SUBJECT: M.S. Thesis Presentation
   
BY: Justine Powell
   
TIME: Friday, May 10, 2024, 1:00 p.m.
   
PLACE: MRDC Building, 4211
   
TITLE: Personalization of Exoskeleton Control using Transfer Learning Informed HILO
   
COMMITTEE: Dr. Aaron Young, Chair (ME)
Dr. Greg Sawicki (ME)
Dr. Anirban Mazumdar (ME)
 

SUMMARY

We have integrated intelligent technologies into our everyday lives to reduce some of the nuisances of the human experience. Intelligent robotic exoskeletons can further augment the human experience by reducing the energy expelled as we move, but integration into our daily lives requires exoskeleton control that is sufficiently adaptable to keep up with the range of activities we incur everyday. Adaptation of exoskeleton control to a user and their activity has been achieved in the field, however this success is limited to niche, ideal cases of human ambulation that can be simulated in lab settings. We need to start moving towards exoskeleton control that is applicable to a wide range of human movement and can learn to seamlessly adapt as the user’s activity changes. I have studied using HILO and transfer learning to optimize exoskeleton control profiles across multiple ambulatory tasks to determine the effects of personalization and the generalizability of exoskeleton control.