Artificial Neural Network for Predicting Flood : A Review
Keywords:
Flood prediction; Artificial Neural Network; Biological Neuron; Fuzzy Logic ModelAbstract
Flood disaster continues to occur in many countries around the world and cause tremendous casualties and property damage. An Artificial Neural Network (ANN) is a flexible approach which gives very promising results. Unfortunately, the inability to predict beyond the limits of the training range was found to be a serious limitation of this approach. Therefore, the accuracy of prediction is not significantly improved by a single output model.
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