Model-free adaptive control for MEA-based post-combustion carbon capture processes

Ziang Li, Zhengtao Ding, Meihong Wang, Eni Oko

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    Abstract

    For the flexible operation of mono-ethanol-amine-based post-combustion carbon capture processes, recent studies concentrate on model-based protocols which require underline model parameters of carbon capture processes for controller design. In this paper, a novel application of the model-free adaptive control algorithm is proposed that only uses measured input-output data for carbon capture processes. Compared with proportional-integral control, the stability of the closed-loop system can be easily guaranteed by increasing a stabilizing parameter. By updating the pseudo-partial derivative vector to estimate a dynamic model of the controlled plant on-line, this new protocol is robust to plant uncertainties. Compared with model predictive control, tuning tests of the protocol can be conducted on-line without non-trivial repetitive off-line sensitivity or identification tests. Performances of the model-free adaptive control are demonstrated within a neural network carbon capture plant model, identified and validated with data generated by a first-principle carbon capture model.
    Original languageEnglish
    Pages (from-to)637-643
    Number of pages7
    JournalFuel
    Volume224
    Early online date30 Mar 2018
    DOIs
    Publication statusPublished - 15 Jul 2018

    Keywords

    • Post-combustion carbon capture
    • Process control
    • Model-free adaptive control
    • System identication
    • Neural networks

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