Neural-Learning Trajectory Tracking Control of Flexible-Joint Robot Manipulators with Unknown Dynamics
Shuyang Chen, John T. Wen

TL;DR
This paper introduces neural network-based methods to improve trajectory tracking in flexible-joint robots by approximating forward and inverse dynamics, demonstrating significant performance enhancements on a Baxter robot.
Contribution
The paper presents a novel application of recurrent neural networks to model robot dynamics and inverse dynamics, enabling improved control of flexible-joint manipulators with unknown nonlinearities.
Findings
Both approaches significantly improve tracking accuracy.
RNN-based models effectively capture noncausal dynamics.
Inverse dynamics approach enhances teleoperation precision.
Abstract
Fast and precise motion control is important for industrial robots in manufacturing applications. However, some collaborative robots sacrifice precision for safety, particular for high motion speed. The performance degradation is caused by the inability of the joint servo controller to address the uncertain nonlinear dynamics of the robot arm, e.g., due to joint flexibility. We consider two approaches to improve the trajectory tracking performance through feedforward compensation. The first approach uses iterative learning control, with the gradient-based iterative update generated from the robot forward dynamics model. The second approach uses dynamic inversion to directly compensate for the robot forward dynamics. If the forward dynamics is strictly proper or is non-minimum-phase (e.g., due to time delays), its stable inverse would be non-causal. Both approaches require robot…
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Taxonomy
TopicsIterative Learning Control Systems · Soft Robotics and Applications · Piezoelectric Actuators and Control
