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首页> 外文期刊>Stochastic environmental research and risk assessment >Time series analysis and forecasting for air pollution in small urban area: an SARIMA and factor analysis approach
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Time series analysis and forecasting for air pollution in small urban area: an SARIMA and factor analysis approach

机译:小城市地区空气污染的时间序列分析和预测:SARIMA和因子分析方法

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摘要

Despite the existing public and government measures for monitoring and control of air quality in Bulgaria, in many regions, including typical and most numerous small towns, air quality is not satisfactory. In this paper, factor analysis and Box-Jenkins methodology are applied to examine concentrations of primary air pollutants such as NO, NO_2, NO_x, PM10, SO_2 and ground level O_3 in the town of Blagoevgrad, Bulgaria within a 1 year period from 1st September 2011 to 31st August 2012, based on hourly measurements. By using factor analysis with PCA and Promax rotation, a high multicollinearity between the six pollutants has been detected. The pollutants were grouped in three factors and the degree of contribution of the factors to the overall pollution was determined. This was interpreted as the presence of common sources of pollution. The main part of the study involves the performance of time series analysis and the development of univariate stochastic seasonal autoregressive integrated moving average (AR-IMA) models with recording on a hourly basis as season-ality. The study also incorporates the Yeo-Johnson power transformation for variance stabilizing of the data and model selection by using Bayersian information criterion. The obtained SARIMA models demonstrated very good fitting performance with regard to the observed air pollutants and short-term predictions for 72 h ahead, in particular in the case of ozone and particulate matter PM10. The presented statistical approaches allow the building of non-complex models, effective for short-term air pollution forecasting and useful for advance warning purposes in urban areas.
机译:尽管保加利亚已采取公共和政府措施来监测和控制空气质量,但在许多地区,包括典型的和数量众多的小城镇,空气质量仍不能令人满意。本文采用因子分析和Box-Jenkins方法,从9月1日起的1年内,对保加利亚Blagoevgrad镇的主要空气污染物,如NO,NO_2,NO_x,PM10,SO_2和地面O_3的浓度进行了研究。 2011年至2012年8月31日,基于小时测量。通过使用PCA和Promax旋转的因子分析,已检测到六种污染物之间的高多重共线性。将污染物分为三个因素,并确定这些因素对总体污染的影响程度。这被解释为存在常见的污染源。该研究的主要部分涉及时间序列分析的性能以及单小时随机季节性自回归综合移动平均(AR-IMA)模型的开发,该模型以小时为基础按小时记录。该研究还结合了Yeo-Johnson幂变换,以使用贝叶斯信息准则对数据进行方差稳定和模型选择。对于观察到的空气污染物和对未来72小时的短期预测,获得的SARIMA模型表现出非常好的拟合性能,尤其是在臭氧和颗粒物PM10的情况下。提出的统计方法可以建立非复杂模型,对短期空气污染预测有效,并且对城市地区的预警具有帮助。

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