数据库
流离失所(心理学)
危害
断层(地质)
地震学
地质学
法律工程学
计算机科学
工程类
心理学
有机化学
化学
心理治疗师
作者
Alexandra Sarmiento,Danielle Madugo,A. Shen,Timothy Dawson,Chris Madugo,Stephen C. Thompson,Yousef Bozorgnia,Stéphane Baize,Paolo Boncio,Albert Kottke,Grigorios Lavrentiadis,Silvia Mazzoni,Chris Milliner,Fiia Nurminen,Francesco Visini
标识
DOI:10.1177/87552930241262766
摘要
New predictive models for fault displacement and surface rupture hazard analysis developed through the Fault Displacement Hazard Initiative (FDHI) research program require a high-quality empirical database to apply advanced statistical methods and improve hazard estimates. This article discusses the development and contents of the FDHI Project database. We systematically collected, reviewed, and organized fault displacement measurements, surface rupture maps, and supporting information from the scientific literature. A framework was developed and implemented to classify principal and distributed faulting. Best-estimate net displacement amplitudes were calculated from slip component measurements and quality codes were assigned to all net displacement values. The database contains 75 historical, surface-rupturing crustal earthquakes ranging from M 4.9 to 8.0. Thirty-five earthquakes have a strike-slip faulting mechanism, while 25 and 15 events are reverse/reverse-oblique and normal/normal-oblique, respectively. Although most of the earthquakes are from Western North America, Japan, and other active tectonic regions, there are nine reverse faulting events from the stable continental region of Australia. The database contains over 40,000 individual fault displacement measurements for various slip components from roughly 28,000 observation sites. Geographic coordinates are included for all data, and event-specific coordinate systems are provided for each earthquake that transform data into an along-strike dimension. Our new database provides a standardized collection of surface rupture and fault displacement data and metadata that is the result of a comprehensive effort to create a reliable and stable product for the FDHI model development teams and the geoscience community.
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