A new data-driven sliding mode learning control for discrete-time MIMO linear systems
by Lei Cao; Shouli Gao; Dongya Zhao
International Journal of Industrial and Systems Engineering (IJISE), Vol. 42, No. 2, 2022

Abstract: A new data-driven sliding mode learning control (DDSMLC) is designed for a class of discrete-time MIMO linear systems in the presence of uncertainties. In this scheme, a new control is designed to enforce the states to reach and remain on the sliding surface. In addition, a recursive algorithm using system measured data is adopted to estimate the unknown system parameters, so a complete data-driven sliding mode control is designed, which does not need to know any parameters in the system. Moreover, the chattering is reduced because there is no non-smooth control used in DDSMLC. After the strict stability analysis, the effectiveness of DDSMLC is validated by MATLAB simulations.

Online publication date: Mon, 10-Oct-2022

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