Title of article :
A new hybrid evolutionary based RBF networks method for forecasting time series: A case study of forecasting emergency supply demand time series
Author/Authors :
Mohammadi، نويسنده , , Reza and Fatemi Ghomi، نويسنده , , S.M.T. and Zeinali، نويسنده , , Farzad، نويسنده ,
Pages :
11
From page :
204
To page :
214
Abstract :
Improving time series forecasting accuracy has received considerable attention in recent years. This paper presents a new hybrid evolutionary algorithm for determining both architecture (input variables and neurons of hidden layer) and network parameters (centers, width and weights) of radial basis function neural networks (RBFNNs) simultaneously. Our proposed algorithm generates new architecture applying genetic algorithm (GA). Modified adaptive particle swarm optimization (APSO) is used to determine the training parameters efficiently. Inertia weight and acceleration coefficients in APSO are adapted by swarm status. Since PSO algorithms suffer premature convergence, especially when global best is found, mutation operator is applied to overcome the drawback. Comparing the performance of the proposed approach with several benchmark time series modeling and algorithms shows that the proposed method is able to predict time series more accurately than others. Finally, proposed GA–APSO based RBFNNs method is applied to predict the demand of emergency supplies after earthquake in the East Azerbayjan in 2012 in Iran. The results show that the proposed evolving RBF based method can be applied to forecast the emergency supply demand time series successfully with the automatically selected nodes and inputs.
Keywords :
Time series prediction , radial basis function networks , Evolutionary algorithms , demand forecasting , natural disaster
Journal title :
Astroparticle Physics
Record number :
2048484
Link To Document :
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