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Identification of secondary path in ANC using diagonal recurrent neural networks with EKF algorithm

机译:用EKF算法使用对角线复发性神经网络ANC中的次要路径

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This paper presents theoretical and experimental modeling of secondary path of an active noise control system in free space by using recurrent neural networks. A learning algorithm for diagonal recurrent neural networks is developed based on extended Kalman filter and is referred to as diagonal recurrent extended Kalman filter algorithm. The neural network structure and its algorithm are applied to handle nonlinearity of the secondary path. To put the neural identification task within the context of ANC, a new control algorithm based on DREKF is also presented. The real-time experiment, however, is performed only for identification task. Experimental results using a floating point DSP show that the number of neurons in neural network can be reduced by introducing the diagonal recurrent elements, without deteriorating the identification system performance.
机译:本文通过使用反复性神经网络介绍了活性噪声控制系统中的二次路径的理论和实验模型。基于扩展卡尔曼滤波器开发了一种对角复发性神经网络的学习算法,并且被称为对角线复发扩展卡尔曼滤波算法。神经网络结构及其算法应用于处理次级路径的非线性。为了在ANC的背景下提出神经识别任务,还呈现了一种基于DREKF的新控制算法。然而,实时实验仅用于识别任务。使用浮点DSP的实验结果表明,通过引入对角线复发元件,可以减少神经网络中神经元的数量,而不会降低识别系统性能。

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