EI / SCOPUS / CSCD 收录

中文核心期刊

曾成, 伍萍辉, 张奇志. 一种改善鲁棒性的噪声有源控制自适应神经网络方法[J]. 声学学报, 2003, 28(1): 79-85. DOI: 10.15949/j.cnki.0371-0025.2003.01.015
引用本文: 曾成, 伍萍辉, 张奇志. 一种改善鲁棒性的噪声有源控制自适应神经网络方法[J]. 声学学报, 2003, 28(1): 79-85. DOI: 10.15949/j.cnki.0371-0025.2003.01.015
ZENG Cheng, ZHANG Qizhi, WU Pinghui. A method of active noise control using adaptive neural networks with improved robustness[J]. ACTA ACUSTICA, 2003, 28(1): 79-85. DOI: 10.15949/j.cnki.0371-0025.2003.01.015
Citation: ZENG Cheng, ZHANG Qizhi, WU Pinghui. A method of active noise control using adaptive neural networks with improved robustness[J]. ACTA ACUSTICA, 2003, 28(1): 79-85. DOI: 10.15949/j.cnki.0371-0025.2003.01.015

一种改善鲁棒性的噪声有源控制自适应神经网络方法

A method of active noise control using adaptive neural networks with improved robustness

  • 摘要: 控制对象参数的时变是噪声有源控制付诸实际应用所面临的主要问题之,传统的控制方法通常不考虑对象参数时变。本文首先引入一个能方便进行在线自适应的扩展控制对象自适应神经网络模型,在此基础上提出一种噪声有源控制的自适应神经网络方法。通过在控制过程中分别对控制网络和模型网络进行自适应,解决了控制对象参数的时变问题,显著改善了整个系统的鲁棒性。实验结果表明,对于控制对象参数的突变扰动,该方法具有良好的鲁棒稳定性。

     

    Abstract: The time-variance of plant parameters, which is not considered usually by traditional control methods, is one of the main problems in the application of active noise control. This paper firstly introduces an extended plant adaptive neural network model which can be on-line adapted conveniently, then presents a method of active noise control using adaptive neural networks. With separately adapting of the control network and the model network in control, the problem of time-variance of plant parameters is solved, and the robustness of whole system is improved obviously. It is showed by experimental results that this method has a good robust stability for abrupt disturbances of the plant.

     

/

返回文章
返回