Short range forecast of atmospheric radon concentration and stable layer depth by neural network modelling (Contributo in atti di convegno)

Type
Label
  • Short range forecast of atmospheric radon concentration and stable layer depth by neural network modelling (Contributo in atti di convegno) (literal)
Anno
  • 2003-01-01T00:00:00+01:00 (literal)
Alternative label
  • Pasini A., Ameli F., Lorè M. (2003)
    Short range forecast of atmospheric radon concentration and stable layer depth by neural network modelling
    in IEEE international symposium on Computationa Intelligence for Measurement Systems and Applications (CIMSA), Lugano
    (literal)
Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#autori
  • Pasini A., Ameli F., Lorè M. (literal)
Pagina inizio
  • 85 (literal)
Pagina fine
  • 90 (literal)
Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#descrizioneSinteticaDelProdotto
  • A forecast activity in the lowest layer of the atmosphere, well known for its strongly non-linear physics, is presented in this paper. The forecast method is mainly based on a neural network model, whose structure is briefly described. We stress that preprocessing allows us to extract the main periodicities and to train the network on a residual series of radon data: here the network itself is able to catch the hidden non-linear dynamics. Final results show the ability of the model to predict values of radon concentration and stable layer depth, which represent important physical information for air pollution forecasts near the surface. (literal)
Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#affiliazioni
  • 1. CNR-IIA 2. INFN 3. UNI ROMA I (literal)
Titolo
  • Short range forecast of atmospheric radon concentration and stable layer depth by neural network modelling (literal)
Abstract
  • A forecast activity in the lowest layer of the atmosphere, well known for its strongly non-linear physics, is presented in this paper. The forecast method is mainly based on a neural network model, whose structure is briefly described. We stress that preprocessing allows us to extract the main periodicities and to train the network on a residual series of radon data: here the network itself is able to catch the hidden non-linear dynamics. Final results show the ability of the model to predict values of radon concentration and stable layer depth, which represent important physical information for air pollution forecasts near the surface. (literal)
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