Author
Listed:
- Dean D. Molinaro
(Georgia Institute of Technology
Georgia Institute of Technology
Boston Dynamics AI Institute)
- Keaton L. Scherpereel
(Georgia Institute of Technology
Georgia Institute of Technology
Skip Innovations)
- Ethan B. Schonhaut
(Georgia Institute of Technology)
- Georgios Evangelopoulos
(X, The Moonshot Factory
Google)
- Max K. Shepherd
(Northeastern University)
- Aaron J. Young
(Georgia Institute of Technology
Georgia Institute of Technology)
Abstract
Lower-limb exoskeletons have the potential to transform the way we move1–14, but current state-of-the-art controllers cannot accommodate the rich set of possible human behaviours that range from cyclic and predictable to transitory and unstructured. We introduce a task-agnostic controller that assists the user on the basis of instantaneous estimates of lower-limb biological joint moments from a deep neural network. By estimating both hip and knee moments in-the-loop, our approach provided multi-joint, coordinated assistance through our autonomous, clothing-integrated exoskeleton. When deployed during 28 activities, spanning cyclic locomotion to unstructured tasks (for example, passive meandering and high-speed lateral cutting), the network accurately estimated hip and knee moments with an average R2 of 0.83 relative to ground truth. Further, our approach significantly outperformed a best-case task classifier-based method constructed from splines and impedance parameters. When tested on ten activities (including level walking, running, lifting a 25 lb (roughly 11 kg) weight and lunging), our controller significantly reduced user energetics (metabolic cost or lower-limb biological joint work depending on the task) relative to the zero torque condition, ranging from 5.3 to 19.7%, without any manual controller modifications among activities. Thus, this task-agnostic controller can enable exoskeletons to aid users across a broad spectrum of human activities, a necessity for real-world viability.
Suggested Citation
Dean D. Molinaro & Keaton L. Scherpereel & Ethan B. Schonhaut & Georgios Evangelopoulos & Max K. Shepherd & Aaron J. Young, 2024.
"Task-agnostic exoskeleton control via biological joint moment estimation,"
Nature, Nature, vol. 635(8038), pages 337-344, November.
Handle:
RePEc:nat:nature:v:635:y:2024:i:8038:d:10.1038_s41586-024-08157-7
DOI: 10.1038/s41586-024-08157-7
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