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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >A Novel Estimation Algorithm Based on Data and Low-Order Models for Virtual Unmodeled Dynamics
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A Novel Estimation Algorithm Based on Data and Low-Order Models for Virtual Unmodeled Dynamics

机译:基于数据和低阶模型的虚拟无模型动力学估计算法

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摘要

In this paper, the challenging issue of estimating virtual unmodeled dynamics is addressed. A novel estimation algorithm based on historical data and the output of low-order approximation models for virtual un-modeled dynamics is presented. In particular, the virtual un-modeled dynamics are decomposed into known and unknown parts, where only the unknown part is to be estimated. The method effectively avoids the need to use the unknown control input directly, and enables the estimation of the un-modeled dynamics with a relatively simple algorithm. Moreover, it is shown that the proposed algorithm overcomes the difficulty in obtaining the control solutions caused by the fact that the controller input is embedded in un-modeled dynamics. Finally, simulation studies are presented to demonstrate the effectiveness of the proposed method.
机译:在本文中,解决了估计虚拟未建模动力学的挑战性问题。提出了一种基于历史数据和低阶近似模型输出的虚拟未建模动力学估计算法。特别地,虚拟的未建模动力学被分解为已知和未知部分,其中仅要估计未知部分。该方法有效地避免了直接使用未知控制输入的需要,并且能够通过相对简单的算法来估计未建模的动力学。此外,表明所提出的算法克服了由于控制器输入被嵌入到未建模的动力学中而导致的获得控制解的困难。最后,通过仿真研究证明了该方法的有效性。

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