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Machine learning model to estimate net joint moments during lifting task using wearable sensors: A preliminary study for design of exoskeleton control system

  • Seungheon Chae
  • , Ahnryul Choi
  • , Hyunwoo Jung
  • , Tae Hyong Kim
  • , Kyungran Kim
  • , Joung Hwan Mun

Research output: Contribution to journalArticlepeer-review

Abstract

Accurately measuring the lower extremities and L5/S1 moments is important since L5/S1 moments are the principal parameters that measure the risk of musculoskeletal diseases during lifting. In this study, protocol that predicts lower extremities and L5/S1 moments with an insole sensor was proposed to replace the prior methods that have spatial constraints. The protocol is hierarchically composed of a classification model and a regression model to predict joint moments. Additionally, a single LSTM model was developed to compare with proposed protocol. To optimize hyperparameters of the machine learning model and input feature, Bayesian optimization method was adopted. As a result, the proposed protocol showed a relative root mean square error (rRMSE) of 8.06~13.88% while the single LSTM showed 9.30~18.66% rRMSE. This protocol in this research is expected to be a starting point for developing a system for estimating the lower extremity and L5/S1 moment during lifting that can replace the complex prior method and adopted to workplace environments. This novel study has the potential to precisely design a feedback iterative control system of an exoskeleton for the appropriate generation of an actuator torque.

Original languageEnglish
Article number11735
JournalApplied Sciences (Switzerland)
Volume11
Issue number24
DOIs
StatePublished - 1 Dec 2021

Keywords

  • Human motion analysis
  • Insole system
  • Lifting task
  • Lower body joint moment
  • Machine learning
  • Work-related musculoskeletal disorders

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