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Statistical modelling and prediction of atmospheric pollution by particulate material: two nonparametric approaches

机译:颗粒物质对大气污染的统计建模和预测:两种非参数方法

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Atmospheric particles are one of the main factors of air pollution in Santiago, Chile. Inhalation of particulate material is known to lead to serious health problems, including respiratory illness and complications related thereto. Vehicular traffic, industrial activity and street dust are important sources of atmospheric particles. The public authorities in Santiago have been monitoring air pollution by means of a network of semi-automatic sampling stations. At one of these stations, located near the city centre close to Government House, both PM2.5 and PM10 particulate material concentrations have been measured continuously for several years. Here PM2.5 refers to particles having a diameter smaller than 2.5 microns and PM10 corresponds to particles smaller than 10 microns. Hourly averages of the concentrations are available. For the present work, hourly data recorded at intervals of 12 hours have been used. The aim is to describe and forecast these variables with satisfactory precision, including critical pollution episodes, both as a function of previous behaviour and of a set of meteorological variables, comprising wind speed and direction, ambient temperature and relative air humidity. Both non-parametric discriminant analysis and multivariate adaptive regression splines procedures have been applied. Highly satisfactory classification as well as forecasting results were achieved with these approaches, respectively. Copyright © 2001 John Wiley & Sons, Ltd.
机译:智利圣地亚哥的大气颗粒物是空气污染的主要因素之一。吸入颗粒物质会导致严重的健康问题,包括呼吸系统疾病及其相关并发症。车辆交通,工业活动和街道灰尘是大气颗粒物的重要来源。圣地亚哥的公共当局一直通过半自动采样站网络监测空气污染。在靠近政府大楼的市中心附近的这些站点之一,已经连续数年测量了PM2.5和PM10颗粒物的浓度。在此,PM2.5是指直径小于2.5微米的颗粒,而PM10是指小于10微米的颗粒。可提供每小时的平均浓度。对于当前工作,已使用以12小时为间隔记录的每小时数据。目的是以令人满意的精度描述和预测这些变量,包括临界污染事件,这既是先前行为的函数,也是一组气象变量的函数,包括风速和风向,环境温度和相对空气湿度。非参数判别分析和多元自适应回归样条曲线程序都已应用。这些方法分别实现了非常令人满意的分类和预测结果。版权所有©2001 John Wiley&Sons,Ltd.

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