GIS-based seismic hazard prediction system for urban earthquake disaster prevention planning

Y. Zhai, Shenglong Chen, Qianwen Ouyang
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引用次数: 16

Abstract

It is of great significance to conduct seismic hazard prediction in mitigating the damage caused by earthquakes in urban area. In this study, a geographic information system (GIS)-based seismic hazard prediction system for urban earthquake disaster prevention planning is developed, incorporating structural vulnerability analysis, program development, and GIS. The system is integrated with proven building vulnerability analysis models, data search function, spatial analysis function, and plotting function. It realizes the batching and automation of seismic hazard prediction and the interactive visualization of predicted results. Finally, the system is applied to a test area and the results are compared with results from previous studies, the precision of which was improved because the construction time of the building was taken into consideration. Moreover, the system is of high intelligence and minimal manual intervention. It meets the operating requirements of non-professionals and provides a feasible technique and operating procedure for large-scale urban seismic hazard prediction. Above all, the system can provide data support and aid decision-making for the establishment and implementation of urban earthquake disaster prevention planning.
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基于gis的城市地震防灾规划震害预测系统
开展地震灾害预测对减轻城市地震灾害具有重要意义。本研究结合结构易损性分析、程序开发和GIS技术,开发了基于地理信息系统(GIS)的城市地震防灾规划震害预测系统。该系统集成了成熟的建筑脆弱性分析模型、数据检索功能、空间分析功能和绘图功能。实现了地震灾害预测的批量、自动化和预测结果的交互式可视化。最后,将该系统应用于某试验区,并与以往的研究结果进行了比较,由于考虑了建筑物的施工时间,提高了系统的精度。该系统智能化程度高,人工干预少。满足非专业人员的操作要求,为大规模城市地震灾害预测提供了可行的技术和操作流程。总之,该系统可以为城市地震防灾规划的制定和实施提供数据支持和辅助决策。
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