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Technical Paper

Prediction of Ambient PM10 and Toxic Metals Using Artificial Neural Networks

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Pages 805-810 | Published online: 27 Dec 2011

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A.B. CHELANI. (2005) Predicting chaotic time series of PM10 concentration using artificial neural network. International Journal of Environmental Studies 62:2, pages 181-191.
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