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Motion optimization and parameter identification for a human and lower back exoskeleton model

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posted on 2024-11-15, 03:32 authored by Paul Manns, Manish Narsipura SreenivasaManish Narsipura Sreenivasa, Matthew Millard, Katja Mombaur
Designing an exoskeleton to reduce the risk of low-back injury during lifting is challenging. Computational models of the human-robot system coupled with predictive movement simulations can help to simplify this design process. Here, we present a study that models the interaction between a human model actuated by muscles and a lower back exoskeleton. We provide a computational framework for identifying the spring parameters of the exoskeleton using an optimal control approach and forward-dynamics simulations. This is applied to generate dynamically consistent bending and lifting movements in the sagittal plane. Our computations are able to predict motions and forces of the human and exoskeleton that are within the torque limits of a subject. The identified exoskeleton could also yield a considerable reduction of the peak lower back torques as well as the cumulative lower back load during the movements. This letter is relevant to the research communities working on human-robot interaction, and can be used as a basis for a better human-centered design process.

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Citation

Manns, P., Sreenivasa, M., Millard, M. & Mombaur, K. (2017). Motion optimization and parameter identification for a human and lower back exoskeleton model. IEEE Robotics and Automation Letters, 2 (3), 1564-1570.

Journal title

IEEE Robotics and Automation Letters

Volume

2

Issue

3

Pagination

1564-1570

Language

English

RIS ID

128859

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