International Journal of Control, Automation, and Systems 2024; 22(8): 2504-2512
https://doi.org/10.1007/s12555-023-0117-0
© The International Journal of Control, Automation, and Systems
This article presents a data-driven control application to robot manipulation for implementing the timedelayed control (TDC) algorithm. TDC scheme uses the previous information to cancel out all the dynamics except the inertial torque in robot manipulators. The accuracy of estimating the inertia matrix plays an important role in control performance as well as the stability of TDC. Necessary information for the time-delayed control is inertia and acceleration signals. Since selecting the constant inertia matrix is simple but concerned with the poor performance, better estimation is required. Based on the input and output data of a robot manipulator, necessary models are obtained by a recursive least squares (RLS) algorithm and those models are used for estimating acceleration signals by designing a state observer (SOB). Here the models of a robot arm are decoupled, linearized, and identified by RLS algorithm and the joint acceleration signals are identified by a state observer in on-line fashion. Combining RLS, SOB, and TDC yields RST scheme for a robot manipulator to improve the tracking control performance by providing solutions for TDC problems. Tracking control performances of a mobile manipulator by the RST scheme are empirically tested.
Keywords Data driven control, recursive least squares, robot manipulators, stae observer, time-delayed control.
International Journal of Control, Automation, and Systems 2024; 22(8): 2504-2512
Published online August 1, 2024 https://doi.org/10.1007/s12555-023-0117-0
Copyright © The International Journal of Control, Automation, and Systems.
Sang Deok Lee and Seul Jung*
Chungnam National University
This article presents a data-driven control application to robot manipulation for implementing the timedelayed control (TDC) algorithm. TDC scheme uses the previous information to cancel out all the dynamics except the inertial torque in robot manipulators. The accuracy of estimating the inertia matrix plays an important role in control performance as well as the stability of TDC. Necessary information for the time-delayed control is inertia and acceleration signals. Since selecting the constant inertia matrix is simple but concerned with the poor performance, better estimation is required. Based on the input and output data of a robot manipulator, necessary models are obtained by a recursive least squares (RLS) algorithm and those models are used for estimating acceleration signals by designing a state observer (SOB). Here the models of a robot arm are decoupled, linearized, and identified by RLS algorithm and the joint acceleration signals are identified by a state observer in on-line fashion. Combining RLS, SOB, and TDC yields RST scheme for a robot manipulator to improve the tracking control performance by providing solutions for TDC problems. Tracking control performances of a mobile manipulator by the RST scheme are empirically tested.
Keywords: Data driven control, recursive least squares, robot manipulators, stae observer, time-delayed control.
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