Gaussian Mixture Models for Control of Quasi-Passive Spinal Exoskeletons

Sensors (Basel). 2020 May 9;20(9):2705. doi: 10.3390/s20092705.

Abstract

Research and development of active and passive exoskeletons for preventing work related injuries has steadily increased in the last decade. Recently, new types of quasi-passive designs have been emerging. These exoskeletons use passive viscoelastic elements, such as springs and dampers, to provide support to the user, while using small actuators only to change the level of support or to disengage the passive elements. Control of such devices is still largely unexplored, especially the algorithms that predict the movement of the user, to take maximum advantage of the passive viscoelastic elements. To address this issue, we developed a new control scheme consisting of Gaussian mixture models (GMM) in combination with a state machine controller to identify and classify the movement of the user as early as possible and thus provide a timely control output for the quasi-passive spinal exoskeleton. In a leave-one-out cross-validation procedure, the overall accuracy for providing support to the user was 86 . 72 ± 0 . 86 % (mean ± s.d.) with a sensitivity and specificity of 97 . 46 ± 2 . 09 % and 83 . 15 ± 0 . 85 % respectively. The results of this study indicate that our approach is a promising tool for the control of quasi-passive spinal exoskeletons.

Keywords: clutched elastic actuators; exoskeleton control; movement prediction; pattern recognition.

MeSH terms

  • Algorithms
  • Biomechanical Phenomena
  • Exoskeleton Device*
  • Humans
  • Models, Theoretical
  • Movement*
  • Normal Distribution*
  • Spine