结合3D打印泡沫样传感器,使用软鞋垫估算3D地面反作用力的可行性研究。

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Wearable technologies Pub Date : 2025-01-23 eCollection Date: 2025-01-01 DOI:10.1017/wtc.2024.23
Nick Willemstein, Saivimal Sridar, Herman van der Kooij, Ali Sadeghi
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引用次数: 0

摘要

传感鞋垫为日常生活中的步态研究和健康监测提供了一种工具。要让用户接受这样的鞋垫,它们需要舒适和轻便。先前的研究表明,感应鞋垫可以估计地面反作用力(GRFs)。然而,这些鞋垫通常装配商业组件,限制了设计自由和定制。在这项工作中,我们结合了四个3d打印的柔软泡沫状传感器来感应鞋垫。为了测试鞋垫,我们让九名参与者在一个带仪器的跑步机上行走。这四个传感器的行为与步态周期中压力分布的预期变化一致。这些数据的一个子集用于识别个性化的Hammerstein-Wiener (HW)模型,以估计3D GRFs,而其他数据用于验证。此外,所识别的HW模型对垂直、中外侧和正后方的grf的估计性能最佳(平均均方根误差9.3%,=0.85,平均绝对误差7%),从而表明这些传感器可以很好地估计所得到的三维力。这些结果与使用商业力感电阻和机器学习的其他工作相当或优于其他工作。四名参与者在一周内参加了三次试验,结果显示,随着时间的推移,他们的估计表现有所下降,但一周后平均RMS和MAE分别保持在11.35%和8.6%,第2天和第7天的表现似乎是一致的。这些结果表明,3d打印软压阻泡沫样传感器具有系统识别能力,适用于需要柔软、轻便和定制的应用,如可穿戴(力)传感器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A feasibility study on using soft insoles for estimating 3D ground reaction forces with incorporated 3D-printed foam-like sensors.

Sensorized insoles provide a tool for gait studies and health monitoring during daily life. For users to accept such insoles, they need to be comfortable and lightweight. Previous research has demonstrated that sensorized insoles can estimate ground reaction forces (GRFs). However, these insoles often assemble commercial components restricting design freedom and customization. Within this work, we incorporated four 3D-printed soft foam-like sensors to sensorize an insole. To test the insoles, we had nine participants walk on an instrumented treadmill. The four sensors behaved in line with the expected change in pressure distribution during the gait cycle. A subset of this data was used to identify personalized Hammerstein-Wiener (HW) models to estimate the 3D GRFs while the others were used for validation. In addition, the identified HW models showed the best estimation performance (on average root mean squared (RMS) error 9.3%, =0.85 and mean absolute error (MAE) 7%) of the vertical, mediolateral, and anteroposterior GRFs, thereby showing that these sensors can estimate the resulting 3D force reasonably well. These results were comparable to or outperformed other works that used commercial force-sensing resistors with machine learning. Four participants participated in three trials over a week, which showed a decrease in estimation performance over time but stayed on average 11.35% RMS and 8.6% MAE after a week with the performance seeming consistent between days two and seven. These results show promise for using 3D-printed soft piezoresistive foam-like sensors with system identification regarding the viability for applications that require softness, lightweight, and customization such as wearable (force) sensors.

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来源期刊
CiteScore
5.80
自引率
0.00%
发文量
0
审稿时长
11 weeks
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