsified asphalt | Manual grooving | Manual paving | Mini Smooth wheel roller | ||
104 | Crack | Modified asphalt | Electric concrete saw | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Manual grooving | Mini asphalt paver | Mini Smooth wheel roller | ||
105 | Crack | Modified asphalt | Electric concrete saw | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Road breaker | Manual paving | Manual operation of an electric compactor | ||
106 | Crack | Modified asphalt | Electric concrete saw | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Road breaker | Mini asphalt paver | Manual operation of an electric compactor | ||
107 | Crack | Modified asphalt | Electric concrete saw | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Road breaker | Manual paving | Mini Smooth wheel roller | ||
108 | Crack | Modified asphalt | Electric concrete saw | Asphalt crack sealer | Manual adjusting | |
Pothole | Emulsified asphalt | Road breaker | Mini asphalt paver | Mini Smooth wheel roller |
No. | Materials | Price (CNY/t) |
---|---|---|
1 | Petroleum asphalt | 4950 |
2 | Emulsified asphalt | 4200 |
3 | Modified asphalt | 6050 |
No. | Machines | Price (CNY/Shift) |
---|---|---|
1 | Electric concrete saw (with manual operation) | 303.05 |
2 | Handheld blower (without manual operation) | 2.07 |
3 | Asphalt crack sealer (with manual operation) | 209.78 |
4 | Road breaker (with manual operation) | 212.08 |
5 | Mini asphalt paver (with manual operation) | 652.84 |
6 | Electric compactor (without manual operation) | 32.08 |
7 | Mini smooth wheel roller (with manual operation) | 361.02 |
8 | Eight-ton truck (with manual operation) | 605.04 |
No. | Materials | Carbon Emission Factors (kgCO2/kg) |
---|---|---|
1 | Petroleum asphalt | 136.8 |
2 | Emulsified asphalt | 166.3 |
3 | Modified asphalt | 259.7 |
Transportation Mode | Carbon Emission Factors [kgCO2/(t·km)] |
---|---|
Light-duty diesel truck transportation (2-ton capacity) | 0.286 |
Medium-duty diesel truck transportation (8-ton capacity) | 0.179 |
Heavy-duty diesel truck transportation (10-ton capacity) | 0.162 |
Heavy-duty diesel truck transportation (18-ton capacity) | 0.129 |
Heavy-duty diesel truck transportation (30-ton capacity) | 0.078 |
Heavy-duty diesel truck transportation (46-ton capacity) | 0.057 |
No. | Machines | Diesel Fuel (kg/Shift) | Electricity (k·Wh/Shift) |
---|---|---|---|
1 | Electric concrete saw | - | 18.95 |
2 | Handheld blower | - | 0.2 |
3 | Asphalt crack sealer | 9.81 | - |
4 | Road breaker | 9.6 | - |
5 | Mini asphalt paver | 27.43 | - |
6 | Electric compactor | - | 17.34 |
7 | Mini smooth wheel roller | 19.2 | - |
Parameter | Value |
---|---|
Batch | 2, 4, 8 |
Epochs | 40, 50, 60, 70 |
Optimizer | Adam |
Loss function | Binary Cross-Entropy Loss |
Dropout | 0.2, 0.3 |
Parameter Settings | |
---|---|
Batch | 4 |
Epochs | 60 |
optimizer | Adam |
loss function | Binary Cross-Entropy Loss |
Dropout | 0.3 |
No. | Pavement Damage | Number of Pixels | Actual Area (cm2) | No. | Pavement Damage | Number of Pixels | Actual Area (cm2) |
