Research Article

A novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks

Volume: 9 Number: 3 January 1, 2024
TR EN

A novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks

Abstract

In recent years, Liquid Time-Constant (LTC) Neural Networks have gained substantial interest due to their exceptional ability to accurately model complex, time-dependent data. Although their applications in various fields have been explored, the potential of utilizing LTC Neural Networks for electromyography-based muscle fatigue or disability detection has not been investigated. This research aims to showcase the effectiveness of LTC Neural Networks in addressing challenges unique to this domain and to offer new insights into its potential advantages. We employed an LTC Neural Network to analyze EMG signals obtained during patient examinations to accomplish this objective. We calculated five features from the collected signals, including Mean Absolute Value (MAV), Waveform Length (WL), Zero Crossings (ZC), Slope Sign Changes (SSC), and Center Frequency (CF). These features were used as input for the LTC Neural Network. The network's ability to predict values based on temporal data enabled it to precisely monitor signal changes indicative of nerve damage or muscle dysfunction. We compared the performance of the LTC Neural Network with traditional methods and other neural network-based techniques in detecting muscle fatigue from EMG signals. Our experimental results reveal that the LTC Neural Network achieved a high validation accuracy of % 99.72, indicating its effectiveness in identifying muscle disability. These findings suggest that LTC Neural Networks have the potential to outperform conventional approaches and provide successful results in the field of EMG-based muscle fatigue detection.

Keywords

References

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Details

Primary Language

English

Subjects

Computer Software

Journal Section

Research Article

Publication Date

January 1, 2024

Submission Date

May 11, 2023

Acceptance Date

October 28, 2023

Published in Issue

Year 2023 Volume: 9 Number: 3

APA
Bidollahkhani, M., & Atasoy, F. (2024). A novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks. Gazi Journal of Engineering Sciences, 9(3), 544-556. https://izlik.org/JA96BP85EB
AMA
1.Bidollahkhani M, Atasoy F. A novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks. GJES. 2024;9(3):544-556. https://izlik.org/JA96BP85EB
Chicago
Bidollahkhani, Michael, and Ferhat Atasoy. 2024. “A Novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks”. Gazi Journal of Engineering Sciences 9 (3): 544-56. https://izlik.org/JA96BP85EB.
EndNote
Bidollahkhani M, Atasoy F (January 1, 2024) A novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks. Gazi Journal of Engineering Sciences 9 3 544–556.
IEEE
[1]M. Bidollahkhani and F. Atasoy, “A novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks”, GJES, vol. 9, no. 3, pp. 544–556, Jan. 2024, [Online]. Available: https://izlik.org/JA96BP85EB
ISNAD
Bidollahkhani, Michael - Atasoy, Ferhat. “A Novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks”. Gazi Journal of Engineering Sciences 9/3 (January 1, 2024): 544-556. https://izlik.org/JA96BP85EB.
JAMA
1.Bidollahkhani M, Atasoy F. A novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks. GJES. 2024;9:544–556.
MLA
Bidollahkhani, Michael, and Ferhat Atasoy. “A Novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks”. Gazi Journal of Engineering Sciences, vol. 9, no. 3, Jan. 2024, pp. 544-56, https://izlik.org/JA96BP85EB.
Vancouver
1.Michael Bidollahkhani, Ferhat Atasoy. A novel Approach for Muscle Fatigue Disorders Detection Using EMG Based Time-Constant Neural Networks. GJES [Internet]. 2024 Jan. 1;9(3):544-56. Available from: https://izlik.org/JA96BP85EB

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