Development of a Deep Learning-Driven Control Framework for Exoskeleton Robots
Sk Hasan

TL;DR
This paper presents a deep learning-based control framework for exoskeleton robots that achieves real-time performance and accurate trajectory tracking with reduced computational load.
Contribution
A novel parallel structured deep neural network control scheme for high degree of freedom exoskeletons, combining deep learning with traditional control for efficiency and robustness.
Findings
Accurate trajectory tracking comparable to conventional controllers.
Reduced computational burden during real-time control.
Stable and robust performance demonstrated through analysis and simulations.
Abstract
The purpose of this study is to develop a computationally efficient deep learning based control framework for high degree of freedom exoskeleton robots to address the real time computational limitations associated with conventional model based control. A parallel structured deep neural network was designed for a seven degree of freedom human lower extremity exoskeleton robot. The network consists of four layers with 49 densely connected neurons and was trained using physics based data generated from the analytical dynamic model. During real time implementation, the trained neural network predicts joint torque commands required for trajectory tracking, while a proportional derivative controller compensates for residual prediction errors. Stability of the proposed control scheme was analytically established, and robustness to parameter variations was evaluated using analysis of variance.…
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Taxonomy
TopicsProsthetics and Rehabilitation Robotics · Stroke Rehabilitation and Recovery · Muscle activation and electromyography studies
