Kernel Regularization Based Volterra Series Identification Method for Time-delayed Nonlinear Systems with Unknown Structure

被引:0
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作者
Yanxin Zhang
Zili Zhang
Jing Chen
Manfeng Hu
机构
[1] Jiangnan University,School of Science
关键词
Adam optimization; kernel-based method; nonlinear system; self-organized maps; time-delay; Volterra series;
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摘要
This paper develops a kernel regularization based Adam algorithm for nonlinear systems with unknown structure and time-delay by using self-organized maps. Based on the redundant rule method, a model pool constituted of several Volterra series is constructed which contains the true time-delayed model. Then, the Adam algorithm combining a self-organized maps technique is applied to iteratively estimate the time-delay and parameters. Furthermore, a kernel regularization method is introduced to deal with the curse of dimensionality, and by which a more simple Volterra model can be obtained. Experimental results show the effectiveness of proposed algorithm in estimating time-delay and parameters.
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页码:1465 / 1474
页数:9
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