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Main Factors Influencing Winter Visibility at the Xinjin Flight College of the Civil Aviation Flight University of China

机译:影响中国民航飞行大学新金岛冬季知名度的主要因素

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Utilizing routine hourly meteorological data of Xinjin Airport and daily average PM2.5 concentration data for Chengdu, winter visibility characteristics at Xinjin Airport between 2013 and 2017 and their relationship with meteorological conditions and particulate matter were analyzed. Between 2013 and 2017, the average winter visibility in Xinjin Airport was lowest in January, followed by that in December. The occurrence frequency of haze days in winter was much higher than that of nonhaze (clean) days, being 90.2% and 9.8%, respectively. These were mainly mild haze days, with an occurrence frequency of 44.4%, while severe haze days occurred the least, with a frequency of 7.7%. The linear and nonlinear relationships between winter visibility, meteorological factors, and PM2.5 were measured using daily data in winter from 2013 to 2016. The linear correlation between PM2.5 concentration and visibility was the most evident, followed by that of relative humidity. Visibility had a higher nonlinear correlation with PM2.5 concentration, relative humidity, and dew point depression. When relative humidity was between 70% and 80%, the negative correlation between visibility and PM2.5 concentration was the most significant and could be described by a power function. The multivariate linear regression equation of PM2.5 concentration and relative humidity could account for 65.9% of the variation in winter visibility, and the multivariate nonlinear regression equation of PM2.5 concentration, relative humidity, and wind speed could account for 68.1% of the variation in winter visibility. These two equations reasonably represented the variation in winter visibility in 2017.
机译:分析了利用新津机场的日常时空数据和每日平均PM2.5的成都集中数据,2013年至2017年间新金机场的冬季可见性特征及其与气象条件和颗粒物质的关系。 2013年至2017年间,新金机场的平均冬季可见度在1月份最低,其次是12月。冬季雾度的发生频率远高于非吸附(清洁)天,分别为90.2%和9.8%。这些主要是温和的阴霾天,出现频率为44.4%,而严重的阴霾日最少发生,频率为7.7%。从2013年到2016年冬季使用日常数据测量冬季可见性,气象因素和PM2.5之间的线性和非线性关系。PM2.5浓度和能见度之间的线性相关性最明显,其次是相对湿度的相对湿度。能见度与PM2.5浓度,相对湿度和露点抑郁具有更高的非线性相关性。当相对湿度在70%至80%之间时,可视性和PM2.5浓度之间的负相关是最重要的,并且可以通过功率功能来描述。 PM2.5浓度和相对湿度的多变量线性回归方程可以占冬季可见度变化的65.9%,以及PM2.5浓度,相对湿度和风速的多变量非线性回归方程可以占68.1%的68.1%冬季可见性的变化。这两个方程合理地代表了2017年冬季能见度的变化。

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