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Correlation and principal component regression analysis for studying air quality and meteorological elements in Wuhan, China

机译:研究武汉空气质量和气象要素的相关性和主成分回归分析

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The states of human health and the environment are closely related to air quality (AQ). Further, in addition to pollutant emissions, meteorological elements are key factors that affect AQ. In this study, variations in the air quality index (AQI) were analyzed; the relationships between AQI and meteorological elements during 2013-2017 in Wuhan were examined, using the Pearson correlation coefficient (PCC) technique. Meanwhile, the principal component regression (PCR) technique was used to predict the daily AQI based on the previous day's AQI and five meteorological variables. An obvious seasonal pattern was seen in the AQI variations. Temperature, relative humidity, precipitation, and wind speed were negatively correlated with AQI, while atmospheric pressure was positively correlated with AQI for the entire study period. The performance of the PCR model was evaluated using different statistical indicators. The results showed that the PCR model could predict the daily AQI effectively at all six monitoring stations with determination coefficient (R2) values of 0.549,0.563,0.561,0.596,0.534, and 0.602, respectively.
机译:人类健康和环境状况与空气质量(AQ)密切相关。此外,除了污染物排放外,气象要素也是影响空气质量的关键因素。在这项研究中,分析了空气质量指数(AQI)的变化。利用Pearson相关系数(PCC)技术研究了武汉市2013- 2017年AQI与气象要素之间的关系。同时,基于前一天的AQI和五个气象变量,使用主成分回归(PCR)技术预测每日的AQI。在空气质量指数变化中看到了明显的季节性模式。在整个研究期间,温度,相对湿度,降水和风速与AQI呈负相关,而大气压力与AQI呈正相关。使用不同的统计指标评估PCR模型的性能。结果表明,PCR模型可以有效地预测所有六个监测站的每日AQI,其确定系数(R2)值分别为0.549、0.563、0.561、0.596、0.534和0.602。

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