Process Improvement and Application of Pavement Management System Based on Pavement Conditions in Jeju Island
Abstract
:1. Introduction
2. Literature Review
2.1. Studies on Pavement Condition Indexes and Factors That Influence Performance
2.2. Studies on Development of Pavement Management Strategies for Local Roads
2.3. Methods of Road Segmentation
3. Methodology
3.1. Dataset Construction
3.2. Condition Index Development
3.3. Pavement Segmentation for Management
4. Development of Jeju Pavement Condition Index
4.1. Analysis Results for Jeju Island Pavement Condition Status
4.2. Data Calibration
4.3. Index Development According to Distress Type
4.3.1. Crack Rate Index
4.3.2. Rut Depth Index
4.3.3. Roughness Index
4.3.4. Combined Index
5. Pavement Segmentation Using JPCI-Based Cumulative Difference Approach; Case of LR-97
5.1. First Segmentation
5.2. Second Segmentation
5.3. Priority Selection Based on Repair Budget–LR-97 Case Study Standard
6. Conclusions
- JPCI was developed based on results that reflect the distribution (maximum, minimum, and management standard) of pavement conditions in the entire target road in terms of the following three factors: crack rate, rut depth, and roughness. Because of its basic model form, the process proposed in this study is likely to have an increased applicability;
- The representative distress type in Jeju Island pavements was determined to be the crack rate. In practice, the management standard for this fault type was set at 20%; however, before the introduction of PMS management, it was difficult to distinguish, based on visual inspections, whether cracks have occurred while users are driving vehicles on the road, or the difference between, for example, 20% and 30%. As such, it was assessed that the proportion of sections that exceeded the management standard was higher than in the case of rutting or roughness. Although rut depth and roughness are also managed based on certain standards, specifically 20 mm and 7 m/km, respectively, these two distress types are easily felt, and furthermore, these factors have a big effect on the driving performance and driving comfort of road users. Therefore, it was inferred that these fault types are managed more strictly than the crack rate and thus include few values that greatly deviate from the management standard;
- Through a smoothing process that is based on CDA results, it was possible to perform segmentation that reflects the characteristics of the Zc values. The smoothing process was performed using a moving average, and the variable range was set to be the minimum length for a repair section. In this study, segmentation was performed until the completion of the second decision-making, which was based on the minimum repair length. However, it was inferred that more practical results can be derived if judgment by a manager or engineer is used to perform merging and diverging of the sections that were determined to be in need of repair;
- In the case of LR-97, when the amount of repair was calculated using CDA, the budget increased to approximately 154% of the budget for when the repair sections were selected using only JPCI. These results occurred because CDA performs segmentation based on the extent to which values deviate from the average for the target section rather than the physical size of the JPCI value. Thus, from a macroscopic point of view, there is a proportion of good sections that are included among the sections that need repair. Nonetheless, it was judged that this can be used as evidentiary data for decision-making regarding preventative overlays.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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Distress Type | Minimum Value | Maximum Value |
