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A modified Elman neural network model with application to dynamical systems identification

机译:改进的Elman神经网络模型及其在动力系统辨识中的应用

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In this paper, an overview of the structure and learning algorithm of the Elman neural network is first presented. A modified Elman network is then proposed by adding new adjustable weights that connect the context nodes with output nodes. Convergence speed of the two network structures are compared. A parallel dynamic system identification scheme based on the modified Elman network is set up as well. Theoretical analysis and simulation results show that our improved neural network-based identification method has the advantage of identifying both linear and nonlinear dynamic systems without any prior knowledge of their orders and structures.
机译:本文首先概述了Elman神经网络的结构和学习算法。然后,通过添加新的可调整权重(将上下文节点与输出节点相连)来提出一种经过修改的Elman网络。比较了两种网络结构的收敛速度。建立了基于改进的Elman网络的并行动态系统识别方案。理论分析和仿真结果表明,我们改进的基于神经网络的识别方法具有识别线性和非线性动态系统的优势,而无需事先了解它们的顺序和结构。

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