Title of article :
The use of radial basis function and non-linear autoregressive exogenous neural networks to forecast multi-step ahead of time flood water level
Author/Authors :
Faruq, Amrul Department of Electronics System and Electrical Engineering - Malaysia - Japan International Institute of Technology - Un iversiti Teknologi Malaysia , Malaysia , Abdullah , Shahrum Shah Department of Electronics System and Electrical Engineering - Malaysia - Japan International Institute of Technology - Un iversiti Teknologi Malaysia , Malaysia , Bakar, Mohd Anuar Abu Department of Electronics System and Electrical Engineering - Malaysia - Japan International Institute of Technology - Un iversiti Teknologi Malaysia , Malaysia , Hussein, Shamsul Faisal Mohd Department of Electronics System and Electrical Engineering - Malaysia - Japan International Institute of Technology - Un iversiti Teknologi Malaysia , Malaysia , Razali, Che Munira Che Department of Electronics System and Electrical Engineering - Malaysia - Japan International Institute of Technology - Un iversiti Teknologi Malaysia , Malaysia , Marto , Aminaton Department of Environmental Engineerin g and Green Technology - Malaysia - Japan International Institute of Technology - Universiti Teknologi Malaysia , Malaysia
Pages :
10
From page :
1
To page :
10
Abstract :
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast updating. However, the model performance, and error prediction in which forecast outputs are adjusted directly based on models calibrated to the time series of differences between observed and forecast values, are very interesting and challenging task. This paper presents an improved lead time flood forecasting using Non-linear Auto Regressive Exogenous Neural Network (NARXNN), which shows better performance in term of forecast precision and produces minimum error compared to neural network method using Radial Basis Function (RBF) in examined 12-hour ahead of time. First, RBF forecasting model was employed to predict the flood water level of Kelantan River at Kuala Krai, Kelantan, Malaysia. The model is tested for 1-hour and 7-hour ahead of time water level at flood location. The same analysis has also been taken by NARXNN method. Then, a non-linear neural network model with exogenous input promoted with enhancing a forecast lead time to 12-hour. Both about the performance comparison has briefly been analyzed. The result verified the precision of error prediction of the presented flood forecasting model.
Keywords :
Artificial neural networks , NARX , Radial basis function , Floods Forecasting
Journal title :
International Journal of Advances in Intelligent Informatics
Serial Year :
2019
Full Text URL :
Record number :
2601071
Link To Document :
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