Forecasting Air Quality Parameters Using Hybrid Neural Network Modelling

作者: Mikko Kolehmainen , Hannu Martikainen , Teri Hiltunen , Juhani Ruuskanen

DOI: 10.1007/978-94-010-0932-4_30

关键词:

摘要: Urban air pollution has emerged as an acute problem in recent years because of its detrimental effects on health and living conditions. The research presented here aims at attaining a better understanding phenomena associated with atmospheric pollution, particular aerosol particles. specific goal was to develop form quality modelling which can forecast urban for the next day using airborne pollutant, meteorological timing variables.

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