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Statistical Modeling Approaches for PM 10 Prediction in Urban Areas; A Review of 21st-Century Studies

机译:市区PM 10预测的统计建模方法; 21世纪研究​​述评

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PM 10 prediction has attracted special legislative and scientific attention due to its harmful effects on human health. Statistical techniques have the potential for high-accuracy PM 10 prediction and accordingly, previous studies on statistical methods for temporal, spatial and spatio-temporal prediction of PM 10 are reviewed and discussed in this paper. A review of previous studies demonstrates that Support Vector Machines, Artificial Neural Networks and hybrid techniques show promise for suitable temporal PM 10 prediction. A review of the spatial predictions of PM 10 shows that the LUR (Land Use Regression) approach has been successfully utilized for spatial prediction of PM 10 in urban areas. Of the six introduced approaches for spatio-temporal prediction of PM 10 , only one approach is suitable for high-resolved prediction (Spatial resolution < 100 m; Temporal resolution ≤ 24 h). In this approach, based upon the LUR modeling method, short-term dynamic input variables are employed as explanatory variables alongside typical non-dynamic input variables in a non-linear modeling procedure.
机译:由于PM 10对人类健康的有害影响,因此引起了立法和科学方面的特别关注。统计技术有可能用于高精度的PM 10预测,因此,本文对PM 10的时空,时空预测的统计方法的先前研究进行了综述和讨论。对先前研究的回顾表明,支持向量机,人工神经网络和混合技术显示出对适当的时间PM 10预测的希望。对PM 10空间预测的回顾表明,LUR(土地利用回归)方法已成功用于城市地区PM 10的空间预测。在介绍的6种PM 10时空预测方法中,只有一种方法适用于高分辨率的预测(空间分辨率<100 m;时间分辨率≤24 h)。在这种方法中,基于LUR建模方法,在非线性建模过程中,将短期动态输入变量与典型的非动态输入变量一起用作解释变量。

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