Abstract
Abstract
this investigation aims to provide an overview and investigations of non-linear identification system using neural network approach. Nowadays, a lot of neural network approach was done to provide a satisfying identification system. Backpropagation scheme as the mainstream approach for developing identification system has several limitations such as training data, computation time, architecture, optimization technique for weight value update, and many others. Regression Neural Network which is found by specht on 1990 contains more advantages compare with backpropagation scheme. With the improvement of computation time, architecture, and robustness of this model and provided 90% of effectiveness, promising a good prospective to develop non-linear identification system. For future works, it can be implemented in neural network predictive model control system and another control scheme based on identification system approach.
Publisher
Springer Science and Business Media LLC
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