International Journal of Advanced Robotic Systems (Oct 2020)

A long short-term memory neural network model for knee joint acceleration estimation using mechanomyography signals

  • Chenlei Xie,
  • Daqing Wang,
  • Haifeng Wu,
  • Lifu Gao

DOI
https://doi.org/10.1177/1729881420968702
Journal volume & issue
Vol. 17

Abstract

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With the growth of the number of elderly and disabled with motor dysfunction, the demand for assisted exercise is increasing. Wearable power assistance robots are developed to provide athletic ability of limbs for the elderly or the disabled who have weakened limbs to better self-care ability. Existing wearable power-assisted robots generally use surface electromyography (sEMG) to obtain effective human motion intentions. Due to the characteristics of sEMG signals, it is limited in many applications. To solve the above problems, we design a long short-term memory (LSTM) neural network model based on human mechanomyography (MMG) signals to estimate the motion acceleration of knee joint. The acceleration can be further calculated by the torque required for movement control of the wearable power assistance robots for the lower limb. We detect MMG signals on the clothed thigh, extract features of the MMG signals, and then, use principal component analysis to reduce the features’ dimensions. Finally, the dimension-reduced features are inputted into the LSTM neural network model in time series for estimating the acceleration. The experimental results show that the average correlation coefficient ( R ) is 94.48 ± 1.91% for the estimation of acceleration in the process of continuously performing under approximately π /4 rad/s. This approach can be applied in the practical applications of wearable field.