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Batch-to-Batch Iterative Learning Control Based on Kernel Independent Component Regression Model

机译:基于核独立分量回归模型的批到批迭代学习控制

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A model-based batch-to-batch iterative learning control (ILC) strategy for batch processes is proposed in this paper. The data-driven model of batch process is developed using kernel independent component regression (KICR) method when the operating data of batch process have a non-Gaussian distribution. The ILC algorithm is derived based on the linearization of the KICR model around the control profile. Applications to a simulated nonlinear batch reactor demonstrate that the proposed ILC strategy can improve process performance from batch to batch when the operating data of batch process follow non-Gaussian distribution. Comparisons between KICR model based and support vector regression (SVR) model based ILC strategies are also made in the simulation. The results show the KICR model based ILC has better performance.
机译:提出了一种基于模型的批处理批间迭代学习控制策略。当批处理的操作数据具有非高斯分布时,使用核独立成分回归(KICR)方法开发批处理的数据驱动模型。基于围绕控制曲线的KICR模型的线性化,可以得出ILC算法。在模拟非线性间歇反应器上的应用表明,当间歇过程的操作数据遵循非高斯分布时,所提出的ILC策略可以提高批次之间的过程性能。在仿真中还比较了基于KICR模型和基于支持向量回归(SVR)模型的ILC策略。结果表明,基于KICR模型的ILC具有更好的性能。

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