Digitale Bibliotheek
Sluiten Bladeren door artikelen uit een tijdschrift
 
<< vorige    volgende >>
     Tijdschrift beschrijving
       Alle jaargangen van het bijbehorende tijdschrift
         Alle afleveringen van het bijbehorende jaargang
           Alle artikelen van de bijbehorende aflevering
                                       Details van artikel 6 van 10 gevonden artikelen
 
 
  Detection of conceptual model rainfall—runoff processes inside an artificial neural network / Detection des processus d'un modele pluie—debit conceptuel au sein d'un reseau de neurones artificiel
 
 
Titel: Detection of conceptual model rainfall—runoff processes inside an artificial neural network / Detection des processus d'un modele pluie—debit conceptuel au sein d'un reseau de neurones artificiel
Auteur: WILBY, R.L.
ABRAHART, R.J.
DAWSON, C.W.
Verschenen in: Hydrological sciences journal
Paginering: Jaargang 48 (2003) nr. 2 pagina's 163-181
Jaar: 2003-04-01
Inhoud: The internal behaviour of an artificial neural network rainfall—runoff model is examined and it is demonstrated that specific architectural features can be interpreted with respect to the quasi-physical dynamics of a parsimonious water balance model. Neural network solutions were developed for daily discharge series simulated by a conceptual rainfall—runoff model given observed daily precipitation totals and evaporation rates for the Test River basin in southern England. Neural outputs associated with each hidden node, produced from the output node after all other hidden nodes had been deleted, were then compared with state variables and internal fluxes of the conceptual model (including soil moisture, percolation, groundwater recharge and baseflow). Correlation analysis suggests that hidden nodes in the neural network correspond to dominant processes within the conceptual model. In particular, different hidden nodes are associated with distinct “quickflow” and “baseflow” components, as well as a threshold state in the soil moisture accounting. The results also demonstrate that, for this river basin, a neural network with seven inputs and three hidden nodes can emulate the gross behaviour of the conceptual model.
Uitgever: Taylor & Francis
Bronbestand: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details van artikel 6 van 10 gevonden artikelen
 
<< vorige    volgende >>
 
 Koninklijke Bibliotheek - Nationale Bibliotheek van Nederland