Effect of Muscle Fatigue on Surface Electromyography-Based Hand Grasp Force Estimation

Surface electromyography- (sEMG-) based hand grasp force estimation plays an important role with a promising accuracy in a laboratory environment, yet hardly clinically applicable because of physiological changes and other factors. One of the critical factors is the muscle fatigue concomitant with d...

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Main Authors: Jinfeng Wang, Muye Pang, Peixuan Yu, Biwei Tang, Kui Xiang, Zhaojie Ju
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Applied Bionics and Biomechanics
Online Access:http://dx.doi.org/10.1155/2021/8817480
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spelling doaj-12a7be3a12f3496ea0ebf6494f32b7482021-07-02T21:02:09ZengHindawi LimitedApplied Bionics and Biomechanics1754-21032021-01-01202110.1155/2021/8817480Effect of Muscle Fatigue on Surface Electromyography-Based Hand Grasp Force EstimationJinfeng Wang0Muye Pang1Peixuan Yu2Biwei Tang3Kui Xiang4Zhaojie Ju5Department of InformationIntelligent System Research InstituteIntelligent System Research InstituteIntelligent System Research InstituteIntelligent System Research InstituteIntelligent System & Biomedical Robotics GroupSurface electromyography- (sEMG-) based hand grasp force estimation plays an important role with a promising accuracy in a laboratory environment, yet hardly clinically applicable because of physiological changes and other factors. One of the critical factors is the muscle fatigue concomitant with daily activities which degrades the accuracy and reliability of force estimation from sEMG signals. Conventional qualitative measurements of muscle fatigue contribute to an improved force estimation model with limited progress. This paper proposes an easy-to-implement method to evaluate the muscle fatigue quantitatively and demonstrates that the proposed metrics can have a substantial impact on improving the performance of hand grasp force estimation. Specifically, the reduction in the maximal capacity to generate force is used as the metric of muscle fatigue in combination with a back-propagation neural network (BPNN) is adopted to build a sEMG-hand grasp force estimation model. Experiments are conducted in the three cases: (1) pooling training data from all muscle fatigue states with time-domain feature only, (2) employing frequency domain feature for expression of muscle fatigue information based on case 1, and 3) incorporating the quantitative metric of muscle fatigue value as an additional input for estimation model based on case 1. The results show that the degree of muscle fatigue and task intensity can be easily distinguished, and the additional input of muscle fatigue in BPNN greatly improves the performance of hand grasp force estimation, which is reflected by the 6.3797% increase in R2 (coefficient of determination) value.http://dx.doi.org/10.1155/2021/8817480
collection DOAJ
language English
format Article
sources DOAJ
author Jinfeng Wang
Muye Pang
Peixuan Yu
Biwei Tang
Kui Xiang
Zhaojie Ju
spellingShingle Jinfeng Wang
Muye Pang
Peixuan Yu
Biwei Tang
Kui Xiang
Zhaojie Ju
Effect of Muscle Fatigue on Surface Electromyography-Based Hand Grasp Force Estimation
Applied Bionics and Biomechanics
author_facet Jinfeng Wang
Muye Pang
Peixuan Yu
Biwei Tang
Kui Xiang
Zhaojie Ju
author_sort Jinfeng Wang
title Effect of Muscle Fatigue on Surface Electromyography-Based Hand Grasp Force Estimation
title_short Effect of Muscle Fatigue on Surface Electromyography-Based Hand Grasp Force Estimation
title_full Effect of Muscle Fatigue on Surface Electromyography-Based Hand Grasp Force Estimation
title_fullStr Effect of Muscle Fatigue on Surface Electromyography-Based Hand Grasp Force Estimation
title_full_unstemmed Effect of Muscle Fatigue on Surface Electromyography-Based Hand Grasp Force Estimation
title_sort effect of muscle fatigue on surface electromyography-based hand grasp force estimation
publisher Hindawi Limited
series Applied Bionics and Biomechanics
issn 1754-2103
publishDate 2021-01-01
description Surface electromyography- (sEMG-) based hand grasp force estimation plays an important role with a promising accuracy in a laboratory environment, yet hardly clinically applicable because of physiological changes and other factors. One of the critical factors is the muscle fatigue concomitant with daily activities which degrades the accuracy and reliability of force estimation from sEMG signals. Conventional qualitative measurements of muscle fatigue contribute to an improved force estimation model with limited progress. This paper proposes an easy-to-implement method to evaluate the muscle fatigue quantitatively and demonstrates that the proposed metrics can have a substantial impact on improving the performance of hand grasp force estimation. Specifically, the reduction in the maximal capacity to generate force is used as the metric of muscle fatigue in combination with a back-propagation neural network (BPNN) is adopted to build a sEMG-hand grasp force estimation model. Experiments are conducted in the three cases: (1) pooling training data from all muscle fatigue states with time-domain feature only, (2) employing frequency domain feature for expression of muscle fatigue information based on case 1, and 3) incorporating the quantitative metric of muscle fatigue value as an additional input for estimation model based on case 1. The results show that the degree of muscle fatigue and task intensity can be easily distinguished, and the additional input of muscle fatigue in BPNN greatly improves the performance of hand grasp force estimation, which is reflected by the 6.3797% increase in R2 (coefficient of determination) value.
url http://dx.doi.org/10.1155/2021/8817480
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