Forecasting Rainfall Distribution Using Artificial Neural Networks for Johor Rivers

Authors

  • Nur Farhana Hordri
  • Siti Sophiayati Yuhaniz
  • Kamilia Kamardin

Keywords:

data pre-processing, forecasting, rainfall distribution, artificial neural network, back propagation

Abstract

The study is conducted to forecast the rainfall distribution in the areas around Johor,
Malaysia. Although there are many other factors, we will be using the rainfall distribution
factor only. The forecasting method that is going to be used in this study is the Artificial
Neural Networks (ANN) which will be trained using back propagation learning algorithm.
To produce the best model, several propagation models will be constructed in the algorithm.
The value of learning rate parameter and momentum parameter will also be used and
constantly changed based on the number of hidden nodes. The data is prepared and filtered
using data pre-processing. Data pre-processing includes data cleaning, normalisation,
transformation, feature extraction and selection. The product of data pre-processing is
the final training set. At the end of the experiment, the best model was selected and the
strength of the relationship of each model based on their activation functions that have been
used was compared. The result of the model produces the minimum error value and has a
stronger relationship between the actual data value and forecast data value is the best model
among the best

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Published

2015-06-22

How to Cite

Hordri, N. F. ., Yuhaniz, S. S. ., & Kamardin, K. . (2015). Forecasting Rainfall Distribution Using Artificial Neural Networks for Johor Rivers. Open International Journal of Informatics, 3(1), 11–27. Retrieved from https://oiji.utm.my/index.php/oiji/article/view/100