Fast Hip Joint Moment Estimation with A General Moment Feature Generation Method
The hip joint moment during walking is a crucial basis for hip exoskeleton control. Compared to generating assistive torque profiles based on gait estimation, estimating hip joint moment directly using hip joint angles offers advantages such as simplified sensing and adaptability to variable walking...
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Zusammenfassung: | The hip joint moment during walking is a crucial basis for hip exoskeleton
control. Compared to generating assistive torque profiles based on gait
estimation, estimating hip joint moment directly using hip joint angles offers
advantages such as simplified sensing and adaptability to variable walking
speeds. Existing methods that directly estimate moment from hip joint angles
are mainly used for offline biomechanical estimation. However, they suffer from
long computation time and lack of personalization, rendering them unsuitable
for personalized control of hip exoskeletons. To address these challenges, this
paper proposes a fast hip joint moment estimation method based on generalized
moment features (GMF). The method first employs a GMF generator to learn a
feature representation of joint moment, namely the proposed GMF, which is
independent of individual differences. Subsequently, a GRU-based neural network
with fast computational performance is trained to learn the mapping from the
joint kinematics to the GMF. Finally, the predicted GMF is decoded into the
joint moment with a GMF decoder. The joint estimation model is trained and
tested on a dataset comprising 20 subjects under 28 walking speed conditions.
Results show that the proposed method achieves a root mean square error of
0.1180 $\pm$ 0.0021 Nm/kg for subjects in test dataset, and the computation
time per estimation using the employed GRU-based estimator is 1.3420 $\pm$
0.0031 ms, significantly faster than mainstream neural network architectures,
while maintaining comparable network accuracy. These promising results
demonstrate that the proposed method enhances the accuracy and computational
speed of joint moment estimation neural networks, with potential for guiding
exoskeleton control. |
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DOI: | 10.48550/arxiv.2410.00462 |