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The categorization of wind shift events using metar and personal weather station data

机译:使用元和个人气象站数据进行风移事件的分类

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Every day airport managers consistently analyze current and future weather conditions to determine whether their facility will be negatively impacted. From thunderstorms, to fog, to snow and ice, there is a multitude of weather events that can decrease the number of planes that an airport can handle in a given hour. One of the more important weather factors, and often overlooked, is wind, specifically wind shifts. On a daily basis, an airport will set its runway configuration based on the expected dominant wind flow across the area in order to maximize the efficiency of the terminal area. If the wind does not change direction over the course of the day, the airport is able operate at its optimum level, barring any other impactful weather event or a constant “bad” wind direction. If the wind does shift its direction, a change in the airport's runway configuration is required. This decision of when to change the runway configuration, however, is not always easy, and often times it can be a difficult and sometimes costly one. If the configuration of the runway is changed too late or too early in relation to the time of the wind shift, the throughput at the airport will decrease. To better understand these wind shifts, two different sources of weather observation data were investigated: METAR and Personal Weather Station (PWS). For all of 2012, METAR data for four airports were downloaded from the National Weather Service, and PWS data for those stations within 10 miles of Hartsfield-Jackson Atlanta International Airport (ATL) were downloaded from Weather Underground. The wind direction and wind speed observations were analyzed from both data sources to identify the occurrence of wind shift events at each station, and then each event was categorized based on its length. This study shows the differences in the length of wind shifts between stations, but also illustrates the advantages and disadvantages of using these data sources for categorizing wind s- ift events.
机译:每天机场管理人员都始终如一地分析当前和未来的天气状况,以确定他们的设施是否会受到负面影响。从雷暴,雾,雪和冰,有一个众多的天气事件,可以减少机场可以在给定小时内处理的飞机数量。一个更重要的天气因素之一,通常被忽视,是风,特别是风换档。每天,机场将根据该地区的预期主流流量设置其跑道配置,以最大限度地提高终端区域的效率。如果风在当天的过程中没有改变方向,机场能够以最佳水平运行,禁止任何其他有利于其他影响的天气事件或恒定的“坏”风向。如果风确实转移了方向,则需要一个机场跑道配置的变化。然而,何时改变跑道配置的决定并不总是容易的,并且通常它可能是一个困难的且有时昂贵的。如果跑道的配置变得太晚或者与风移的时间有关,则机场的吞吐量将减少。为了更好地了解这些风换档,调查了两个不同的天气观测数据来源:元和个人气象站(PWS)。在2012年全球的全国天气服务下载了四个机场的MEAR数据,距离Hartsfield-Jackson Atlanta International Airport(ATL)不到10英里的地区的PWS数据从地下的天气下载。从两个数据源分析风向和风速观测,以识别每个站的风移事件的发生,然后基于其长度对每个事件进行分类。本研究表明,车站之间的风变换长度的差异,但也说明了使用这些数据源来分类风S-IFT事件的优缺点。

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