Active random noise control using adaptive learning rate neural networks with an immune feedback law

作者:Sasaki Minoru*; Kuribayashi Takumi; Ito Satoshi; Inoue Yoshihiro
来源:International Journal of Applied Electromagnetics and Mechanics, 2011, 36(1-2): 29-39.
DOI:10.3233/JAE-2011-1341

摘要

In this paper an active random noise control using adaptive learning rate neural networks with an immune feedback law is presented. The adaptive learning rate strategy increases the learning rate by a small constant if the current partial derivative of the objective function with respect to the weight and the exponential average of the previous derivatives have the same sign, otherwise the learning rate is decreased in proportion to its value. The use of an adaptive learning rate attempts to keep the learning step size as large as possible without inducing oscillation. In the proposed method, because an immune feedback law is changing the learning rate of the neural networks individually and adaptively, it is expected that the neural cost function will reach its minimum rapidly, resulting in a reduced training time. Numerical simulations and experiments of active random noise control with the transfer function of the error path will be performed to validate the convergence properties of the method. Control results show that the adaptive learning rate neural network control structure can outperform linear controllers and conventional neural network controllers for active random noise control.

  • 出版日期2011