引用本文:刘益剑,方彦军,马宝萍.滑动数据窗口驱动的贝叶斯-高斯网络及其在非线性系统辨识中的应用[J].控制理论与应用,2009,26(12):1435~1438.[点击复制]
Yijian Liu,FANG Yan-jun,MA Bao-ping.Sliding-data-window-driven Bayesian-Gaussian neural network and its application to modeling of nonlinear system[J].Control Theory and Technology,2009,26(12):1435~1438.[点击复制]
滑动数据窗口驱动的贝叶斯-高斯网络及其在非线性系统辨识中的应用
Sliding-data-window-driven Bayesian-Gaussian neural network and its application to modeling of nonlinear system
摘要点击 2102  全文点击 957  投稿时间:2008-12-12  修订日期:2009-04-07
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DOI编号  10.7641/j.issn.1000-8152.2009.12.CCTA081382
  2009,26(12):1435-1438
中文关键词  滑动窗口  贝叶斯-高斯神经网络  非线性  辨识
英文关键词  sliding window  Bayesian-Gaussian neural network  nonlinear  identification
基金项目  国家自然科学基金资助项目(60704024, 60772107); 江苏省普通高校自然科学研究计划资助项目(07KJD510109).
作者单位E-mail
刘益剑* 南京师范大学 电气与自动化工程学院
武汉大学 自动化系 
liuyijian_2002@163.com 
方彦军 武汉大学 自动化系  
马宝萍 南京师范大学 电气与自动化工程学院  
中文摘要
      工业控制场合中, 需要获取非线性被控对象的结构特性, 而系统动态响应的数据直接从外部特征上反映了非线性系统结构关系. 为了充分利用非线性动态系统响应过程中的数据, 本文提出了一种基于滑动数据窗口(sliding data window)的贝叶斯-高斯神经网络(SW-BGNN)模型. 该模型将数据融合于网络模型结构中, 借助于贝叶斯推理和高斯假设, 利用滑动窗口数据, 实现非线性动态系统的辨识和预测. 整个SW-BGNN本身需要确定的参数很少, 因此运算的时间很短, 适合于非线性动态系统的在线辨识. 将SW-BGNN应用于几个非线性动态系统的辨识和预测, 仿真试验结果表明了SW-BGNN模型的有效性.
英文摘要
      In industrial control, the structure of the nonlinear dynamic system is determined by using the dynamic data of the controlled object. In order to make full use of the data obtained from the dynamic response process of the nonlinear dynamic system, a novel Bayesian-Gaussian neural network based on sliding-window(SW--BGNN) is proposed which combines the Bayesian reasoning formula with the Gaussian assumption. Based on the data in the sliding window, the operation process of SW--BGNN reasonably predicts the output of the nonlinear dynamic system in terms of a small number of parameters of the SW--BGNN. The SW--BGNN has limited computation time which makes it suitable to onlinear identification applications. Examples of identification and prediction of nonlinear dynamic system are presented. Simulation results show the effectiveness of the SW--BGNN method.