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Statistical Tests of Taylor's Hypothesis: An Application to Precipitation Fields

机译:泰勒假设的统计检验:在降水场中的应用

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The Taylor hypothesis (TH) as applied to rainfall is a proposition about the space-time covariance structure of the rainfall field. Specifically, it supposes that if a spatiotemporal precipitation field with a stationary covariance Cov(r, tau) in both space r and time t moves with a constant velocity v, then the temporal covariance at time lag tau is equal to the spatial covariance at space lag r = v tau that is, Cov(0, tau) 5 Cov(v tau, 0). Qualitatively this means that the field evolves slowly in time relative to the advective time scale, which is often referred to as the frozen field hypothesis. Of specific interest is whether there is a cutoff or decorrelation time scale for which the TH holds for a given mean flow velocity v. In this study, the validity of the TH is tested for precipitation fields using high-resolution gridded Next Generation Weather Radar (NEXRAD) reflectivity data produced by the WSI Corporation by employing two different statistical approaches. The first method is based on rigorous hypothesis testing, while the second is based on a simple correlation analysis, which neglects possible dependencies between the correlation estimates. Radar reflectivity values are used from the southeastern United States with an approximate horizontal resolution of 4 km 3 4 km and a temporal resolution of 15 min. During the 4-day period from 2 to 5 May 2002, substantial precipitation occurs in the region of interest, and the motion of the precipitation systems is approximately uniform. The results of both statistical methods suggest that the TH might hold for the shortest space and time scales resolved by the data (4 km and 15 min) but that it does not hold for longer periods or larger spatial scales. Also, the simple correlation analysis tends to overestimate the statistical significance through failing to account for correlations between the covariance estimates.
机译:应用于降雨的泰勒假设(TH)是关于降雨场的时空协方差结构的命题。具体来说,它假设如果在空间r和时间t上均具有固定协方差Cov(r,tau)的时空降水场以恒定速度v移动,则时滞tau的时间协方差等于空间的空间协方差滞后r = v tau,即Cov(0,tau)5 Cov(v tau,0)。从质上讲,这意味着该场在时间上相对于对流时间尺度缓慢发展,这通常被称为冻结场假说。对于给定的平均流速v,TH是否具有截断或解相关的时间标度是特别有意义的。在这项研究中,使用高分辨率网格化的下一代气象雷达对TH的有效性进行了降雨场测试(由WSI Corporation通过两种不同的统计方法生成的反射率数据。第一种方法基于严格的假设检验,而第二种方法则基于简单的相关性分析,而忽略了相关性估计之间可能的依赖性。美国东南部使用的雷达反射率值的水平分辨率约为4 km 3 4 km,时间分辨率为15 min。在2002年5月2日至5日的4天期间,在感兴趣的区域中出现大量降水,并且降水系统的运动大致均匀。两种统计方法的结果均表明,TH可能适用于由数据解析的最短的空间和时间范围(4 km和15分钟),但不适用于更长的时间范围或更大的空间范围。同样,简单的相关分析往往会由于未能考虑协方差估计之间的相关性而高估了统计显着性。

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