Lower Limb Joint Torque Prediction Using Long Short-Term Memory Network and Gaussian Process Regression

Sensors (Basel). 2023 Dec 2;23(23):9576. doi: 10.3390/s23239576.

Abstract

The accurate prediction of joint torque is required in various applications. Some traditional methods, such as the inverse dynamics model and the electromyography (EMG)-driven neuromusculoskeletal (NMS) model, depend on ground reaction force (GRF) measurements and involve complex optimization solution processes, respectively. Recently, machine learning methods have been popularly used to predict joint torque with surface electromyography (sEMG) signals and kinematic information as inputs. This study aims to predict lower limb joint torque in the sagittal plane during walking, using a long short-term memory (LSTM) model and Gaussian process regression (GPR) model, respectively, with seven characteristics extracted from the sEMG signals of five muscles and three joint angles as inputs. The majority of the normalized root mean squared error (NRMSE) values in both models are below 15%, most Pearson correlation coefficient (R) values exceed 0.85, and most decisive factor (R2) values surpass 0.75. These results indicate that the joint prediction of torque is feasible using machine learning methods with sEMG signals and joint angles as inputs.

Keywords: Gaussian process regression; electromyography signals; joint torque; long short-term memory; machine learning.

MeSH terms

  • Electromyography / methods
  • Joints / physiology
  • Lower Extremity
  • Memory, Short-Term*
  • Muscle, Skeletal* / physiology
  • Torque