Optimizing RNNs for EMG Signal Classification: A Novel Strategy Using Grey Wolf Optimization

Author:

Aviles Marcos1ORCID,Alvarez-Alvarado José Manuel1ORCID,Robles-Ocampo  Jose-Billerman23ORCID,Sevilla-Camacho  Perla Yazmín24ORCID,Rodríguez-Reséndiz Juvenal1ORCID

Affiliation:

1. Facultad de Ingeniería, Universidad Autónoma de Querétaro, Santiago de Querétaro 76010, Mexico

2. Programa de Postgrado en Energías Renovables, Universidad Politécnica de Chiapas, Suchiapa 29150, Mexico

3. Departamento de Ingeniería Energética, Universidad Politécnica de Chiapas, Suchiapa 29150, Mexico

4. Departamento de Ingeniería Mecatrónica, Universidad Politécnica de Chiapas, Suchiapa 29150, Mexico

Abstract

Accurate classification of electromyographic (EMG) signals is vital in biomedical applications. This study evaluates different architectures of recurrent neural networks for the classification of EMG signals associated with five movements of the right upper extremity. A Butterworth filter was implemented for signal preprocessing, followed by segmentation into 250 ms windows, with an overlap of 190 ms. The resulting dataset was divided into training, validation, and testing subsets. The Grey Wolf Optimization algorithm was applied to the gated recurrent unit (GRU), long short-term memory (LSTM) architectures, and bidirectional recurrent neural networks. In parallel, a performance comparison with support vector machines (SVMs) was performed. The results obtained in the first experimental phase revealed that all the RNN networks evaluated reached a 100% accuracy, standing above the 93% achieved by the SVM. Regarding classification speed, LSTM ranked as the fastest architecture, recording a time of 0.12 ms, followed by GRU with 0.134 ms. Bidirectional recurrent neural networks showed a response time of 0.2 ms, while SVM had the longest time at 2.7 ms. In the second experimental phase, a slight decrease in the accuracy of the RNN models was observed, standing at 98.46% for LSTM, 96.38% for GRU, and 97.63% for the bidirectional network. The findings of this study highlight the effectiveness and speed of recurrent neural networks in the EMG signal classification task.

Publisher

MDPI AG

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