---|---|---|
Crack rate (%) | 0.00 | 51.943 |
Rut Depth (mm) | 1.76 | 33.92 |
IRI (m/km) | 0.2 | 18.17 |
JPCI Rate | Class | Pavement Condition | Action |
---|---|---|---|
8–10 | Very Good | Almost-good-as-new pavement | Do nothing |
6–8 | Good | Partial damage | General/Preventive maintenance |
4–6 | Fair | Intermittent breakage observed (“JPCI = 5” corresponds to crack rate over 20% or rut depth over 20 mm or IRI over 7 m/km) | Preventive maintenance/ M&R strategy required |
2–4 | Poor | Structural distress or deterioration occurred | Large-scale rehabilitation (overlay, inlay, etc.) required |
0–2 | Very Poor | Large scale distresses are widely distributed over the section | Reconstruction |
Route | Length (km) | Avg. | Rank (by JPCI) |
---|---|---|---|
Total | 2053.41 | 7.033 | - |
LR-1132 | 122.91 | 6.912 | 6 |
LR-1131 | 421.35 | 7.173 | 3 |
LR-97 | 189.76 | 6.335 | 9 |
LR-1136 | 847.77 | 7.169 | 4 |
LR-1115 | 77.47 | 6.127 | 10 |
LR-1117 | 42.10 | 7.148 | 5 |
LR-1118 | 74.13 | 6.599 | 7 |
LR-1135 | 114.10 | 7.776 | 1 |
LR-1139 | 76.00 | 6.462 | 8 |
LR-Aejoro | 87.82 | 7.376 | 2 |
1st Decision | 2nd Decision | |||
---|---|---|---|---|
M&R Not Needed | M&R Needed | M&R Not Needed | M&R Needed | |
Length (km·lane) | 117.17 | 86.71 | 118.64 | 71.12 |
JPCI avg. | 7.53 | 4.38 | 7.45 | 4.38 |
Criteria | Length | M&R Required Length | Budget for M&R (won) | M&R Ratio |
---|---|---|---|---|
JPCI | 189.76 km | 46.32 km | 4.076 billion | 24.41% |
CDA | 71.12 km | 6.259 billion | 37.48% |
No. | Start Point | End Point | Length (km·Lane) | JPCI Avg. | Priority |
---|---|---|---|---|---|
1 | 11.65 | 33.6 | 21.95 | 4.37 | 6 |
2 | 39.03 | 41.13 | 2.1 | 3.93 | 3 |
3 | 42.13 | 43.66 | 1.53 | 6.00 | 17 |
4 | 58.76 | 62.26 | 3.5 | 4.49 | 7 |
5 | 64.28 | 71.62 | 7.34 | 3.80 | 1 |
6 | 75.07 | 79.91 | 4.84 | 3.80 | 1 |
7 | 84.4 | 89.36 | 4.96 | 4.00 | 4 |
8 | 93.93 | 98.73 | 4.8 | 3.90 | 2 |
9 | 99.8 | 101.64 | 1.84 | 4.50 | 10 |
10 | 109.35 | 111.22 | 1.87 | 5.30 | 15 |
11 | 117.45 | 119.29 | 1.84 | 4.50 | 10 |
12 | 127 | 128.87 | 1.87 | 5.30 | 15 |
13 | 141.07 | 143 | 1.93 | 5.20 | 12 |
14 | 151.37 | 153.59 | 2.22 | 4.30 | 5 |
15 | 157.14 | 158.43 | 1.29 | 5.60 | 16 |
16 | 160.29 | 163.37 | 3.08 | 4.60 | 11 |
17 | 172.94 | 174.78 | 1.84 | 4.50 | 10 |
18 | 182.49 | 184.36 | 2.32 | 5.30 | 15 |
Total | 71.12 | 4.38 | - |
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Ohm, B.-S.; Jung, D.-H.; Lee, S.-H.; Choi, J.-Y.; Kim, Y.-M. Process Improvement and Application of Pavement Management System Based on Pavement Conditions in Jeju Island. Appl. Sci. 2022, 12, 12548. https://doi.org/10.3390/app122412548
Ohm B-S, Jung D-H, Lee S-H, Choi J-Y, Kim Y-M. Process Improvement and Application of Pavement Management System Based on Pavement Conditions in Jeju Island. Applied Sciences. 2022; 12(24):12548. https://doi.org/10.3390/app122412548
Chicago/Turabian StyleOhm, Byung-Sik, Dong-Hyuk Jung, Su-Hyung Lee, Ji-Young Choi, and Yeong-Min Kim. 2022. "Process Improvement and Application of Pavement Management System Based on Pavement Conditions in Jeju Island" Applied Sciences 12, no. 24: 12548. https://doi.org/10.3390/app122412548
APA StyleOhm, B.-S., Jung, D.-H., Lee, S.-H., Choi, J.-Y., & Kim, Y.-M. (2022). Process Improvement and Application of Pavement Management System Based on Pavement Conditions in Jeju Island. Applied Sciences, 12(24), 12548. https://doi.org/10.3390/app122412548