Optimization of Pavement Inspection Schedule with Traffic Demand Prediction

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In order to improve the current pavement inspection systems, many studies have attempted to produce a flexible inspection schedule by minimizing the lifecycle cost of pavement management system. However, these methods do not incorporate the risk of untimely inspection nor adopt the state-of-art intelligent transportation resources, such as traffic data from various infrastructures, flow prediction models with high accuracy, and empirical-mechanistic models for pavement deterioration process. Therefore, this paper proposes a framework to optimize a flexible inspection schedule within a risk boundary defined by pavement state prediction with traffic flow data and a more mechanistic deterioration model. The results validate the outperformance of the optimized inspection over two conventional inspection schemes-1-year and 2-year regular inspection. Also the optimized inspection is comparably more robust than the regular inspections with different traffic scenarios due to the uncertainty risk taken by regular inspections.
Publisher
Elsevier BV
Issue Date
2015-08
Language
English
Citation

11th International Conference of the International-Institute-for-Infrastructure-Resilience-and-Reconstruction (I3R2) - Complex Disasters and Disaster Risk Management, pp.95 - 103

ISSN
1877-0428
DOI
10.1016/j.sbspro.2016.04.013
URI
http://hdl.handle.net/10203/312879
Appears in Collection
CE-Conference Papers(학술회의논문)
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