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Sliding mode observer-based model predictive tracking control for Mecanum-wheeled mobile robot. | LitMetric

AI Article Synopsis

  • The paper introduces a new method called Adaptive Variable Power Sliding Mode Observer-based Model Predictive Control (AVPSMO-MPC) to improve trajectory tracking for Mecanum-wheeled mobile robots (MWMR) facing external disturbances and model uncertainties.
  • Initially, a model predictive controller is developed to handle tracking under ideal conditions, reformulating the problem into a constrained quadratic programming (QP) format for real-time optimal control inputs.
  • To enhance robustness against disturbances, an AVPSMO is integrated as a compensation controller, with its stability proven through Lyapunov theory, ultimately leading to effective and reliable tracking control while adhering to physical constraints.

Article Abstract

This paper proposes a novel adaptive variable power sliding mode observer-based model predictive control (AVPSMO-MPC) method for the trajectory tracking of a Mecanum-wheeled mobile robot (MWMR) with external disturbances and model uncertainties. First, in the absence of disturbances and uncertainties, a model predictive controller that considers various physical constraints is designed based on the nominal dynamics model of the MWMR, which can transform the tracking problem into a constrained quadratic programming (QP) problem to solve the optimal control inputs online. Subsequently, to improve the anti-jamming ability of the MWMR, an AVPSMO is designed as a feedforward compensation controller to suppress the effects of external disturbances and model uncertainties during the actual motion of the MWMR, and the stability of the AVPSMO is proved via Lyapunov theory. The proposed AVPSMO-MPC method can achieve precise tracking control while ensuring that the constraints of MWMR are not violated in the presence of disturbances and uncertainties. Finally, comparative simulation cases are presented to demonstrate the effectiveness and robustness of the proposed method.

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Source
http://dx.doi.org/10.1016/j.isatra.2024.05.050DOI Listing

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