迭代学习控制
先验与后验
控制理论(社会学)
非线性系统
计算机科学
残余物
线性化
观察员(物理)
趋同(经济学)
迭代最近点
数学优化
算法
人工智能
数学
控制(管理)
点云
哲学
物理
认识论
量子力学
经济
经济增长
作者
Naseem Ahmad,Shoulin Hao,Tao Liu,Yangmin Gong,Qingguo Wang
标识
DOI:10.1016/j.isatra.2023.12.044
摘要
This paper proposes an extended state observer (ESO) based data-driven set-point learning control (DDSPLC) scheme for a class of nonlinear batch processes with a priori P-type feedback control structure subject to nonrepetitive uncertainties, by only using the process input and output data available in practice. Firstly, the unknown process dynamics is equivalently transformed into an iterative dynamic linearization data model (IDLDM) with a residual term. A radial basis function neural network is adopted to estimate the pseudo partial derivative information related to IDLDM, and meanwhile, a data-driven iterative ESO is constructed to estimate the unknown residual term along the batch direction. Then, an adaptive set-point learning control law is designed to merely regulate the set-point command of the closed-loop control structure for realizing batch optimization. Robust convergence of the output tracking error along the batch direction is rigorously analyzed by using the contraction mapping approach and mathematical induction. Finally, two illustrative examples from the literature are used to validate the effectiveness and advantage of the proposed design.
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