Abstract:
This research addresses the challenges faced by amputees due to missing limbs, which
hinder them from performing daily tasks. Prostheses are used as replacements for the
lost limb and it is difficult for them to learn to adapt. Therefore, the mobility and gait
posture are disturbed. These factors lead to fatigue, and the amputees are at high risk
of falling. The goal was to design a bio-inspired framework that can adapt automatically to compensate for lost movement of amputees using passive knee prosthesis. The
framework thoroughly examines the bio-mechanics of human movement, gait analysis, use of prosthesis with damping control mechanism, and a data acquisition system
with IMU sensors, electro-goniometer, EMG, and tactile sensors. We performed an
empirical analysis of the functional roles of the human brain (HBN) and machine brain
(MBN) in daily activities.
We applied the framework and tested it on the patient in the real-world to optimize
the movement with the prosthetic leg. We collected the gait data for able-bodied
persons exhibiting periodic and smooth curves of gait data termed natural gait. The
correction factor "h(N)" of our mathematical model vanishes after ’03’ gait cycles,
and the movement is optimized with smoothed patterns. The framework efficiently
controlled the amputee’s knee flexion curve within the normal range of motion (64◦±6).
our deep learning architecture obtained a good accuracy of the model to be 94.44% and
With 93% testing accuracy for the amputee, for gait phase detection. Our empirical
study showed a functional distribution of 70% HBN involvement and 30% MBN (the
machine’s brain) input to routine life activities.
The success rate was 95% to maintain balance and fall prevention using the proposed strategies. It takes the signal from the rectus femoris muscles using an EMG
sensor when there is a danger of falling. The hard tone of muscles maximizes the
damping through the gear design mechanism, which in turn provides natural locking,
and the amputee stops the movement. The suggested framework showed enhanced
mobility, decreased hip hikes and tiredness, control of normal knee flexion, and less
risk of falling. This study offers a viable way to improve the functionality of passive
knee prosthesis, significantly improving the quality of life for amputees.