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A detrended cross-correlation analysis of meteorological and API data in Nanjing, China

机译:南京市气象和API数据的去趋势互相关分析

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The cross correlation between daily meteorological data and air pollution index (API) records in Nanjing during the past 12 years is studied by means of a detrended cross-correlation analysis (DCCA). In this study, we use statistical significance tests and power-law statistical tests to verify cross correlation between meteorological data and the API. Through calculating the DCCA cross correlation coefficient rho(DCCA), we intend to obtain a range of cross correlation levels between the meteorological data and the API at different time scales. Utilizing the multifractal detrended cross correlation analysis (MF-DCCA) and algorithm-multifractal cross correlation analysis (MF-CCA) proposed by Oswiecimka, we observe multifractal cross-correlation behavior between meteorological factors and the API. Our results show a cross correlation between meteorological factors and the API in Nanjing. The cross-correlation between diurnal temperature ranges and the API is persistent at studied time scales, while the cross correlations of wind speed, relative humidity, and precipitation with the API are anti-persistent at studied time scales. Next, a cross correlation of temperature with the API finds persistent cross correlation at smaller time scales, and anti-persistent cross-correlation at larger time scales; the cross correlation of atmospheric pressure with the API, however, results in anti-persistent cross correlation at smaller time scales, and persistent cross correlation at larger time scales. The MF-DCCA demonstrates that all underlying fluctuations have a weak multifractal nature where one scaling exponent is obtained. However, the MF-CCA suggests that some crossovers exist in the cross-correlation fluctuation function in terms of time scales of temperature and atmospheric pressure versus the API. The MF-CCA method is more subtle and suitable for reflecting the cross correlation of the two given time series. Compared with a traditional correlation analysis, the DCCA can uncover more cross-correlation information between API and meteorological factors. Therefore, the DCCA is also recommended as a comparatively reliable method for detecting the correlations between the API and meteorological data, and can also be useful for our understanding of the cross correlation between air quality and meteorological elements. (C) 2014 Elsevier B.V. All rights reserved.
机译:利用去趋势互相关分析(DCCA),研究了南京市过去12年的每日气象数据与空气污染指数(API)记录之间的相互关系。在这项研究中,我们使用统计显着性检验和幂律统计检验来验证气象数据与API之间的相互关系。通过计算DCCA互相关系数rho(DCCA),我们打算在不同时间尺度上获得气象数据与API之间的互相关级别范围。利用Oswiecimka提出的多重分形趋势互相关分析(MF-DCCA)和算法-多重分形互相关分析(MF-CCA),我们观察了气象因素与API之间的多重分形互相关行为。我们的结果表明,气象因素与南京市的API之间存在相互关系。日温度范围与API之间的互相关在研究的时间尺度上是持久的,而风速,相对湿度和降水与API的互相关在研究的时间尺度上是反持久的。接下来,温度与API的互相关会在较小的时间范围内找到持久的互相关,而在较大的时间范围内会找到反持久的互相关。但是,大气压力与API的互相关会在较小的时间范围内导致反持久互相关,而在较大的时间范围内会导致持久互相关。 MF-DCCA证明,所有基本波动都具有弱的多重分形性质,其中获得了一个缩放比例指数。但是,MF-CCA建议在温度和大气压力相对于API的时间尺度方面,互相关波动函数中存在一些交叉。 MF-CCA方法更微妙,适合反映两个给定时间序列的互相关。与传统的相关分析相比,DCCA可以揭示API和气象因素之间的更多互相关信息。因此,DCCA还被推荐作为一种比较可靠的方法来检测API和气象数据之间的相关性,并且对于理解空气质量与气象要素之间的相互关系也很有用。 (C)2014 Elsevier B.V.保留所有权利。

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