Abstract
This study aims to develop a decision-making support system for managing aged road facilities in a target road network based on seismic performance evaluation. For this purpose, the seismic fragility considering aging effect is analyzed for bridges, tunnels, retaining walls, and slopes to assess the direct damage to individual road facilities, as described in the companion paper. In this paper, based on the seismic fragilities of road facilities, the degradation of the road network’s seismic performance and social and economic resilience is evaluated. The decision support system is then developed based on the seismic risk assessment method (SRA) for the seismic management of old road facilities suitable for domestic conditions. The SRA method includes the calculation of direct and indirect damage of road networks, the assessment of socio-economic resilience to disaster in South Korea, and the basis for decision-making. In addition, a geospatial information-based software for repair and reinforcement decisions is developed. The developed decision-making support software is verified by using Pohang city located in the East part of Korea as a test-bed example.
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Acknowledgments
This research was supported by a grant (21SCIP-B146946-04) from Smart Civil Infrastructure Research Program funded by Ministry of Land, Infrastructure and Transport of Korean government. The authors also would like to appreciate the contributions of Kwon Oh-Sung, Jong-Han Lee, Seong-Hoon Jeong, Jong-Keol Song, **sup Kim, Byung Ho Choi and Seungjun Kim to finalize this paper. The author Junho Song appreciates the support by the Institute of Construction and Environmental Engineering at Seoul National University.
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Kim, D., Song, J., Lee, YJ. et al. Seismic Performance Management of Aging Road Facilities in Korea: Part 2 − Decision-making Support Technology and Its Application. KSCE J Civ Eng 28, 1889–1902 (2024). https://doi.org/10.1007/s12205-023-0601-3
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DOI: https://doi.org/10.1007/s12205-023-0601-3