Analysis of Model Thermal Profile Forecasts Associated with Winter Mixed Precipitation within the United States Mid-Atlantic Region

IF 0.8 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Operational Meteorology Pub Date : 2022-03-04 DOI:10.15191/nwajom.2022.1001
A. Ellis, S. Keighton, Stephanie E. Zick, Andrew S. Shearer, Casey E. Hockenbury, Anita Silverman
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引用次数: 1

Abstract

Winter mixed-precipitation events across the mid-Atlantic region of the United States from 2013–2014 through 2018–2019 were used to analyze common short-term model forecasts of vertical atmospheric thermal structure. Using saturated forecast soundings of the North American Mesoscale (NAM), higher-resolution nested NAM (NAMnest), and the Rapid Refresh models—corresponding with observed warm-nose precipitation events (WNPEs)—several thermal metrics formed the basis of the analysis of observed and forecast soundings, including Bourgouin positive and negative areas. While the three models accurately forecast the general thermal structure well during WNPEs, a warm bias is evident within each. Well forecast are maximum and minimum temperatures within the warm nose and surface-based cold layer, respectively, but the cold layer is commonly too thin for each of the models, and the warm nose is regularly too thick, particularly within NAM and NAMnest forecasts. Forecasts of a cold layer that is too shallow tend to coincide with observations of stronger synoptic-scale upward motion, a deeper cold surface-based layer, and a higher isentropic surface. Forecasts of a warm nose that is too thick tend to coincide with observations of weaker upward motion, a shallower cold surface-based layer, and a lower isentropic surface across the region. Two-thirds of precipitation-type estimates from model soundings agreed with those derived from observed soundings, with the remaining third predominantly representing a warm bias in precipitation type.
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与美国中大西洋地区冬季混合降水相关的模式热廓线预报分析
使用2013-2014年至2018-2019年美国大西洋中部地区的冬季混合降水事件来分析垂直大气热结构的常见短期模型预测。使用北美中尺度(NAM)的饱和预报测深、更高分辨率的嵌套NAM(NAMnest)和快速刷新模型——与观测到的暖鼻降水事件(WNPE)相对应——几个热指标构成了观测和预报测深分析的基础,包括布尔古因正区和负区。虽然这三个模型很好地预测了WNPE期间的总体热结构,但每个模型中都存在明显的暖偏。好的预测分别是暖鼻和基于表面的冷层内的最高和最低温度,但对于每个模型来说,冷层通常都太薄,而暖鼻通常太厚,特别是在NAM和NAMnest预测中。对太浅的冷层的预测往往与更强的天气尺度向上运动、更深的冷面层和更高的等熵面的观测相一致。对太厚的暖鼻的预测往往与对该地区较弱的向上运动、较浅的冷面层和较低的等熵面的观测相吻合。根据模型探测得出的降水类型估计值中,有三分之二与根据观测到的探测得出的一致,其余三分之一主要代表降水类型中的暖偏。
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来源期刊
Journal of Operational Meteorology
Journal of Operational Meteorology METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
2.40
自引率
0.00%
发文量
4
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