Minimal operation region prediction for networked control robotic manipulators subject to time‐varying delays and disturbances

Author:

Huynh Van Thanh1ORCID,Lim Chee Peng2,Najdovski Zoran2,Huong Dinh Cong3,Trinh Hieu1

Affiliation:

1. School of Engineering Deakin University Waurn Ponds VIC Australia

2. Institute for Intelligent Systems Research and Innovation Deakin University Waurn Ponds VIC Australia

3. Faculty of Automotive Engineering Technology Industrial University of Ho Chi Minh City Ho Chi Minh City Vietnam

Abstract

AbstractDue to the disturbances and varying latency, a teleoperated robotic manipulator might not comply with the master control commands. Although prior studies on minimising the impact of network latency and disturbances on teleoperated robots were conducted, there has been very little research on the prediction of minimal operation regions of robotic arms, especially in the worst‐case scenarios when the disturbances and time delays still prevail even after impact minimisation. This study investigates the problem and proposes a novel solution to predicting minimal operation regions of networked control robotic manipulators. The proposed method can be used to forecast safe operation regions in which the manipulators will certainly enter and exclude regions that the robots will never penetrate. Leveraging on a Lyanonov Krasovskii criterion, the method performs region prediction by establishing minimal reachable bounding sets of the nonlinear, perturbed robotic arm's state vectors guided via a time‐varying delay‐dominant network. Though predominantly nonlinear, the entire prediction process is formulated as a tractable Linear Matrix Inequality (LMI) optimisation problem, which can be solved efficiently and effectively. Efficacy of the proposed method is validated with simulations where a simulated robotic arm is distorted with time‐varying delays and disturbances.

Funder

Telematics Trust

Publisher

Institution of Engineering and Technology (IET)

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