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应用 ARIMA 模型预测中国杭州繁忙路边气象因素对亚微米颗粒物浓度的影响。

An application of ARIMA model to predict submicron particle concentrations from meteorological factors at a busy roadside in Hangzhou, China.

机构信息

School of Public Health, Curtin Health Innovation Research Institute, Curtin University, Perth, Australia.

出版信息

Sci Total Environ. 2012 Jun 1;426:336-45. doi: 10.1016/j.scitotenv.2012.03.025. Epub 2012 Apr 21.

Abstract

In order to investigate the effect of meteorological factors on submicron particle (ultrafine particle (UFP) and particulate matter 1.0 (PM(1.0))) concentrations under busy traffic conditions, a model study was conducted in Hangzhou, a city with a rapid increase of on-road vehicle fleet in China. A statistical model, Autoregressive Integrated Moving Average (ARIMA), was used for this purpose. ARIMA results indicated that barometric pressure and wind velocity were anti-correlated and temperature and relative humidity were positively correlated with UFP number concentrations and PM(1.0) mass concentrations (p<0.05). These data suggest that meteorological factors are significant predictors in forecasting roadside atmospheric concentrations of submicron particles. The findings provide baseline information on the potential effect of meteorological factors on UFP and PM(1.0) levels on a busy viaduct with heavy traffic most of the day. This study also provides a framework that may be applied in future studies, with large scale time series data, to predict the impact of meteorological factors on submicron particle concentrations in fast-developing cities, in China.

摘要

为了研究在交通繁忙的情况下气象因素对亚微米颗粒(超细颗粒(UFP)和颗粒物 1.0(PM(1.0)))浓度的影响,在中国道路车辆数量迅速增加的杭州市进行了一项模型研究。为此目的,使用了自回归综合移动平均(ARIMA)统计模型。ARIMA 结果表明,气压和风速呈负相关,温度和相对湿度与 UFP 数浓度和 PM(1.0)质量浓度呈正相关(p<0.05)。这些数据表明,气象因素是预测路边大气亚微米颗粒浓度的重要预测因子。研究结果为交通繁忙的高架桥在一天中的大部分时间都有大量交通的情况下,气象因素对 UFP 和 PM(1.0)水平的潜在影响提供了基线信息。本研究还提供了一个框架,未来可以应用于具有大规模时间序列数据的研究,以预测气象因素对中国快速发展城市中亚微米颗粒浓度的影响。

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