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http://dx.doi.org/10.21289/KSIC.2021.24.6.861

Preliminary Analysis on Artificial Intelligence-based Methodology for Selecting Repair and Rehabilitation Methods of Bridges  

Kim, Jonghyeob (Department of Construction Policy Research, Korea Institute of Civil Engineering and Building Technology (KICT))
Jung, In-Su (Department of Construction Policy Research, Korea Institute of Civil Engineering and Building Technology (KICT))
Yun, Won-Gun (Department of Construction Policy Research, Korea Institute of Civil Engineering and Building Technology (KICT))
Kim, Jung-Yeol (Dept. of Architecture, Inha University)
Park, In-Seok (Gyeonggi Research Institute Gyeonggi Public Investment Management Center)
Publication Information
Journal of the Korean Society of Industry Convergence / v.24, no.6_2, 2021 , pp. 861-872 More about this Journal
Abstract
An efficient cost management is important for the domestic social overhead capital(SOC) based on a long lifecycle after 30 years since completion. Maintenance in South Korea have had the restrictions of consistency and suitability of decision-making by the establishment of a budget plan based on the company estimate and repair and reinforcement methods determined by the inspection and diagnosis engineers' subjective determination for each facility. To resolve this issue, the Korea Institute of Civil Engineering and Building Technology is currently in development of a methodology to propose an optimum maintenance method according to the damage of components by artificial intelligence. This study has deduced the primary factors by analyzing information generated during bridge maintenance and management as a prior step for the development of technologies, and conducted a preliminary analysis to select the optimum artificial intelligence technology.
Keywords
Repair and Rehabilitation Method; Bridge; Maintenance; Artificial Intelligence;
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