ASADI Yasaman, SAMANY Najmeh Neysani, EZIMAND Keyvan. 2019: Seismic vulnerability assessment of urban buildings and traffic networks using fuzzy ordered weighted average. Journal of Mountain Science, 16(3): 677-688. DOI: 10.1007/s11629-017-4802-4
Citation: ASADI Yasaman, SAMANY Najmeh Neysani, EZIMAND Keyvan. 2019: Seismic vulnerability assessment of urban buildings and traffic networks using fuzzy ordered weighted average. Journal of Mountain Science, 16(3): 677-688. DOI: 10.1007/s11629-017-4802-4

Seismic vulnerability assessment of urban buildings and traffic networks using fuzzy ordered weighted average

  • Urban buildings and urban traffic network are considered as the vital arteries of cities which have particular effects especially after the crisis in the search and rescue operations. The aim of this study is to determine the vulnerability of urban areas especially, buildings and traffic networks using multicriteria geographic information systems and decisionmaking methods. As there are many effective criteria on the seismic vulnerability that they have uncertain and vague properties, the method of this paper is applying fuzzy ordered weighted average (OWA) to model the seismic vulnerability of urban buildings and traffic networks in the most optimistic and pessimistic states. The study area is district 6 of Tehran that is affected by the four major faults, and thus will be threatened by the earthquakes. The achieved results illustrated the vulnerability with different degrees of risk levels including very high, high, medium, low and very low. The results show that in the most optimistic case 14% and in the pessimistic case 1% of buildings tolerate in very low vulnerability. The vulnerability of urban street network also indicates that in the optimistic case 12% and in the pessimistic case at most 9% of the area are in appropriate condition and the North and North-East of the study area are more vulnerable than South of it.
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