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Adaptive recurrent fuzzy neural networks for active noise control

机译:主动噪声控制的自适应递归模糊神经网络

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This paper discussed nonlinear active noise control (ANC). Some adaptive nonlinear noise control approaches using recurrent fuzzy neural networks (RFNNs) were derived. The proposed RFNNs were feed-forward fuzzy neural networks (NNs) with different local feedback connections that are used to construct dynamic fuzzy rules. Different recurrent connection strategies, diagonal recurrent and full connected recurrent ones, were considered. In addition, different fuzzy operation strategies, product (multiply) inference and "summation" (addition) inference, were proposed. Because RFNN-based ANC systems can capture the dynamic behavior of a system through the feedback links, the exact lag of the input variables need not be known in advance. Online dynamic back-propagation learning algorithms based on the error gradient descent method were proposed, and the local convergence of a closed-loop system was proven using the discrete Lyapunov function. A nonlinear simulation example showed that an adaptive ANC system based on an RFNN with summation inference is superior to a system based on other fuzzy NNs. (c) 2006 Elsevier Ltd. All rights reserved.
机译:本文讨论了非线性有源噪声控制(ANC)。推导了一些基于递归模糊神经网络的自适应非线性噪声控制方法。提出的RFNN是具有不同局部反馈连接的前馈模糊神经网络(NN),用于构造动态模糊规则。考虑了不同的递归连接策略,即对角递归和全连接递归策略。另外,提出了不同的模糊运算策略,乘积(乘)推理和“求和”(加法)推理。由于基于RFNN的ANC系统可以通过反馈链接捕获系统的动态行为,因此无需事先知道输入变量的确切滞后时间。提出了一种基于误差梯度下降法的在线动态反向传播学习算法,并利用离散Lyapunov函数证明了闭环系统的局部收敛性。非线性仿真实例表明,基于具有求和推理的RFNN的自适应ANC系统优于基于其他模糊NN的系统。 (c)2006 Elsevier Ltd.保留所有权利。

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