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Fuzzy jump wavelet neural network based on rule induction for dynamic nonlinear system identification with real data applications.

Mohsen Kharazihai IsfahaniMaryam ZekriHamid Reza MaratebMiguel Angel Mañanas
Published in: PloS one (2019)
The FJWNN demonstrated promising accuracy and generalization while moderating network complexity. This improvement is due to applying main useful wavelets in combination with linear regressors and using fuzzy rule induction. Compared to the state-of-the-art models, the proposed FJWNN yielded better performance and, therefore, can be considered a novel tool for nonlinear system identification.
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