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Prediction of dust fall concentrations in urban atmospheric environment through support vector regression 被引量:2

Prediction of dust fall concentrations in urban atmospheric environment through support vector regression
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摘要 Support vector regression(SVR) method is a novel type of learning machine algorithms,which is seldom applied to the development of urban atmospheric quality models under multiple socio-economic factors.This study presents four SVR models by selecting linear,radial basis,spline,and polynomial functions as kernels,respectively for the prediction of urban dust fall levels.The inputs of the models are identified as industrial coal consumption,population density,traffic flow coefficient,and shopping density coefficient.The training and testing results show that the SVR model with radial basis kernel performs better than the other three both in the training and testing processes.In addition,a number of scenario analyses reveal that the most suitable parameters(insensitive loss function ε,the parameter to reduce the influence of error C,and discrete level or average distribution of parameters σ) are 0.001,0.5,and 2000,respectively. Support vector regression (SVR) method is a novel type of learning machine algorithms, which is seldom applied to the development of urban atmospheric quality models under multiple socio-economic factors. This study presents four SVR models by selecting linear, radial basis, spline, and polynomial functions as kernels, respectively for the prediction of urban dust fall levels. The inputs of the models are identified as industrial coal consumption, population density, traffic flow coefficient, and shopping density coefficient. The training and testing results show that the SVR model with radial basis kernel performs better than the other three both in the training and testing processes. In addition, a number of scenario analyses reveal that the most suitable parameters (insensitive loss function e, the parameter to reduce the influence of error C, and discrete level or average distribution of parameters σ) are 0.001, 0.5, and 2 000, respectively.
出处 《Journal of Central South University》 SCIE EI CAS 2010年第2期307-315,共9页 中南大学学报(英文版)
基金 Projects(2007JT3018, 2008JT1013, 2009FJ4056) supported by the Key Project in Hunan Science and Technology Program, China Project(20090161120014) supported by the New Teachers Sustentation Fund in Doctoral Program, Ministry of Education, China
关键词 支持向量回归 大气环境预测 城市 降尘 大气质量模型 浓度 机器学习算法 社会经济因素 support vector regression urban air quality dust fall soeio-economic factors radial basis function
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同被引文献38

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