A System-Based Approach to Monitoring the Performance of a Human Neuromusculoskeletal System

This paper presents a system-based method for monitoring a human neuromusculoskeletal (NMS) system. It is based on autoregressive models with exogenous inputs, which link surface electromyographic signals and joint kinematic variables in order to detect changes in system dynamics, as well as to asse...

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Main Authors: Marcus Mussleman, Deanna H. Gates, Dragan Djurdjanovic
Format: Article
Language:English
Published: The Prognostics and Health Management Society 2016-06-01
Series:International Journal of Prognostics and Health Management
Subjects:
Online Access:https://papers.phmsociety.org/index.php/ijphm/article/view/2364
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spelling doaj-23b0f1601edf4df7a25e472921326fb02021-07-02T19:15:43ZengThe Prognostics and Health Management SocietyInternational Journal of Prognostics and Health Management2153-26482153-26482016-06-0172doi:10.36001/ijphm.2016.v7i2.2364A System-Based Approach to Monitoring the Performance of a Human Neuromusculoskeletal SystemMarcus Mussleman0Deanna H. Gates1Dragan Djurdjanovic2Lam Research Corporation, Fremont, CA, 94538, USAUniversity of Michigan, Ann Arbor, MI, 48105, USAUniversity of Texas, Austin, TX, 78712, USAThis paper presents a system-based method for monitoring a human neuromusculoskeletal (NMS) system. It is based on autoregressive models with exogenous inputs, which link surface electromyographic signals and joint kinematic variables in order to detect changes in system dynamics, as well as to assess joint level and muscle level contributions to those changes. Instantaneous energy and mean frequency of time frequency distributions of electromyographic signals were used as model inputs, while angular velocities of the monitored joints served as outputs. Slow temporal changes in the behavior of the entire system or individual joint models were tracked by analyzing one-step ahead prediction errors of the corresponding models over time. Finally, analysis of the recursively updated models, which tracked the NMS dynamics over time, was used to characterize these changes at the joint and muscular levels. The methodology is demonstrated on data recorded from 12 human subjects completing a repetitive sawing motion until voluntary exhaustion. Statistically significant decreasing trends in the similarities of the NMS models to those observed in the rested state were observed in all subjects. In addition, decreased joint response to muscle activity, as well as changes in the coordination and motion planning have been detected with all subjects, indicating their fatigue.https://papers.phmsociety.org/index.php/ijphm/article/view/2364performance monitoringelectromyogram (emg) signalstime-frequency distributions (tfd)neuromusculoskeletal (nms) system
collection DOAJ
language English
format Article
sources DOAJ
author Marcus Mussleman
Deanna H. Gates
Dragan Djurdjanovic
spellingShingle Marcus Mussleman
Deanna H. Gates
Dragan Djurdjanovic
A System-Based Approach to Monitoring the Performance of a Human Neuromusculoskeletal System
International Journal of Prognostics and Health Management
performance monitoring
electromyogram (emg) signals
time-frequency distributions (tfd)
neuromusculoskeletal (nms) system
author_facet Marcus Mussleman
Deanna H. Gates
Dragan Djurdjanovic
author_sort Marcus Mussleman
title A System-Based Approach to Monitoring the Performance of a Human Neuromusculoskeletal System
title_short A System-Based Approach to Monitoring the Performance of a Human Neuromusculoskeletal System
title_full A System-Based Approach to Monitoring the Performance of a Human Neuromusculoskeletal System
title_fullStr A System-Based Approach to Monitoring the Performance of a Human Neuromusculoskeletal System
title_full_unstemmed A System-Based Approach to Monitoring the Performance of a Human Neuromusculoskeletal System
title_sort system-based approach to monitoring the performance of a human neuromusculoskeletal system
publisher The Prognostics and Health Management Society
series International Journal of Prognostics and Health Management
issn 2153-2648
2153-2648
publishDate 2016-06-01
description This paper presents a system-based method for monitoring a human neuromusculoskeletal (NMS) system. It is based on autoregressive models with exogenous inputs, which link surface electromyographic signals and joint kinematic variables in order to detect changes in system dynamics, as well as to assess joint level and muscle level contributions to those changes. Instantaneous energy and mean frequency of time frequency distributions of electromyographic signals were used as model inputs, while angular velocities of the monitored joints served as outputs. Slow temporal changes in the behavior of the entire system or individual joint models were tracked by analyzing one-step ahead prediction errors of the corresponding models over time. Finally, analysis of the recursively updated models, which tracked the NMS dynamics over time, was used to characterize these changes at the joint and muscular levels. The methodology is demonstrated on data recorded from 12 human subjects completing a repetitive sawing motion until voluntary exhaustion. Statistically significant decreasing trends in the similarities of the NMS models to those observed in the rested state were observed in all subjects. In addition, decreased joint response to muscle activity, as well as changes in the coordination and motion planning have been detected with all subjects, indicating their fatigue.
topic performance monitoring
electromyogram (emg) signals
time-frequency distributions (tfd)
neuromusculoskeletal (nms) system
url https://papers.phmsociety.org/index.php/ijphm/article/view/2364
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