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Regular papers

Data-driven optimal PID type ILC for a class of nonlinear batch process

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Pages 263-276 | Received 09 Nov 2019, Accepted 13 Sep 2020, Published online: 01 Oct 2020
 

Abstract

The paper presents model-free proportional–integral–derivative (PID) type iterative learning control (ILC) approach for the nonlinear batch process. The dynamic linearisation method is considered, which uses the input-output (I/O) measurements to update the model at each iteration. Based on the newly updated model and error information of the previous iteration, optimal PID gains are updated iteratively. The quadratic performance index is employed to optimise the parameters of the PID controller, and then an optimal PID type data-driven iterative learning control (DDILC) scheme is established for nonlinear batch process. The convergence analysis of optimal PID type DDILC is also discussed which can be enhanced by the proper choice of penalty matrices. Simulation examples are also given to demonstrate the effectiveness of the proposed scheme.

Acknowledgements

The first author is thankful to the China Scholarship Council (CSC) for providing finical support for his Ph.D. studies at Dalian University of Technology, China.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This work is supported by the High-tech Research and Development Program of China (2014AA041802).

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