首页> 外文期刊>Engineering Applications of Artificial Intelligence >A context layered locally recurrent neural network for dynamic system identification
【24h】

A context layered locally recurrent neural network for dynamic system identification

机译:用于动态系统识别的上下文分层局部递归神经网络

获取原文
获取原文并翻译 | 示例
           

摘要

This paper puts forward a novel recurrent neural network (RNN), referred to as the context layered locally recurrent neural network (CLLRNN) for dynamic system identification. The CLLRNN is a dynamic neural network which appears in effective in the input-output identification of both linear and nonlinear dynamic systems. The CLLRNN is composed of one input layer, one or more hidden layers, one output layer, and also one context layer improving the ability of the network to capture the linear characteristics of the system being identified. Dynamic memory is provided by means of feedback connections from nodes in the first hidden layer to nodes in the context layer and in case of being two or more hidden layers, from nodes in a hidden layer to nodes in the preceding hidden layer. In addition to feedback connections, there are self-recurrent connections in all nodes of the context and hidden layers. A dynamic backpropagation algorithm with adaptive learning rate is derived to train the CLLRNN. To demonstrate the superior properties of the proposed architecture, it is applied to identify not only linear but also nonlinear dynamic systems. The efficiency of the proposed architecture is demonstrated by comparing the results to some existing recurrent networks and design configurations. In addition, performance of the CLLRNN is analyzed through an experimental application to a dc motor connected to a load to show practicability and effectiveness of the proposed neural network. Results of the experimental application are presented to make a quantitative comparison with an existing recurrent network in the literature.
机译:提出了一种新颖的递归神经网络(RNN),称为上下文分层局部递归神经网络(CLLRNN),用于动态系统识别。 CLLRNN是一个动态神经网络,可以有效地识别线性和非线性动态系统的输入输出。 CLLRNN由一层输入层,一层或多层隐藏层,一层输出层以及一层上下文层组成,这些层提高了网络捕获被识别系统的线性特征的能力。通过从第一隐藏层中的节点到上下文层中的节点的反馈连接来提供动态存储器,并且在是两个或多个隐藏层的情况下,从隐藏层中的节点到先前的隐藏层中的节点之间进行反馈连接。除了反馈连接之外,上下文和隐藏层的所有节点中都有自循环连接。推导了具有自适应学习率的动态反向传播算法来训练CLLRNN。为了证明所提出的体系结构的优越性能,它不仅可用于识别线性系统,而且还可用于识别非线性动态系统。通过将结果与一些现有的递归网络和设计配置进行比较,可以证明所提出体系结构的效率。此外,通过对连接到负载的直流电动机的实验应用分析了CLLRNN的性能,以显示所提出的神经网络的实用性和有效性。提出实验应用的结果是为了与文献中现有的递归网络进行定量比较。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号