Deterioration Model for Reinforced Concrete Bridge Girders Based on Survival Analysis
Abstract
:1. Introduction
- To analyze the deterioration of the main girder under different CRs and assess the service life of the main girder;
- To seek the deterioration pattern of the performance of the main girders under different influencing factors;
- To compare the deterioration of the performance of the main girders with that of the superstructure and the whole bridge.
2. Literature Review
3. Methods
3.1. Survival Analysis
3.2. Cox Regression Analysis
3.3. Weibull Distribution
4. Data Preparation
4.1. Data Profile
4.2. Data Pre-processing
- According to Table 2, convert BCI scores to CRs.
- Locate null values in the dataset.
- Check the CR values of the year before and after the year in which the null value is located, and if they are all the same, replace the null value with that CR value. Otherwise, consider the record invalid and deleted it from the dataset.
- If the CR values change from D or E to A in the adjacent year, reset the age of the bridge after the change to 1. That is, consider the bridge as new after major repairs or reconstruction because bridges in D and E must undergo major repairs or reconstruction according to Shanghai’s bridge management regulations.
- If the CR values of adjacent years do not have a monotonically decreasing trend without a maintenance record, delete the record because the fluctuation of CR value at this time may be an inspection error or even a mistake.
- Set a reasonable range for the deterioration rate of bridge performance based on engineering experience [20]. (For example, urban bridges in China are generally designed for a life of 50–100 years [65]; hence, a bridge rating that deteriorates from grade A to grade D is typically no less than 20 years, and it is unlikely that a bridge CR will maintain an A rating for more than 40 years.).
- Mark the censored data in the inspection record dataset.
5. Results and Discussion
5.1. Processed Dataset
5.2. Parameter Estimation for Weibull Distribution
5.3. Survival Curve and Analysis
- Area factor: the area in which the bridge is located (suburban or central urban areas, which may reflect different maintenance budget levels).
- Structure factor: the structural type of the main girder (prestressed or non-prestressed reinforced concrete).
- Road factor: the grade of the road on which the bridge is located (usually related to traffic level, higher road grade means more traffic).
- Position factor: whether the main girder is located on the outer side of the superstructure (reflecting the degree of contact between the main girder and the atmospheric environment).
5.4. Cox Model Parameters
5.5. Life Prediction
6. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Bridge Type | Bridge Parts | Weight |
---|---|---|
Girder bridge | Deck System | 0.15 |
Superstructure | 0.40 | |
Substructure | 0.45 |
Rating | State | BCI Score | Maintenance Recommendations |
---|---|---|---|
A | Intact | [90, 100] | Routine maintenance |
B | Good | [80, 90) | Routine maintenance or minor repair |
C | Qualified | [66, 80) | Minor repair |
D | Bad | [50, 66) | Medium or major repair |
E | Dangerous | [0, 50) | Major repair or reconstruction |
Year | Overall Data Records | Valid Data Records |
---|---|---|
2007 | 1211 | 841 |
2008 | 2731 | 2356 |
2009 | 2641 | 2276 |
2010 | 3003 | 2566 |
2011 | 2939 | 2582 |
2012 | 2889 | 2498 |
2013 | 3166 | 2708 |
2014 | 3103 | 2683 |
2015 | 3170 | 2730 |
2016 | 3342 | 2871 |
2017 | 3252 | 2779 |
2018 | 3313 | 2853 |
2019 | 3359 | 2764 |
2020 | 3332 | 2817 |
Total | 41,451 | 35,324 |
CR | Complete Records | Right-Censored | Left-Censored |
---|---|---|---|
A | 1898 | 1545 | 89 |
B | 1602 | 673 | 67 |
C | 1312 | 477 | 35 |
D | 623 | 103 | 31 |
CR | Average Expectation | Standard Deviation | ||
---|---|---|---|---|
A | 29.292 | 1.878 | 26.003 | 14.386 |
B | 25.016 | 1.771 | 22.266 | 12.992 |
C | 22.240 | 1.358 | 20.372 | 15.167 |
D | 20.402 | 1.402 | 18.591 | 13.436 |
Variable | Regression Coefficient | HR | Confidence Interval of HR |
---|---|---|---|
Central Urban Area vs. Suburban | −0.318 | 0.728 | [0.624, 0.832] |
Prestressed vs. Non-prestressed | 0.151 | 1.163 | [1.071, 1.255] |
Arterial Road vs. Branch Road | −0.445 | 0.641 | [0.495, 0.787] |
Secondary Trunk Road vs. Branch Road | −0.124 | 0.884 | [0.779, 0.989] |
Side Girder vs. Inner Girder | 0.369 | 1.446 | [1.374, 1.518] |
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Li, L.; Lu, Y.; Peng, M. Deterioration Model for Reinforced Concrete Bridge Girders Based on Survival Analysis. Mathematics 2022, 10, 4436. https://doi.org/10.3390/math10234436
Li L, Lu Y, Peng M. Deterioration Model for Reinforced Concrete Bridge Girders Based on Survival Analysis. Mathematics. 2022; 10(23):4436. https://doi.org/10.3390/math10234436
Chicago/Turabian StyleLi, Li, Yu Lu, and Miaojuan Peng. 2022. "Deterioration Model for Reinforced Concrete Bridge Girders Based on Survival Analysis" Mathematics 10, no. 23: 4436. https://doi.org/10.3390/math10234436
APA StyleLi, L., Lu, Y., & Peng, M. (2022). Deterioration Model for Reinforced Concrete Bridge Girders Based on Survival Analysis. Mathematics, 10(23), 4436. https://doi.org/10.3390/math10234436