Self-adaptive wavelet kernel neural network tracking control method based on KLMS
A neural network and tracking control technology, applied in the field of neural network tracking control, can solve problems such as inability to approach the classification interface and incompleteness.
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[0059] The present invention will be described in further detail below in conjunction with the accompanying drawings.
[0060] The invention proposes an adaptive wavelet kernel neural network tracking control method, constructs a Morlet wavelet kernel function, and uses the KLMS algorithm to iteratively update the parameters of the wavelet kernel network, so as to realize the tracking control of the unknown control model. The specific implementation of the method includes establishing a control model and a neural network model, constructing a wavelet kernel function, updating weights between different layers, and updating shrinkage factors of the wavelet kernel function. The wavelet kernel function based on the KLMS algorithm of the present invention adopts the online learning mode to carry out, figure 1 Shown is the system structure diagram of the wavelet kernel network. The specific implementation of the technical solution proposed by the present invention will be described...
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