The comparison and processing of Electromyography (EMG) signals under different actions

Authors

  • Zhiyu Zhu
  • Tiankuo Jiao

DOI:

https://doi.org/10.62051/798rjs54

Keywords:

Electromyography (EMG), Root Mean Square (RMS), digital filtering.

Abstract

The experiment first investigates the working principle and the applications of Electromyography (EMG). Then, the effect of electrode location and electrode size on the EMG signal is explored by the raw data and theory. The reasons for choosing generic surface Ag/AgCl adhesive electrodes are also described. After obtaining the raw EMG signals, suitable data processing methods, such as Root Mean Square (RMS) and digital filtering are applied to generate signals that can drive the motor of a prosthetic arm. The results obtained by the two methods are also compared, where RMS can provide larger peak and mean values, and the digital filtering method can minimise the phase shift. Finally, the limitations of the EMG for prostheses are also analysed by three aspects: different flexion forces, individual finger motion and different reference locations.

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References

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Published

24-04-2024

How to Cite

Zhu, Z., & Jiao, T. (2024). The comparison and processing of Electromyography (EMG) signals under different actions. Transactions on Materials, Biotechnology and Life Sciences, 2, 67-76. https://doi.org/10.62051/798rjs54