Title of article :
A feedback-oriented data delay modeling in a dynamic neural network for time series forecasting
Author/Authors :
Namakshenas، Mohammad نويسنده Shahed University , , Amiri، Amirhossein نويسنده , , Sahraeian، Rashed نويسنده Assistant Professor of Industrial Engineering, Tehran, Iran, ,
Issue Information :
دوفصلنامه با شماره پیاپی 0 سال 2016
Abstract :
In this study, we develop a neural network with a time shifting approach
to forecast time series patterns. We investigate the impact of dierent layer-weight
congurations to capture the trends in seasonal, chaotic, etc. forms. We also hypothesize
the combined eect of the delayed inputs and the forward connections to introduce a
dynamical structure. The eect of overtting issue is procedurally monitored to gain
the resistance property from the early stoppage of training process and to reduce the
error of predictions. Finally, the performance of the proposed network is challenged
by six well-known deterministic and non-deterministic time series and compared by the
autoregression (AR), Articial Neural Network (ANN), Adaptive K-nearest Neighbors
(AKN), and adaptive neural network (ADNN) models. The results show that the proposed
network outperforms the conventional models, particularly in forecasting the chaotic and
seasonal time series.
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)