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Improved training of neural networks for the nonlinear active control of sound and vibration

机译:改进的神经网络训练,用于声音和振动的非线性主动控制

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摘要

Active control of sound and vibration has been the subject of a lot of research, and examples of applications are now numerous. However, few practical implementations of nonlinear active controllers have been realized. Nonlinear active controllers may be required in cases where the actuators used in active control systems exhibit nonlinear characteristics, or in cases when the structure to be controlled exhibits a nonlinear behavior. A multilayer perceptron neural-network based control structure was previously introduced as a nonlinear active controller, with a training algorithm based on an extended backpropagation scheme. This paper introduces new heuristical training algorithms for the same neural-network control structure. The objective is to develop new algorithms with faster convergence speed and/or lower computational loads. Experimental results of active sound control using a nonlinear actuator with linear and nonlinear controllers are presented. The results show that some of the new algorithms can greatly improve the learning rate of the neural-network control structure, and that for the considered experimental setup a neural-network controller can outperform linear controllers.
机译:声音和振动的主动控制已成为许多研究的主题,并且现在有许多应用示例。但是,非线性有源控制器的实际实现方法很少。在主动控制系统中使用的执行器表现出非线性特性的情况下,或者在要控制的结构表现出非线性行为的情况下,可能需要非线性主动控制器。先前将基于多层感知器神经网络的控制结构引入到非线性主动控制器中,并采用了基于扩展反向传播方案的训练算法。本文介绍了针对相同神经网络控制结构的新启发式训练算法。目的是开发具有更快收敛速度​​和/或更低计算量的新算法。提出了使用带有线性和非线性控制器的非线性执行器进行主动声音控制的实验结果。结果表明,一些新算法可以大大提高神经网络控制结构的学习率,并且在考虑的实验设置下,神经网络控制器的性能要优于线性控制器。

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