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Iterative Learning Control Integrated with Model Predictive Control for Real-Time Disturbance Rejection of Batch Processes

机译:迭代学习控制与模型预测控制相集成,用于批处理过程的实时干扰消除

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In the present paper, iterative learning control (ILC) is integrated with a model predictive control (MPC) technique to reject real-time disturbances. The proposed scheme is called iterative learning model predictive control (ILMPC). ILC is an effective control technique for batch processes, but it is not a real-time feedback controller. Thus, it should be combined with MPC for real-time disturbance rejection. The existing ILMPC techniques make the error converge to zero. However, if the error converges to zero, an impractical input trajectory may be calculated. We use a generalized objective function to independently tune weighting factors of manipulated variable change with respect to both the time index and batch horizons. If the generalized objective function is used, output error converges to non-zero values. We provide convergence analysis for both cases of zero convergence and non-zero convergence.
机译:在本文中,迭代学习控制(ILC)与模型预测控制(MPC)技术集成在一起以拒绝实时干扰。所提出的方案称为迭代学习模型预测控制(ILMPC)。 ILC是用于批处理的有效控制技术,但它不是实时反馈控制器。因此,应将其与MPC结合使用以实时排除干扰。现有的ILMPC技术使误差收敛到零。但是,如果误差收敛到零,则可能会计算出不切实际的输入轨迹。我们使用广义目标函数来独立地调整相对于时间指数和批次范围的可控变量变化的加权因子。如果使用广义目标函数,则输出误差收敛到非零值。我们提供零收敛和非零收敛两种情况的收敛分析。

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