A voice activated bi-articular exosuit for upper limb assistance during lifting tasks

Humans are favoured to conventional robotics for some tasks in industry due to their increased dexterity and fine motor skills, however, performance of these tasks can result in injury to the user at a cost to both the user and the employer. In this paper we describe a lightweight, upper-limb exosui...

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Main Authors: Kim, Yongtae G., Little, Kieran, Noronha, Bernardo, Xiloyannis, Michele, Masia, Lorenzo, Accoto, Dino
Other Authors: Robotics Research Centre
Format: Article
Language:English
Published: 2022
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Online Access:https://hdl.handle.net/10356/159638
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1596382022-06-30T05:59:55Z A voice activated bi-articular exosuit for upper limb assistance during lifting tasks Kim, Yongtae G. Little, Kieran Noronha, Bernardo Xiloyannis, Michele Masia, Lorenzo Accoto, Dino Robotics Research Centre Engineering::Electrical and electronic engineering Exosuit Wearable Robot Humans are favoured to conventional robotics for some tasks in industry due to their increased dexterity and fine motor skills, however, performance of these tasks can result in injury to the user at a cost to both the user and the employer. In this paper we describe a lightweight, upper-limb exosuit intended to assist the user during lifting tasks (up to 10kg) and while operating power tools, which are common activities for industrial workers. The exosuit assists elbow and shoulder flexion for both arms and allows for passive movements in the transverse plane. To achieve the design criteria an underactuated mechanism has been developed, where a single motor is used to assist two degrees of freedom per arm. In the intended application, the hands are generally busy and cannot be used to provide inputs to the robot, therefore, a voice-activated control has been developed that allows the user to give voice commands to operate the exosuit. Experiments were performed on 5 healthy subjects to assess the change in Muscular Activation (MA), inferred through Electromyography (EMG) signals, during three tasks: i) lifting and releasing a load; ii) holding a position and iii) manipulating a tool. The results showed that the exosuit is capable of reducing EMG activity (between 24.6% and 64.6%) and the recognition rate (94.8%) of the voice recognition module was evaluated. This work was partially supported by the "Smart Exosuits for Human Augmentation in Industrial Working Environment" project funded by Parts Precision Technology (S) Pte Ltd (project definition: M4062147). 2022-06-30T05:59:55Z 2022-06-30T05:59:55Z 2020 Journal Article Kim, Y. G., Little, K., Noronha, B., Xiloyannis, M., Masia, L. & Accoto, D. (2020). A voice activated bi-articular exosuit for upper limb assistance during lifting tasks. Robotics and Computer-Integrated Manufacturing, 66, 101995-. https://dx.doi.org/10.1016/j.rcim.2020.101995 0736-5845 https://hdl.handle.net/10356/159638 10.1016/j.rcim.2020.101995 2-s2.0-85084597294 66 101995 en M4062147 Robotics and Computer-Integrated Manufacturing © 2020 Elsevier Ltd. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Electrical and electronic engineering
Exosuit
Wearable Robot
spellingShingle Engineering::Electrical and electronic engineering
Exosuit
Wearable Robot
Kim, Yongtae G.
Little, Kieran
Noronha, Bernardo
Xiloyannis, Michele
Masia, Lorenzo
Accoto, Dino
A voice activated bi-articular exosuit for upper limb assistance during lifting tasks
description Humans are favoured to conventional robotics for some tasks in industry due to their increased dexterity and fine motor skills, however, performance of these tasks can result in injury to the user at a cost to both the user and the employer. In this paper we describe a lightweight, upper-limb exosuit intended to assist the user during lifting tasks (up to 10kg) and while operating power tools, which are common activities for industrial workers. The exosuit assists elbow and shoulder flexion for both arms and allows for passive movements in the transverse plane. To achieve the design criteria an underactuated mechanism has been developed, where a single motor is used to assist two degrees of freedom per arm. In the intended application, the hands are generally busy and cannot be used to provide inputs to the robot, therefore, a voice-activated control has been developed that allows the user to give voice commands to operate the exosuit. Experiments were performed on 5 healthy subjects to assess the change in Muscular Activation (MA), inferred through Electromyography (EMG) signals, during three tasks: i) lifting and releasing a load; ii) holding a position and iii) manipulating a tool. The results showed that the exosuit is capable of reducing EMG activity (between 24.6% and 64.6%) and the recognition rate (94.8%) of the voice recognition module was evaluated.
author2 Robotics Research Centre
author_facet Robotics Research Centre
Kim, Yongtae G.
Little, Kieran
Noronha, Bernardo
Xiloyannis, Michele
Masia, Lorenzo
Accoto, Dino
format Article
author Kim, Yongtae G.
Little, Kieran
Noronha, Bernardo
Xiloyannis, Michele
Masia, Lorenzo
Accoto, Dino
author_sort Kim, Yongtae G.
title A voice activated bi-articular exosuit for upper limb assistance during lifting tasks
title_short A voice activated bi-articular exosuit for upper limb assistance during lifting tasks
title_full A voice activated bi-articular exosuit for upper limb assistance during lifting tasks
title_fullStr A voice activated bi-articular exosuit for upper limb assistance during lifting tasks
title_full_unstemmed A voice activated bi-articular exosuit for upper limb assistance during lifting tasks
title_sort voice activated bi-articular exosuit for upper limb assistance during lifting tasks
publishDate 2022
url https://hdl.handle.net/10356/159638
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