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A Bayesian Hierarchical Modeling Framework for Correcting Reporting Bias in the US Tornado Database

机译:贝叶斯等级建模框架,用于纠正美国龙卷风数据库中的报告偏见

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The Storm Prediction Center (SPC) tornado database, generated from NCEI's Storm Data publication, is indispensable for assessing U.S. tornado risk and investigating tornado-climate connections. Maximizing the value of this database, however, requires accounting for systemically lower reported tornado counts in rural areas owing to a lack of observers. This study uses Bayesian hierarchical modeling to estimate tornado reporting rates and expected tornado counts over the central United States during 1975-2016. Our method addresses a serious solution nonuniqueness issue that may have affected previous studies. The adopted model explains 73% (90%) of the variance in reported counts at scales of 50 km (100 km). Population density explains more of the variance in reported tornado counts than other examined geographical covariates, including distance from nearest city, terrain ruggedness index, and road density. The model estimates that approximately 45% of tornadoes within the analysis domain were reported. The estimated tornado reporting rate decreases sharply away from population centers; for example, while 90% of tornadoes that occur within 5 km of a city with population 100 000 are reported, this rate decreases to 70% at distances of 20-25 km. The method is directly extendable to other events subject to underreporting (e.g., severe hail and wind) and could be used to improve climate studies and tornado and other hazard models for forecasters, planners, and insurance/reinsurance companies, as well as for the development and verification of storm-scale prediction systems.
机译:从NCEI的Storm数据出版物产生的Storm预测中心(SPC)龙卷风数据库是评估美国龙卷风的风险和调查龙卷风 - 气候连接不可或缺的。然而,最大化该数据库的价值,需要在缺乏观察者的情况下系统地降低报告的农村地区的龙卷风计数。本研究采用贝叶斯等级建模来估算龙卷风报告率,并在1975 - 2016年期间在美国中部划分的龙卷风计数。我们的方法解决了可能影响以前研究的严重解决方案问题。所采用的模型解释了73%(& 90%)报告的尺度差异为50公里(100公里)。人口密度解释了报告的龙卷风计数的差异,而不是其他审查的地理协变量,包括距离最近城市,地形坚固指数和道路密度的距离。该模型估计,报告了分析域中大约45%的龙卷风。估计的龙卷风报告率从人口中心急剧下降;例如,虽然& 90%的龙卷风,在一个有人口和gt的城市不到5公里处发生;报告了100 000,该速率在20-25公里处的距离下降至70%。该方法可直接可扩展到经过监控(例如,严重的冰雹和风),可用于改善气候研究和龙卷风和其他危险模型,用于预报员,规划者和保险/再保险公司以及发展并验证风暴规模预测系统。

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