A Radar-Based 10-year Climatology of Convective Snow Events in Central Pennsylvania

Karl Schneider, Kelly Lombardo, M. Kumjian, Kevin Bowley
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Abstract

Convective snow (CS) presents a significant hazard to motorists and is one of the leading causes of weather-related fatalities on Pennsylvania roadways. Thus, understanding environmental factors promoting CS formation and organization is critical for providing relevant and accurate information to those impacted. Prior research has been limited, mainly focusing on frontal CS bands often called “snow squalls;” thus, these studies do not account for the diversity of CS organizational modes that is frequently observed, highlighting a need for a robust climatology of broader CS events. To identify such events, a novel, radar-based CS detection algorithm was developed and applied to WSR-88D radar data from 10 cold seasons in central Pennsylvania, during which 159 cases were identified. Distinct convective organization modes were identified: linear (frontal) snow squalls, single cells, multicells, and streamer bands. Each algorithm-flagged radar scan containing CS was manually classified as one of these modes. Interestingly, the moststudied frontal mode only occurred < 5% of the time, whereas multicellular modes dominated CS occurrence. Using the times associated with each CS mode, synoptic and local environmental information from model analyses were investigated. Key characteristics of CS environments compared to null cases include a 500-hPa trough in the vicinity, lower-tropospheric conditional instability, and sufficient moisture. Environments favorable for the different CS modes featured statistically significant differences in the 500-hPa trough axis position, surface-based CAPE, and the unstable layer depth, among others. These results provide insights into forecasting CS mode, explicitly presented in a forecasting decision tree.
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基于雷达的宾夕法尼亚州中部对流性降雪事件 10 年气候图
对流性积雪(CS)对驾车者造成了极大的危害,也是宾夕法尼亚州公路上与天气有关的死亡事故的主要原因之一。因此,了解促进 CS 形成和组织的环境因素对于向受影响者提供相关的准确信息至关重要。之前的研究非常有限,主要集中在通常被称为 "雪旋 "的锋面 CS 波段上;因此,这些研究并没有考虑到经常观察到的 CS 组织模式的多样性,这凸显了对更广泛 CS 事件的强大气候学研究的需求。为了识别此类事件,我们开发了一种基于雷达的新型 CS 检测算法,并将其应用于宾夕法尼亚州中部 10 个寒冷季节的 WSR-88D 雷达数据,在此期间共识别出 159 个案例。确定了不同的对流组织模式:线性(锋面)雪旋风、单细胞、多细胞和流带。包含 CS 的每个算法标记雷达扫描都被人工分类为这些模式之一。有趣的是,研究最多的锋面模式只出现了小于 5%的时间,而多细胞模式则是 CS 出现的主要模式。利用与每种 CS 模式相关的时间,研究了来自模式分析的同步和局部环境信息。与无效情况相比,CS 环境的主要特征包括附近有 500 hPa 低槽、低对流层条件不稳定和充足的水汽。有利于不同 CS 模式的环境在 500 hPa 低涡轴位置、基于地表的 CAPE 和不稳定层深度等方面存在显著的统计学差异。这些结果为预报 CS 模式提供了启示,并以预报决策树的形式明确呈现出来。
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