
CLC number: TP273
On-line Access: 2024-08-27
Received: 2023-10-17
Revision Accepted: 2024-05-08
Crosschecked: 2024-07-05
Cited: 0
Clicked: 3700
Feng LI, Hao YANG, Qingfeng CAO. Separation identification of a neural fuzzy Wiener–Hammerstein system using hybrid signals[J]. Frontiers of Information Technology & Electronic Engineering,in press.https://doi.org/10.1631/FITEE.2300058 @article{title="Separation identification of a neural fuzzy Wiener–Hammerstein system using hybrid signals", %0 Journal Article TY - JOUR
基于混合信号的神经模糊Wiener-Hammerstein系统辨识1江苏理工学院电气信息工程学院,中国常州市,213001 2扬州大学电气与能源动力工程学院,中国扬州市,225127 摘要:提出一种基于混合信号的神经模糊Wiener-Hammerstein(W-H)系统分离辨识策略。W-H系统由两个线性动态模块和一个非线性静态模块组成。静态非线性模块利用神经模糊网络(NFN)建模,两个线性动态模块分别利用自回归外生(ARX)模型和自回归(AR)模型建模。当系统输入为高斯信号时,利用相关分析技术解耦两个线性动态模块的辨识与非线性模块辨识。首先,基于高斯信号的输入和输出,利用相关分析技术辨识输入线性模块和输出线性模块,解决了W-H系统中间变量信息无法测量的问题。然后,采用零极点匹配方法分离两个线性模块的参数。此外,基于随机信号的输入和输出,利用递归最小二乘法识别非线性模块,避免输出噪声的影响。数值仿真和非线性过程仿真证明了所提辨识技术的可行性。仿真结果表明,所提策略可以获得比现有辨识算法更高的辨识精度。 关键词组: Darkslateblue:Affiliate; Royal Blue:Author; Turquoise:Article
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