The online learning architecture with edge computing for high-level
control for assisting patients
- URL: http://arxiv.org/abs/2309.05130v1
- Date: Sun, 10 Sep 2023 20:30:03 GMT
- Title: The online learning architecture with edge computing for high-level
control for assisting patients
- Authors: Yue Shi, Yihui Zhao
- Abstract summary: The prevalence of mobility impairments due to conditions such as spinal cord injuries, strokes, and degenerative diseases is on the rise globally.
Lower-limb exoskeletons have been increasingly recognized as a viable solution for enhancing mobility and rehabilitation for individuals with such impairments.
Existing exoskeleton control systems often suffer from limitations such as latency, lack of adaptability, and computational inefficiency.
This paper introduces a novel online adversarial learning architecture integrated with edge computing for high-level lower-limb exoskeleton control.
- Score: 3.1084001733555584
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The prevalence of mobility impairments due to conditions such as spinal cord
injuries, strokes, and degenerative diseases is on the rise globally.
Lower-limb exoskeletons have been increasingly recognized as a viable solution
for enhancing mobility and rehabilitation for individuals with such
impairments. However, existing exoskeleton control systems often suffer from
limitations such as latency, lack of adaptability, and computational
inefficiency. To address these challenges, this paper introduces a novel online
adversarial learning architecture integrated with edge computing for high-level
lower-limb exoskeleton control. In the proposed architecture, sensor data from
the user is processed in real-time through edge computing nodes, which then
interact with an online adversarial learning model. This model adapts to the
user's specific needs and controls the exoskeleton with minimal latency.
Experimental evaluations demonstrate significant improvements in control
accuracy and adaptability, as well as enhanced quality-of-service (QoS)
metrics. These findings indicate that the integration of online adversarial
learning with edge computing offers a robust and efficient approach for the
next generation of lower-limb exoskeleton control systems.
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