Comparison study of computational parameter values between LRN and NARX in identifying nonlinear systems
To determine the nonlinear autoregressive model with exogenous inputs (NARX) parameter values is not an easy task, even though NARX is reported to successfully identify nonlinear systems. Apart from the activation functions, number of layers, layer size, learning rate, and number of epochs, the numb...
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Main Authors: | Nordin F.H., Nagi F.H., Zainul Abidin A.A. |
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其他作者: | 25930510500 |
格式: | Article |
出版: |
2023
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