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Analysis of a Beijing Heavy Snowfall Related to an Inverted Trough in November 2009

机译:2009年11月与倒槽相关的北京大雪分析

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This paper studies a heavy snowfall in Beijing that took place on 1 November 2009. The date of the snowfall was about one month earlier than the average. The National Centers for Environmental Prediction (NCEP) reanalysis data, conventional data, and Automatic Weather Station (AWS) data are utilized to explore the reasons for the snowfall and the influencing systems. The main conclusions are as follows: (1) It is revealed from the average geopotential height and average temperature fields at 500 hPa that the large scale circulation in November 2009 was favorable to snowfall. The cold-dry air from West Siberia and the warm-moist air from the Bay of Bengal converged in North China. In addition, it was found from the average moisture flux field at 700 hPa that the main water vapor source was in the Bay of Bengal. (2) Not only the “return current”, as usually accepted, but also the inverted trough on the current had an important contribution to the snowfall. The inverted trough could produce the obvious upward motion that is an important environmental condition of snowfalls. (3) More attention should be paid to mesoscale systems such as mesolows during the cold season because of their importance, though they do not occur as frequently as in the warm season. It should be pointed out that AWS data are very useful in mesoscale system analysis during both warm and cold seasons.
机译:本文研究了2009年11月1日在北京发生的大雪。降雪的日期比平均降雪的日期早了大约一个月。利用国家环境预测中心(NCEP)的再分析数据,常规数据和自动气象站(AWS)数据来探讨降雪的原因和影响系统。主要结论如下:(1)从500 hPa的平均地势高度和平均温度场可以看出,2009年11月的大尺度环流有利于降雪。来自西西伯利亚的冷干空气和来自孟加拉湾的热湿空气在华北汇合。另外,从700 hPa的平均水分通量场发现,主要的水蒸气源在孟加拉湾。 (2)不仅通常所接受的“回流”,而且回流的低谷对降雪都有重要贡献。倒槽可能产生明显的向上运动,这是降雪的重要环境条件。 (3)由于它们的重要性,应该更加关注中尺度系统,例如在寒冷季节中的中低尺度,尽管它们的发生频率不如温暖季节中的高。应该指出的是,在温暖和寒冷的季节,AWS数据在中尺度系统分析中都非常有用。

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