Velocity Control of a Stephenson III Six-bar Linkage-based Gait Rehabilitation Robot using Deep Reinforcement Learning

Akim Kapsalyamov, Nicholas Brown, Roland GOECKE, Prashant Jamwal, Shahid HUSSAIN

Research output: Contribution to journalArticlepeer-review

1 Citation (Scopus)

Abstract

Lower limb rehabilitation robots can help to improve the locomotor capabilities of patients experiencing gait impairments and help medical workers by reducing strain on them. However, since commercially available exoskeletons are expensive and there is a lack of number of physiotherapists many patients are still not able to get proper rehabilitation training. The closed-loop linkage mechanisms have recently drawn much attention in the realization of gait rehabilitation robots. Such mechanisms are affordable and capable of providing suitable trajectories for gait training therapy. In this work, we have proposed a fully operational one degree-of-freedom mechanism which can generate complex naturalistic lower limb trajectories. Although in theory, it is assumed that the constant speed applied at the input crank is sufficient to control the system, in reality, the external forces exerted by human legs and the inertia of the links can greatly alter the rotational velocity at the crank, which may negatively affect the training process. Therefore, we have explored the performance of a deep reinforcement learning-based control algorithm designed to regulate the speed of the input crank to reach satisfactory performance needed for gait rehabilitation training. Experimental evaluations with healthy human subjects were conducted to demonstrate that the mechanism is capable of directing lower limbs on naturalistic gait trajectories with a required walking speed.
Original languageEnglish
Article numbere92763
Pages (from-to)1-12
Number of pages12
JournalNeural Computing and Applications
DOIs
Publication statusPublished - Jan 2025

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