Journal article
Prediction of dust fall concentrations in urban atmospheric environment through support vector regression
Abstract
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 …
Authors
Jiao S; Zeng G-M; He L; Huang G-H; Lu H-W; Gao Q
Journal
Journal of Central South University, Vol. 17, No. 2, pp. 307–315
Publisher
Springer Nature
Publication Date
4 2010
DOI
10.1007/s11771-010-0047-x
ISSN
2095-2899