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首页> 外文期刊>International Journal of Adaptive Control and Signal Processing >Iterative learning control for a class of non-affine-in-input processes in Hilbert space
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Iterative learning control for a class of non-affine-in-input processes in Hilbert space

机译:Hilbert空间中一类非输入仿射过程的迭代学习控制

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摘要

In this paper, iterative learning control (ILC) of a class of non-affine-in-input processes is considered in Hilbert space, where the plant operators are quite general in the sense that they could be static or dynamic, differentiable or non-differentiable, continuous-time or discrete-time, and so forth. The control problem is first transformed to a problem of solving global implicit function to ensure the uniqueness of desired control input. Then, two contraction mapping-based ILC schemes are proposed in terms of the continuous differentiability of process model, where the learning convergence condition is derived through rigorous analysis. The proposed ILC schemes make full use of the process repetition, deal with system uncertainties easily, and are effective to infinite-dimensional or distributed parameter systems. In the end, the learning controller is applied to the boundary output control of a class of anaerobic digestion process for wastewater treatment. The control efficacy is verified by simulation.
机译:在本文中,在希尔伯特空间中考虑了一类非输入仿射过程的迭代学习控制(ILC),在这种情况下,植物算子可以说是静态的或动态的,可微分的或非可算的。微分,连续时间或离散时间等。首先将控制问题转换为解决全局隐式函数的问题,以确保所需控制输入的唯一性。然后,针对过程模型的连续可微性,提出了两种基于压缩映射的ILC方案,通过严格的分析得出了学习收敛的条件。所提出的ILC方案充分利用了过程重复性,易于处理系统的不确定性,并且对无限维或分布式参数系统有效。最后,将学习控制器应用于一类厌氧消化工艺废水的边界输出控制。通过仿真验证了控制效果。

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