Abstract

Multilayer perceptron (MLP) neural networks were trained to model hourly NO x and NO 2 pollutant concentrations in Central London from basic hourly meteorological data. Results have shown that the models perform well when compared to previous attempts to model the same pollutants using regression based models. This work also illustrates that MLP neural networks are capable of resolving complex patterns of source emissions without any explicit external guidance.

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