Adaptive Machine Learning for Cooperative Manipulators
Farhad Aghili

TL;DR
This paper presents an adaptive machine learning approach for self-tuning control of cooperative manipulators with uncertain kinematics, enabling accurate motion tracking without high-precision sensors.
Contribution
It introduces a novel online kinematic parameter estimation method using cascaded estimators for cooperative manipulators, ensuring stability and improved tracking accuracy.
Findings
Significant reduction in tracking error with adaptive control.
Stable convergence of the estimator/controller system under certain conditions.
Enhanced calibration of manipulator kinematics without high-precision sensing.
Abstract
The problem of self-tuning control of cooperative manipulators forming a closed kinematic chain in the presence of an inaccurate kinematics model is addressed using adaptive machine learning. The kinematic parameters pertaining to the relative position/orientation uncertainties of the interconnected manipulators are updated online by two cascaded estimators in order to tune a cooperative controller for achieving accurate motion tracking with minimum-norm actuation force. This technique permits accurate calibration of the relative kinematics of the involved manipulators without needing high precision end-point sensing or force measurements, and hence it is economically justified. Investigating the stability of the entire real-time estimator/controller system reveals that the convergence and stability of the adaptive control process can be ensured if i) the direction of the angular…
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