2022
DOI: 10.3390/math10132304
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The Convergence of Data-Driven Optimal Iterative Learning Control for Linear Multi-Phase Batch Processes

Abstract: For multi-phase batch processes with different dimensions whose dynamics can be described as a linear discrete-time-invariant system in each phase, a data-driven optimal ILC was explored using multi-operation input and output data that subordinate a tracking performance criterion. An iterative learning identification was constructed to estimate the system Markov parameters by minimizing the evaluation criterion that consists of the residual of the real outputs from the predicted outputs and two adjacent identi… Show more

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