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Using Wavelet Analysis to Detect Tornadoes from Doppler Radar Radial-Velocity Observations

机译:使用小波分析从多普勒雷达径向速度观测中检测龙卷风

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A wavelet-based algorithm is developed to detect tornadoes from Doppler weather radar radial-velocity observations. Within this algorithm, a relative region-to-region velocity difference (RRVD) is defined based on the scale- and location-dependent wavelet coefficients and this difference represents the relative magnitude of the radial velocity shear between two adjacent regions of different scales. The RRVD fields of an idealized tornado and a realistic tornado from a high-resolution numerical simulation are analyzed first. It is found that the value of RRVD in the tornado region is significantly larger than those at other locations and large values of RRVD exist at more than one scale. This characteristic forms the basis of the new algorithm presented in this work for identifying tornadoes. Different from traditional tornadic vortex signature detection algorithms that typically rely on the velocity difference between adjacent velocity gate pairs at a single spatial scale, the new algorithm examines region-to-region radial wind shears at a number of different spatial scales. Multiscale regional wind shear examination not only can be used to discard a nontornadic vortex signature to reduce the false alert rate of tornado detection but also has the ability of capturing tornadic signatures at various scales for improving the detection and warning. The potential advantage of the current algorithm is demonstrated by applying it to the radar data collected by Oklahoma City, Oklahoma (KTLX), Weather Surveillance Radar-1988 Doppler (WSR-88D) on 8 May 2003 for a central Oklahoma tornado case.
机译:开发了一种基于小波的算法,以从多普勒天气雷达径向速度观测中检测龙卷风。在该算法中,基于比例和位置相关的小波系数定义了相对区域间速度差异(RRVD),该差异表示不同比例的两个相邻区域之间的径向速度剪切的相对大小。首先分析了高分辨率龙卷风的理想龙卷风和现实龙卷风的RRVD场。发现龙卷风区域的RRVD值明显大于其他位置的RRVD值,并且在超过一个尺度上存在较大的RRVD值。此特征构成了本文中用于识别龙卷风的新算法的基础。与通常依赖单个空间尺度上相邻速度门对之间的速度差的传统涡流涡旋特征检测算法不同,该新算法在许多不同的空间尺度上检查区域到区域的径向风切变。多尺度区域风切变检查不仅可以用来丢弃非龙卷风的涡旋信号以降低龙卷风检测的误报率,而且还具有捕获各种规模的龙卷风信号的能力,从而改善了检测和预警的能力。当前算法的潜在优势通过将其应用于俄克拉荷马州俄克拉荷马市(KTLX),2003年5月8日针对俄克拉荷马州中部龙卷风的天气监视雷达1988多普勒(WSR-88D)收集的雷达数据来证明。

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