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Identification of Nonlinear Time Varying Systems Using Recurrent Neural Networks

机译:使用经常性神经网络识别非线性时间变化系统

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In this paper the identification using recurrent neural networks based on extended Kalman filter is presented. As it is well known, it is difficult to identify a nonlinear time varying system using traditional identification approaches. Although there have been some network architectures and learning algorithms for the nonlinear time variant systems, the lagged orders must be estimated. There is no need for a priori knowledge for the lagged orders in the recurrent networks. In this paper the learning algorithm has the fast convergence of the extended Kalman filter and needs no estimate of the lag in the system in the presented recurrent networks. Simulation results demonstrate the effectiveness and the fast convergence and good tracking capability of this approach.
机译:在本文中,介绍了使用基于扩展卡尔曼滤波器的经常性神经网络的识别。如众所周知,难以使用传统识别方法识别非线性时间变化系统。虽然已经存在一些网络架构和非线性时间变量系统的学习算法,但必须估计滞后的订单。在经常性网络中,不需要先验的滞后订单。在本文中,学习算法具有扩展卡尔曼滤波器的快速收敛性,并且在所提出的复发网络中的系统中的滞后不需要估计。仿真结果展示了这种方法的有效性和快速收敛性和良好的跟踪能力。

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