Department of Biostatistics, School of Public Health and Tropical Medicine, Southern Medical University, Guangzhou, Guangdong 510515, China.
Department of Mathematics and Physics, School of Biomedical Engineering, Southern Medical University, Guangzhou, Guangdong 510515, China.
Environ Pollut. 2014 Jul;190:75-81. doi: 10.1016/j.envpol.2014.03.020. Epub 2014 Apr 15.
There is an increasing interest in spatial and temporal variation of air pollution and its association with weather conditions. We presented the spatial and temporal variation of Air Pollution Index (API) and examined the associations between API and meteorological factors during 2001-2011 in Guangzhou, China. A Seasonal-Trend Decomposition Procedure Based on Loess (STL) was used to decompose API. Wavelet analyses were performed to examine the relationships between API and several meteorological factors. Air quality has improved since 2005. APIs were highly correlated among five monitoring stations, and there were substantial temporal variations. Timescale-dependent relationships were found between API and a variety of meteorological factors. Temperature, relative humidity, precipitation and wind speed were negatively correlated with API, while diurnal temperature range and atmospheric pressure were positively correlated with API in the annual cycle. Our findings should be taken into account when determining air quality forecasts and pollution control measures.
人们越来越关注空气污染的时空变化及其与天气条件的关系。我们展示了 2001-2011 年期间中国广州空气污染指数(API)的时空变化,并研究了 API 与气象因素之间的关系。使用基于局部多项式拟合的季节性-趋势分解程序(STL)对 API 进行分解。进行小波分析以检验 API 与几种气象因素之间的关系。自 2005 年以来,空气质量有所改善。五个监测站的 API 高度相关,且存在大量的时间变化。API 与多种气象因素之间存在与时间尺度相关的关系。在年周期中,温度、相对湿度、降水和风速与 API 呈负相关,而日较差和大气压与 API 呈正相关。在确定空气质量预测和污染控制措施时,应考虑到我们的研究结果。