Fractional Order Learning Methods for Nonlinear System Identification Based on Fuzzy Neural Network
DOI:
https://doi.org/10.4208/ijnam2023-1031Keywords:
Fractional calculus, T-S fuzzy neural network, gradient descent method, nonlinear systems.Abstract
This paper focuses on neural network-based learning methods for identifying nonlinear dynamic systems. The Takagi-Sugeno (T-S) fuzzy model is introduced to represent nonlinear systems in a linear way. Fractional calculus is integrated to minimize the cost function, yielding a fractional-order learning algorithm that can derive optimal parameters in the T-S fuzzy model. The proposed algorithm is evaluated by comparing it with an integer-order method for identifying numerical nonlinear systems and a water quality system. Both evaluations demonstrate that the proposed algorithm can effectively reduce errors and improve model accuracy.
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Published
2023-09-19
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