Title of article :
Hybrid Neural Models For Rice Yields Times Forecasting
Author/Authors :
Samsudin, Ruhaidah University Teknologi Malaysia - Faculty of Computer Science and Information System - Department of Software Engineering, Malaysia , Saad, Puteh University Teknologi Malaysia - Faculty of Computer Science and Information System - Department of Software Engineering, Malaysia , Shabri, Ani University Technology of Malaysia - Science Faculty - Department of Mathematic, Malaysia
From page :
135
To page :
147
Abstract :
In this paper, time series prediction is considered as a problem of missing value. A model for the determination of the missing time series value is presented. The hybrid model integrating autoregressive intergrated moving average (ARIMA) and artificial neural network (ANN) model is developed to solve this problem. The developed models attempts to incorporate the linear characteristics of an ARIMA model and nonlinear patterns of ANN to create a hybrid model. In this study, time series modeling of rice yield data in Muda Irrigation area. Malaysia from 1995 to 2003 are considered. Experimental results with rice yields data sets indicate that the hybrid model improve the forecasting performance by either of the models used separately.
Keywords :
ARIMA , Box and Jenkins , neural networks , rice yields , hybrid ANN model
Journal title :
Jurnal Teknologi :F
Journal title :
Jurnal Teknologi :F
Record number :
2715548
Link To Document :
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