A Bending Angle Sensor Based on Magnetic Coupling Suitable for Soft Robotic Finger

Debasrita Kar, B. George, K. Sridharan
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Abstract

Sensing the angle of bending of a soft robotic finger is valuable in many applications but it is a non-trivial task. In this paper, a simple but effective sensing approach based on variable mutual inductance is presented to sense the bending angle. Existing inductive bend sensors use concentric coil based designs and they are not easy to manufacture and integrate into the finger. The planar coil based bend sensor, proposed in this work, is integrated inside the soft robotic finger. The sensor comprises of two flexible printed circuit boards based spiral coils that are magnetically coupled. Three such units are proposed to use in a finger. Each set of planar coils is arranged in such a manner that they give a measure of the curvature of the finger. It can give localized bending of the corresponding parts of the structure which is useful if the bending is not uniform. The measurement circuit required for the sensor is very simple. A prototype sensor built and tested showed a repeatable input-output characteristic with a repeatability error of 0.6%. The proposed sensor does not use the grasping area, is easy to integrate and less expensive. The output of the sensor is immune to moisture, dust and oil.
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一种适用于柔性机器人手指的磁耦合弯曲角度传感器
感知柔软机器人手指的弯曲角度在许多应用中都很有价值,但这是一项艰巨的任务。本文提出了一种简单而有效的基于可变互感的弯曲角传感方法。现有的感应弯曲传感器采用基于同心线圈的设计,它们不容易制造和集成到手指中。本文提出的基于平面线圈的弯曲传感器集成在柔软的机器人手指中。该传感器由两个磁性耦合的柔性印刷电路板螺旋线圈组成。建议在一个手指上使用三个这样的单位。每一组平面线圈以这样一种方式排列,它们给出了手指曲率的测量。它可以给出结构相应部位的局部弯曲,在弯曲不均匀的情况下是有用的。传感器所需的测量电路非常简单。建立并测试的原型传感器显示出可重复的输入输出特性,重复性误差为0.6%。所提出的传感器不使用抓取区域,易于集成且成本较低。传感器的输出不受湿气、灰尘和油的影响。
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