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An Anticipatory Terminal Iterative Learning Control Approach with Applications to Constrained Batch Processes 被引量:4

An Anticipatory Terminal Iterative Learning Control Approach with Applications to Constrained Batch Processes
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摘要 This work presents an anticipatory terminal iterative learning control scheme for a class of batch processes, where only the final system output is measurable and the control input is constant in each operations. The proposed approach works well with input constraints provided that the desired control input with respect to the desired trajectory is within the saturation bound. The tracking error convergence is established with rigorous mathematical analysis. Simulation results are provided to show the effectiveness of the proposed approach. This work presents an anticipatory terminal iterative learning control scheme for a class of batch proc- esses, where only the final system output is measurable and the control input is constant in each operations. The propgsed approach works well with input constraints provided that the desired control input with respect to the desired trajectory is within the samratiorl bound. The tracking error convergence is established with rigorous mathe- matical analysis. Simulation results .are provided to showthe effectiveness, of the proposed approach.
出处 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2013年第3期271-275,共5页 中国化学工程学报(英文版)
基金 Supported by the National Natural Science Foundation of China (60974040, 61120106009), the Research Award Foundation for the Excellent Youth Scientists of Shandong Province of China (BS2011DX010), and the High School Science & Technol- ogy Fund Planning Project of Shandong Province of China (J 10LG32).
关键词 迭代学习控制 终端约束 批处理 应用 控制输入 控制方案 输入约束 跟踪误差 "terminal iterative learning control, batch-to-batch processes, input saturation, convergence analysis
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