Robust Neural Dynamics Method for Redundant Robot Manipulator Control With Physical Constraints

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS(2023)

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摘要
Redundant robot manipulators play a significant role in modern industry. In this article, we propose a solution scheme to the trajectory tracking problem of the redundant robot manipulator with physical constraints through the Zhang neural dynamics method. Such problem is integrated into a time-varying system consisting of time-varying nonlinear equation (TVNE) and time-varying linear inequality (TVLI) and solved online by the varying-parameter Zhang neural dynamics (VPZND) model. It is ensured that the redundant robot manipulator can still perform the tracking task perfectly under the coexistence of time-varying bounded noise and physical constraints. Theoretical analysis proves that this VPZND model also has an explicit fixed convergence time. Numerical experiments confirm the feasibility of our VPZND model for TVLI. The trajectory tracking problem of the redundant robot manipulator with six or three degrees of freedom under the dual influence of physical constraints and noise is perfectly solved by the VPZND model, which is enough to verify its practical value.
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关键词
Robots,Manipulators,Mathematical models,Manipulator dynamics,Service robots,Numerical models,Kinematics,Error analysis,Error function,physical constraints,redundant robot manipulator control,varying parameter
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