Title :
Prediction of 4 hours ahead flood water level using improved ENN structure: Case study Kuala Lumpur
Author :
Ruslan, Fazlina Ahmat ; Samad, Abd Manan ; Md Zain, Zainazlan ; Adnan, Ramli
Author_Institution :
Fac. of Electr. Eng., Univ. Teknol. MARA, Shah Alam, Malaysia
Abstract :
Recently, ANN models have been successfully applied in flood water level prediction system. However, most of publication on flood prediction only focusing on flood modelling and no element of prediction time was mentioned. Therefore, flood water level prediction is a new avenue to embark on in order to give early warning for evacuation purposes. This paper proposeda 4 hours ahead flood water level prediction using Improved ENN structure for Kelang River station which is located at Petaling Bridge, Kuala Lumpur. The model was developed using data obtained from the Department of Irrigation and Drainage, Malaysia upon special request. The prediction results of the original Elman neural network structure indicate unsatisfactorily performance results. Therefore, the Improved ENN structure was introduced. The performance indices results concluded that Improved ENN model was more versatile than the original ENN model and significant improvement from the original ENN model can be observed when the Improved ENN was introduced.
Keywords :
emergency management; floods; geophysics computing; neural nets; ANN models; Department of Irrigation and Drainage; Elman neural network structure; Kelang River station; Kuala Lumpur; Malaysia; Petaling Bridge; early warning system; flood modelling; flood prediction; flood water level prediction system; improved ENN structure; Artificial neural networks; Floods; Mathematical model; Predictive models; Rivers; Training; Artificial Neural Network (ANN); Elman Neural Network (ENN); Flood Water Level Prediction; Improved ENN;
Conference_Titel :
Control System, Computing and Engineering (ICCSCE), 2014 IEEE International Conference on
Print_ISBN :
978-1-4799-5685-2
DOI :
10.1109/ICCSCE.2014.7072743