Flexible Magnetic Skin Sensor Array for Torsion Perception.

Lucja Stawikowska, Erik D Engeberg
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Abstract

Prosthetic hands help upper limb amputees and people who were born without hands. Currently, these prostheses are rather rudimentary and do not provide adequate sensing capabilities compared to a human hand. People use their natural hands to perceive complex tactile phenomena such as shear and torsion using thousands of mechanoreceptors in their fingertips. The capability to detect torsional loads at the fingertips is a notable gap in prosthetic hand sensation. Flexible tactile sensors are a promising new technology that would be ideal for prosthetic hands since they allow for stretching and movement like human skin without damage to the sensor. Therefore, the purpose of this study is to determine whether a flexible magnetic sensor array combined with an artificial neural network (ANN) can detect and classify torsion. The flexible magnetic sensor is designed as a 3×3 array of magnets embedded in a stretchable elastomer which are situated atop a corresponding array of Hall effect sensors. Torques applied to the soft magnetic skin caused displacement of the magnetic fields that were perceived by the nine Hall effect sensors. In this study, ten different values of torque were applied to the flexible magnetic sensor array using a robotic arm to ensure consistency. Data were used to train an ANN to classify the applied torques. The ANN was trained ten times and could predict the applied torque with an average training classification accuracy of 97.48% ± 0.33%. Given the results of this study, this novel sensor design could enable more refined sensations of touch for people who use prosthetic hands.

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用于扭转感知的柔性磁性皮肤传感器阵列。
假肢手帮助上肢截肢者和天生没有手的人。目前,这些假肢相当初级,与人手相比,不能提供足够的传感能力。人们用他们的自然手来感知复杂的触觉现象,如剪切和扭曲,指尖上有数千个机械感受器。检测指尖扭转载荷的能力是假手感觉的一个显著差距。柔性触觉传感器是一种很有前途的新技术,非常适合假手,因为它们可以像人类皮肤一样拉伸和移动,而不会损坏传感器。因此,本研究的目的是确定柔性磁传感器阵列与人工神经网络(ANN)相结合是否能够检测和分类扭转。柔性磁传感器被设计为嵌入可拉伸弹性体中的3×3磁体阵列,该阵列位于相应的霍尔效应传感器阵列的顶部。施加在软磁性皮肤上的扭矩导致九个霍尔效应传感器感知到的磁场发生位移。在这项研究中,使用机械臂将十个不同的扭矩值应用于柔性磁传感器阵列,以确保一致性。数据被用来训练神经网络来对施加的转矩进行分类。人工神经网络经过十次训练,可以预测施加的扭矩,平均训练分类准确率为97.48%±0.33%。鉴于这项研究的结果,这种新型传感器设计可以为使用假手的人带来更精细的触觉。
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Flexible Magnetic Skin Sensor Array for Torsion Perception. Robotic Finger Force Sensor Fabrication and Evaluation Through a Glove. Force and Pressure Control of Soft Robotic Actuators.
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