Impact of ASOS Real-Time Quality Control on Convective Gust Extremes in the USA

N. Cook
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引用次数: 1

Abstract

Most damage to buildings across the contiguous United States, in terms of number and total cost, is caused by gusts in convective events associated with thunderstorms. Their assessment relies on the integrity of meteorological observations. This study examines the impact on risk due to valid gust observations culled erroneously by the real-time quality control algorithm of the US Automated Surface Observation System (ASOS) after 2013. ASOS data before 2014 are used to simulate the effect of this algorithm at 450 well-exposed stations distributed across the contiguous USA. The peak gust is culled in around 10% of these events causing significant underestimates of extreme gusts. The full ASOS record, 2000–2021, is used to estimate and map the 50-year mean recurrence interval (MRI) gust speeds, the conventional metric for structural design. It is concluded that recovery of erroneously culled observations is not possible, so the only practical option to eliminate underestimation is to ensure that the 50-year MRI gust speed at any given station is not less than the mean for nearby surrounding stations. This also affects stations where values are legitimately lower than their neighbors, which represents the price that must be paid to eliminate unacceptable risk.
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ASOS实时质量控制对美国对流阵风极端天气的影响
就数量和总成本而言,美国相邻地区建筑物的大部分损坏是由与雷暴相关的对流事件中的阵风造成的。他们的评估依赖于气象观测的完整性。本研究考察了2013年后美国自动地面观测系统(ASOS)实时质量控制算法错误剔除有效阵风观测值对风险的影响。利用2014年以前的ASOS数据,在分布在美国连续地区的450个暴露良好的台站模拟该算法的效果。峰值阵风被剔除在这些事件的10%左右,导致严重低估了极端阵风。2000-2021年的完整ASOS记录用于估计和绘制50年平均复发间隔(MRI)阵风速度,这是结构设计的常规指标。结论是,不可能恢复错误剔除的观测值,因此消除低估的唯一实际选择是确保任何给定站点的50年MRI阵风速度不小于附近周围站点的平均值。这也影响到那些价值比邻居低的加油站,这代表了必须支付的价格来消除不可接受的风险。
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