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Differential Evolution and Levenberg Marquardt Trained Neural Network Scheme for Nonlinear System Identification

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Abstract

This paper proposes a new nonlinear system identification scheme using differential evolution (DE), neural network and Levenberg Marquardt algorithm (LM). Here, DE and LM in a combined framework are used to train a neural network for achieving better convergence of neural network weight optimization. A number of examples including a practical case-study have been considered for implementation of different system identification methods namely, only NN, DE+NN and DE+LM+NN. After, a series of simulation studies of these methods on the different nonlinear systems it has been confirmed that the proposed DE and LM trained NN approach to nonlinear system identification has yielded better identification results in terms of time of convergence and less identification error.

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Correspondence to Bidyadhar Subudhi.

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Subudhi, B., Jena, D. Differential Evolution and Levenberg Marquardt Trained Neural Network Scheme for Nonlinear System Identification. Neural Process Lett 27, 285–296 (2008). https://doi.org/10.1007/s11063-008-9077-x

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  • DOI: https://doi.org/10.1007/s11063-008-9077-x

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