非线性动力系统的递归神经网络辨识

L. Behera, S. Kumar, Supriyo Das
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引用次数: 1

摘要

本文讨论了三种训练递归神经网络用于辨识非线性动力系统的学习算法。在我们的工作中,我们选择记忆神经网络(MNN)拓扑作为循环网络。mnn本身是动态系统,其内部存储器通过向前馈网络中添加可训练的时间元素而获得。通过时间反向传播(BPTT)、实时循环学习(RTRL)和扩展卡尔曼滤波(EKF)三种学习过程来调整MNN中的权值以训练这种网络来识别植物。通过比较与之相关的均方误差和相应的计算需求,讨论了不同学习算法的相对有效性。仿真结果表明,从计算复杂度和建模精度两方面考虑,RTRL算法可以有效地训练MNNs对非线性动力系统进行建模。尽管使用EKF可以获得最好的系统识别精度,但其缺点是计算量大。
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Identification of nonlinear dynamical systems using recurrent neural networks
This paper discusses three learning algorithms to train recurrent neural networks for identification of nonlinear dynamical systems. We select memory neural networks(MNN) topology for the recurrent network in our work. MNNs are themselves dynamical systems that have internal memory obtained by adding trainable temporal elements to feed-forward networks. Three learning procedures namely back-propagation through time (BPTT), real time recurrent learning (RTRL) and extended Kalman filtering (EKF) are used for adjusting the weights in MNN to train such networks to identify the plant. The relative effectiveness of different learning algorithms have been discussed by comparing the mean square error associated with them and corresponding computational requirements. The simulation results show that RTRL algorithm is efficient for training MNNs to model nonlinear dynamical systems by considering both computational complexity and modelling accuracy. Eventhough, the accuracy of system identification is best with EKF, but it has the drawback of being computationally intensive.
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