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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Time waveform replication for electro-hydraulic shaking table incorporating off-line iterative learning control and modified internal model control
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Time waveform replication for electro-hydraulic shaking table incorporating off-line iterative learning control and modified internal model control

机译:包含离线迭代学习控制和改进的内部模型控制的电动液压振动台的时间波形复制

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摘要

In this article, a combined control strategy incorporating off-line iterative learning control and modified internal model control is proposed for improving the time waveform replication performance of electro-hydraulic shaking table. To reduce the modeling error between the estimated inverse model and the actual system, a modified internal model control strategy is first utilized to cope with the modeling error by back absorbing the nominal model and the inverse controller into a direct through block. Due to the non-minimum phase property of the nominal model estimated by the recursive extended least square algorithm, the zero magnitude error tracking controller is exploited to obtain a stable inverse controller. Then, an off-line iterative learning control strategy involving a real-time feedback controller is conducted on the compensated system to further enhance the replication performance. Therefore, the proposed algorithm combines the merits of modified internal model control and off-line iterative learning control and simplifies the conventional iterative control process by eliminating consecutive computation of Fourier and inverse Fourier transforms. The combined strategy is first programmed in MATLAB/Simulink and then compiled to a real-time personal computer with xPC target technology for implementation. Experiment results demonstrate that a better tracking accuracy and a faster convergence rate are achieved with the proposed algorithm than conventional pure iterative learning controller.
机译:本文提出了一种结合离线迭代学习控制和改进内模控制的组合控制策略,以提高电动液压振动台的时间波形复制性能。为了减少估计的逆模型和实际系统之间的建模误差,首先通过将标称模型和逆控制器吸收到直通模块中,首先使用一种改进的内部模型控制策略来应对建模误差。由于递归扩展最小二乘算法估计的标称模型的非最小相位特性,利用零幅度误差跟踪控制器来获得稳定的逆控制器。然后,在补偿系统上进行包含实时反馈控制器的离线迭代学习控制策略,以进一步提高复制性能。因此,所提出的算法结合了改进的内部模型控制和离线迭代学习控制的优点,并通过消除傅立叶变换和傅立叶逆变换的连续计算,简化了传统的迭代控制过程。组合后的策略首先在MATLAB / Simulink中编程,然后编译为带有xPC目标技术的实时个人计算机以实现。实验结果表明,与传统的纯迭代学习控制器相比,该算法具有更好的跟踪精度和更快的收敛速度。

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