基于回归的区域灾害一致性风险评估情景地震选择

IF 3.1 2区 工程技术 Q2 ENGINEERING, CIVIL Earthquake Spectra Pub Date : 2023-09-25 DOI:10.1177/87552930231197626
Pengfei Wang, Zehan Liu, Scott J Brandenberg, Paolo Zimmaro, Jonathan P Stewart
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引用次数: 0

摘要

传统的概率地震灾害分析(PSHA)经常在许多地点独立重复,以形成统一的灾害图。然而,这样的地图不适合评估空间分布的基础设施的风险,因为没有一个单一的事件会在一个广泛的地区产生统一的危险震动强度。对于PSHA中使用的震源表征模型中考虑的每个事件,单独分析空间分布式基础设施系统是一种鲁棒但计算成本高的方法。当考虑许多场景事件时,这种方法可能不实用。另一种选择是选择一个可管理的事件子集,总的来说,它大致匹配跨空间分布系统的单个或多个地面运动强度测量的危害,保留不同震级和距离对PSHA的贡献。我们提出了一种灵活有效的基于回归的方法,该方法使用基于点的PSHA结果作为输入来满足这些要求。该方法以南加州分布式基础设施的案例研究为例进行了说明。通过将该方法与文献中的混合整数线性优化方法进行比较,证明了该方法的有效性。
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Regression-based scenario earthquake selection for regional hazard-consistent risk assessments
Conventional probabilistic seismic hazard analysis (PSHA) is often repeated at many locations independently to develop uniform hazard maps. However, such maps are unsuitable for assessing risk to spatially distributed infrastructure because no single event will produce uniform hazard shaking intensities across a broad region. A robust but computationally expensive approach is to analyze spatially distributed infrastructure systems separately for every event considered in the seismic source characterization model used in the PSHA. This approach may not be practical when many scenario events are considered. An alternative is to select a manageable event subset that, in aggregate, approximately matches the hazard for single or multiple ground motion intensity measures across the spatially distributed system preserving contributions of different magnitudes and distances to the PSHA. We present a flexible and efficient regression-based method that meets these requirements using point-based PSHA results as inputs. The approach is illustrated with a case study of distributed infrastructure in southern California. We demonstrate the efficiency of the method by comparing it to a mixed-integer linear optimization method from the literature.
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来源期刊
Earthquake Spectra
Earthquake Spectra 工程技术-工程:地质
CiteScore
8.40
自引率
12.00%
发文量
88
审稿时长
6-12 weeks
期刊介绍: Earthquake Spectra, the professional peer-reviewed journal of the Earthquake Engineering Research Institute (EERI), serves as the publication of record for the development of earthquake engineering practice, earthquake codes and regulations, earthquake public policy, and earthquake investigation reports. The journal is published quarterly in both printed and online editions in February, May, August, and November, with additional special edition issues. EERI established Earthquake Spectra with the purpose of improving the practice of earthquake hazards mitigation, preparedness, and recovery — serving the informational needs of the diverse professionals engaged in earthquake risk reduction: civil, geotechnical, mechanical, and structural engineers; geologists, seismologists, and other earth scientists; architects and city planners; public officials; social scientists; and researchers.
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