---|---|---|---|---|---|---|---|
1 | Pothole | 310,242 | 1365.065 | 11 | Crack | 15,092 | 66.4048 |
2 | Pothole | 240,391 | 1057.72 | 12 | Crack | 15,043 | 66.1892 |
3 | Pothole | 289,201 | 1272.484 | 13 | Crack | 12,016 | 52.8704 |
4 | Crack | 10,923 | 48.0612 | 14 | Crack | 14,230 | 62.612 |
5 | Crack | 13,492 | 59.3648 | 15 | Crack | 15,023 | 66.1012 |
6 | Crack | 23,410 | 103.004 | 16 | Crack | 14,830 | 65.252 |
7 | Crack | 10,231 | 45.0164 | 17 | Crack | 11,042 | 48.5848 |
8 | Crack | 16,923 | 74.4612 | 18 | Crack | 10,321 | 45.4124 |
9 | Crack | 13,921 | 61.2524 | 19 | Crack | 9431 | 41.4964 |
10 | Crack | 9102 | 40.0488 | 20 | Crack | 13,021 | 57.2924 |
No. | Cost (CNY) | Carbon Emissions (kgCO2) | No. | Cost (CNY) | Carbon Emissions (kgCO2) | No. | Cost (CNY) | Carbon Emissions (kgCO2) |
---|---|---|---|---|---|---|---|---|
1 | 535.32 | 22.44 | 37 | 543.02 | 31.56 | 73 | 565.90 | 35.96 |
2 | 556.42 | 33.03 | 38 | 564.09 | 31.69 | 74 | 587.18 | 36.10 |
3 | 520.18 | 28.61 | 39 | 527.82 | 30.56 | 75 | 551.13 | 34.98 |
4 | 541.27 | 29.87 | 40 | 548.89 | 31.95 | 76 | 572.41 | 36.37 |
5 | 513.41 | 23.84 | 41 | 521.00 | 33.45 | 77 | 544.73 | 37.89 |
6 | 534.51 | 34.44 | 42 | 542.07 | 33.58 | 78 | 566.01 | 38.02 |
7 | 498.27 | 30.01 | 43 | 505.81 | 32.45 | 79 | 529.96 | 36.90 |
8 | 519.36 | 31.28 | 44 | 526.88 | 33.83 | 80 | 551.23 | 38.30 |
9 | 480.13 | 27.58 | 45 | 487.62 | 33.96 | 81 | 512.19 | 38.43 |
10 | 501.22 | 38.18 | 46 | 508.69 | 41.53 | 82 | 533.46 | 44.32 |
11 | 464.99 | 33.75 | 47 | 472.42 | 35.44 | 83 | 497.41 | 37.92 |
12 | 486.08 | 44.35 | 48 | 493.49 | 45.82 | 84 | 518.69 | 48.09 |
13 | 539.48 | 29.16 | 49 | 546.68 | 32.76 | 85 | 564.02 | 36.84 |
14 | 560.67 | 29.29 | 50 | 567.77 | 32.89 | 86 | 585.21 | 36.97 |
15 | 524.54 | 28.16 | 51 | 531.53 | 31.76 | 87 | 549.08 | 35.85 |
16 | 545.73 | 29.55 | 52 | 552.62 | 33.14 | 88 | 570.27 | 37.24 |
17 | 517.98 | 31.06 | 53 | 524.76 | 34.65 | 89 | 542.51 | 38.74 |
18 | 539.17 | 31.19 | 54 | 545.85 | 34.77 | 90 | 563.71 | 38.88 |
19 | 503.04 | 30.06 | 55 | 509.61 | 33.64 | 91 | 527.57 | 37.75 |
20 | 524.23 | 31.45 | 56 | 530.70 | 35.03 | 92 | 548.77 | 39.14 |
21 | 485.10 | 31.58 | 57 | 491.46 | 35.15 | 93 | 509.64 | 39.27 |
22 | 506.30 | 40.29 | 58 | 512.55 | 42.16 | 94 | 530.84 | 44.59 |
23 | 470.16 | 34.41 | 59 | 476.31 | 35.96 | 95 | 494.70 | 38.08 |
24 | 491.36 | 44.94 | 60 | 497.40 | 46.27 | 96 | 515.90 | 48.17 |
25 | 541.55 | 30.30 | 61 | 554.51 | 34.32 | 97 | 565.93 | 38.19 |
26 | 562.66 | 30.43 | 62 | 575.68 | 34.45 | 98 | 587.11 | 38.32 |
27 | 526.45 | 29.29 | 63 | 539.52 | 33.33 | 99 | 550.95 | 37.19 |
28 | 547.56 | 30.68 | 64 | 560.70 | 34.72 | 100 | 572.12 | 38.58 |
29 | 519.72 | 32.18 | 65 | 532.92 | 36.23 | 101 | 544.34 | 40.09 |
30 | 540.83 | 32.31 | 66 | 554.09 | 36.36 | 102 | 565.51 | 40.22 |
31 | 504.61 | 31.17 | 67 | 517.93 | 35.23 | 103 | 529.36 | 39.10 |
32 | 525.73 | 32.56 | 68 | 539.10 | 36.62 | 104 | 550.53 | 40.49 |
33 | 486.51 | 32.69 | 69 | 499.95 | 36.76 | 105 | 511.38 | 40.62 |
34 | 507.63 | 40.82 | 70 | 521.12 | 43.20 | 106 | 532.55 | 45.37 |
