Virtual Sensor of Surface Electromyography in a New Extensive Fault-Tolerant Classification System

A few prosthetic control systems in the scientific literature obtain pattern recognition algorithms adapted to changes that occur in the myoelectric signal over time and, frequently, such systems are not natural and intuitive. These are some of the several challenges for myoelectric prostheses for e...

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Main Authors: Karina de O. A. de Moura, Alexandre Balbinot
Format: Article
Language:English
Published: MDPI AG 2018-05-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/5/1388
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spelling doaj-ca39a6749f504f7ea006966dc491b3262020-11-24T21:49:58ZengMDPI AGSensors1424-82202018-05-01185138810.3390/s18051388s18051388Virtual Sensor of Surface Electromyography in a New Extensive Fault-Tolerant Classification SystemKarina de O. A. de Moura0Alexandre Balbinot1Electrical Engineering, Instrumentation Laboratory, Federal University of Rio Grande do Sul (UFRGS), Avenue Osvaldo Aranha 103, Porto Alegre, RS 90035-190, BrazilElectrical Engineering, Instrumentation Laboratory, Federal University of Rio Grande do Sul (UFRGS), Avenue Osvaldo Aranha 103, Porto Alegre, RS 90035-190, BrazilA few prosthetic control systems in the scientific literature obtain pattern recognition algorithms adapted to changes that occur in the myoelectric signal over time and, frequently, such systems are not natural and intuitive. These are some of the several challenges for myoelectric prostheses for everyday use. The concept of the virtual sensor, which has as its fundamental objective to estimate unavailable measures based on other available measures, is being used in other fields of research. The virtual sensor technique applied to surface electromyography can help to minimize these problems, typically related to the degradation of the myoelectric signal that usually leads to a decrease in the classification accuracy of the movements characterized by computational intelligent systems. This paper presents a virtual sensor in a new extensive fault-tolerant classification system to maintain the classification accuracy after the occurrence of the following contaminants: ECG interference, electrode displacement, movement artifacts, power line interference, and saturation. The Time-Varying Autoregressive Moving Average (TVARMA) and Time-Varying Kalman filter (TVK) models are compared to define the most robust model for the virtual sensor. Results of movement classification were presented comparing the usual classification techniques with the method of the degraded signal replacement and classifier retraining. The experimental results were evaluated for these five noise types in 16 surface electromyography (sEMG) channel degradation case studies. The proposed system without using classifier retraining techniques recovered of mean classification accuracy was of 4% to 38% for electrode displacement, movement artifacts, and saturation noise. The best mean classification considering all signal contaminants and channel combinations evaluated was the classification using the retraining method, replacing the degraded channel by the virtual sensor TVARMA model. This method recovered the classification accuracy after the degradations, reaching an average of 5.7% below the classification of the clean signal, that is the signal without the contaminants or the original signal. Moreover, the proposed intelligent technique minimizes the impact of the motion classification caused by signal contamination related to degrading events over time. There are improvements in the virtual sensor model and in the algorithm optimization that need further development to provide an increase the clinical application of myoelectric prostheses but already presents robust results to enable research with virtual sensors on biological signs with stochastic behavior.http://www.mdpi.com/1424-8220/18/5/1388biomedical signal modellingvirtual sensorcross-correlationself-recoveryfault-tolerant sensorsignal disturbance
collection DOAJ
language English
format Article
sources DOAJ
author Karina de O. A. de Moura
Alexandre Balbinot
spellingShingle Karina de O. A. de Moura
Alexandre Balbinot
Virtual Sensor of Surface Electromyography in a New Extensive Fault-Tolerant Classification System
Sensors
biomedical signal modelling
virtual sensor
cross-correlation
self-recovery
fault-tolerant sensor
signal disturbance
author_facet Karina de O. A. de Moura
Alexandre Balbinot
author_sort Karina de O. A. de Moura
title Virtual Sensor of Surface Electromyography in a New Extensive Fault-Tolerant Classification System
title_short Virtual Sensor of Surface Electromyography in a New Extensive Fault-Tolerant Classification System
title_full Virtual Sensor of Surface Electromyography in a New Extensive Fault-Tolerant Classification System
title_fullStr Virtual Sensor of Surface Electromyography in a New Extensive Fault-Tolerant Classification System
title_full_unstemmed Virtual Sensor of Surface Electromyography in a New Extensive Fault-Tolerant Classification System
title_sort virtual sensor of surface electromyography in a new extensive fault-tolerant classification system
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-05-01
description A few prosthetic control systems in the scientific literature obtain pattern recognition algorithms adapted to changes that occur in the myoelectric signal over time and, frequently, such systems are not natural and intuitive. These are some of the several challenges for myoelectric prostheses for everyday use. The concept of the virtual sensor, which has as its fundamental objective to estimate unavailable measures based on other available measures, is being used in other fields of research. The virtual sensor technique applied to surface electromyography can help to minimize these problems, typically related to the degradation of the myoelectric signal that usually leads to a decrease in the classification accuracy of the movements characterized by computational intelligent systems. This paper presents a virtual sensor in a new extensive fault-tolerant classification system to maintain the classification accuracy after the occurrence of the following contaminants: ECG interference, electrode displacement, movement artifacts, power line interference, and saturation. The Time-Varying Autoregressive Moving Average (TVARMA) and Time-Varying Kalman filter (TVK) models are compared to define the most robust model for the virtual sensor. Results of movement classification were presented comparing the usual classification techniques with the method of the degraded signal replacement and classifier retraining. The experimental results were evaluated for these five noise types in 16 surface electromyography (sEMG) channel degradation case studies. The proposed system without using classifier retraining techniques recovered of mean classification accuracy was of 4% to 38% for electrode displacement, movement artifacts, and saturation noise. The best mean classification considering all signal contaminants and channel combinations evaluated was the classification using the retraining method, replacing the degraded channel by the virtual sensor TVARMA model. This method recovered the classification accuracy after the degradations, reaching an average of 5.7% below the classification of the clean signal, that is the signal without the contaminants or the original signal. Moreover, the proposed intelligent technique minimizes the impact of the motion classification caused by signal contamination related to degrading events over time. There are improvements in the virtual sensor model and in the algorithm optimization that need further development to provide an increase the clinical application of myoelectric prostheses but already presents robust results to enable research with virtual sensors on biological signs with stochastic behavior.
topic biomedical signal modelling
virtual sensor
cross-correlation
self-recovery
fault-tolerant sensor
signal disturbance
url http://www.mdpi.com/1424-8220/18/5/1388
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