2024

nature

Task-agnostic exoskeleton control via biological joint moment estimation

Dean D. Molinaro, Keaton L. Scherpereel, Ethan B. Schonhaut, Georgios Evangelopoulos, Max K. Shepherd, Aaron J. Young

Boston Dynamics AI Institute, Cambridge, MA, USA

Keywords

exoskeleton, task-agnostic controller, biological joint moments, human motion

Abstract

Lower-limb exoskeletons have the potential to transform the way we move 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.

Moticon's Summary

This research details a new task-agnostic lower-limb exoskeleton controller. The controller uses a deep neural network to estimate biological joint moments in real-time, providing adaptable assistance across diverse activities without manual adjustments. Sensor input was derived from IMUs mounted to the shank and thigh struts as well as from a pair of Moticon sensor insoles. Testing across various activities demonstrated significant reductions in user metabolic cost and lower-limb joint work compared to a no-assistance condition. Furthermore, the deep neural network used for joint moment estimation outperforms baseline methods based on task classification and impedance parameters. A novel clothing-integrated exoskeleton design enhanced comfort and range of motion. The study's findings showcase the potential for generalized exoskeleton assistance, improving real-world applicability in both structured and unstructured tasks.

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