35 | 471.41 | 34.83 | 71 | 484.97 | 36.90 | 107 | 496.39 | 38.76 |
36 | 492.52 | 45.29 | 72 | 506.14 | 47.14 | 108 | 517.56 | 48.78 |
No. | Score | No. | Score | No. | Score | No. | Score |
---|---|---|---|---|---|---|---|
1 | 28.38 | 28 | 13.30 | 55 | 64.63 | 82 | 26.93 |
2 | 7.05 | 29 | 48.56 | 56 | 31.40 | 83 | 81.03 |
3 | 48.51 | 30 | 19.33 | 57 | 87.77 | 84 | 48.41 |
4 | 19.26 | 31 | 72.59 | 58 | 58.79 | 85 | 3.48 |
5 | 60.61 | 32 | 39.01 | 59 | 97.07 | 86 | 0.18 |
6 | 26.40 | 33 | 92.22 | 60 | 79.97 | 87 | 11.51 |
7 | 81.25 | 34 | 66.65 | 61 | 8.00 | 88 | 1.75 |
8 | 49.29 | 35 | 98.44 | 62 | 0.98 | 89 | 16.99 |
9 | 96.61 | 36 | 85.40 | 63 | 20.60 | 90 | 3.50 |
10 | 76.18 | 37 | 17.23 | 64 | 4.87 | 91 | 35.56 |
11 | 99.16 | 38 | 3.87 | 65 | 28.25 | 92 | 11.53 |
12 | 91.00 | 39 | 36.21 | 66 | 8.09 | 93 | 63.75 |
13 | 21.33 | 40 | 12.06 | 67 | 50.97 | 94 | 30.39 |
14 | 5.51 | 41 | 46.28 | 68 | 20.70 | 95 | 84.08 |
15 | 41.70 | 42 | 17.89 | 69 | 78.05 | 96 | 52.87 |
16 | 15.04 | 43 | 70.62 | 70 | 44.94 | 97 | 2.81 |
17 | 51.59 | 44 | 37.08 | 71 | 92.70 | 98 | 0.12 |
18 | 21.30 | 45 | 91.21 | 72 | 68.16 | 99 | 10.06 |
19 | 75.02 | 46 | 64.94 | 73 | 2.93 | 100 | 1.34 |
20 | 41.50 | 47 | 98.18 | 74 | 0.19 | 101 | 15.18 |
21 | 93.35 | 48 | 84.36 | 75 | 10.10 | 102 | 2.87 |
22 | 68.72 | 49 | 13.74 | 76 | 1.38 | 103 | 32.85 |
23 | 98.69 | 50 | 2.63 | 77 | 14.96 | 104 | 10.17 |
24 | 86.57 | 51 | 30.72 | 78 | 2.80 | 105 | 60.85 |
25 | 18.90 | 52 | 9.28 | 79 | 32.22 | 106 | 28.06 |
26 | 4.54 | 53 | 40.19 | 80 | 9.79 | 107 | 82.10 |
27 | 38.52 | 54 | 14.23 | 81 | 59.83 | 108 | 50.16 |
Pavement Damage | Material | Grooving | Cleaning and Drying | Sealing Paving | Adjusting Compaction |
---|---|---|---|---|---|
Crack | Petroleum asphalt | Electric concrete saw | Handheld electric blower | Asphalt crack sealer | Manual adjusting |
Pothole | Emulsified asphalt | Road breaker | Handheld electric blower | Manual paving | Mini smooth wheel roller |
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Chong, D.; Liao, P.; Fu, W. Multi-Objective Optimization for Sustainable Pavement Maintenance Decision Making by Integrating Pavement Image Segmentation and TOPSIS Methods. Sustainability 2024, 16, 1257. https://doi.org/10.3390/su16031257
Chong D, Liao P, Fu W. Multi-Objective Optimization for Sustainable Pavement Maintenance Decision Making by Integrating Pavement Image Segmentation and TOPSIS Methods. Sustainability. 2024; 16(3):1257. https://doi.org/10.3390/su16031257
Chicago/Turabian StyleChong, Dan, Peiyi Liao, and Wurong Fu. 2024. "Multi-Objective Optimization for Sustainable Pavement Maintenance Decision Making by Integrating Pavement Image Segmentation and TOPSIS Methods" Sustainability 16, no. 3: 1257. https://doi.org/10.3390/su16031257
APA StyleChong, D., Liao, P., & Fu, W. (2024). Multi-Objective Optimization for Sustainable Pavement Maintenance Decision Making by Integrating Pavement Image Segmentation and TOPSIS Methods. Sustainability, 16(3), 1257. https://doi.org/10.3390/su16031257