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Feedback-assisted iterative learning control based on a nonlinear fuzzy model

机译:基于非线性模糊模型的反馈辅助迭代学习控制

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As a feedforward control strategy, iterative learning control (ILC) is used to track a pre-defined reference and reject repetitive disturbances iteratively, but it is incapable of compensating for non-repetitive disturbances. Thus, ILC is often combined with a well-designed feedback controller. Considering nonlinear process, this paper presents an integrated ILC and on-line model predictive (MPC) strategy for wide range-operation, which base on a fuzzy model. In the overall control law, the feedforward ILC contributes the majority of the control signal, while the feedback MPC is meant to be supplementary to regulate the control signal and reject disturbances. The performance of the feedback-assisted ILC is illustrated by a steam-boiler system.
机译:作为前馈控制策略,迭代学习控制(ILC)用于跟踪预定义的参考并迭代地拒绝重复性干扰,但是它无法补偿非重复性干扰。因此,ILC通常与设计良好的反馈控制器结合使用。考虑到非线性过程,本文提出了一种基于模糊模型的集成式ILC和在线模型预测(MPC)策略,用于大范围操作。在总体控制律中,前馈ILC贡献了大部分控制信号,而反馈MPC则是对控制信号和抑制干扰的补充。蒸汽锅炉系统说明了反馈辅助ILC的性能。

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