Shape Estimation of Soft Manipulator Using Stretchable Sensor

IF 10.5 Q1 ENGINEERING, BIOMEDICAL Cyborg and bionic systems (Washington, D.C.) Pub Date : 2021-04-21 DOI:10.34133/2021/9843894
JinHo So, Uikyum Kim, Y. Kim, D. Seok, S. Yang, Kihyeon Kim, Jae Hyeong Park, Seong Tak Hwang, Young Jin Gong, H. Choi
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引用次数: 19

Abstract

The soft robot manipulator is attracting attention in the surgical fields with its intrinsic softness, lightness in its weight, and safety toward the human organ. However, it cannot be used widely because of its difficulty of control. To control a soft robot manipulator accurately, shape sensing is essential. This paper presents a method of estimating the shape of a soft robot manipulator by using a skin-type stretchable sensor composed of a multiwalled carbon nanotube (MWCNT) and silicone (p7670). The sensor can be easily fabricated and applied by simply attaching it to the surface of the soft manipulator. In its fabrication, MWCNT is sprayed on a teflon sheet, and liquid-state silicone is poured on it. After curing, we turn it over and cover it with another silicone layer. The sensor is fabricated with a sandwich structure to decrease the hysteresis of the sensor. After calibration and determining the relationship between the resistance of the sensor and the strain, three sensors are attached at 120° intervals. Using the obtained data, the curvature of the manipulator is calculated, and the entire shape is reconstructed. To validate its accuracy, the estimated shape is compared with the camera data. We experiment with three, six, and nine sensors attached, and the result of the error of shape estimation is compared. As a result, the minimum tip position error is approximately 8.9 mm, which corresponded to 4.45% of the total length of the manipulator when using nine sensors.
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基于可伸缩传感器的软机械手形状估计
柔性机械臂以其固有的柔软性、重量轻、对人体器官的安全性等优点,正在引起外科领域的广泛关注。但由于控制难度大,不能广泛应用。要对柔性机器人机械手进行精确控制,形状传感是必不可少的。本文提出了一种利用多壁碳纳米管(MWCNT)和有机硅(p7670)组成的皮肤型可拉伸传感器来估计柔性机器人机械臂形状的方法。该传感器可以很容易地制造和应用,只需将其连接到软机械臂的表面。在制造过程中,MWCNT被喷涂在聚四氟乙烯薄片上,并在上面浇上液态硅树脂。固化后,我们把它翻过来,再盖上一层硅树脂。该传感器采用夹层结构,减小了传感器的磁滞。在校准并确定传感器电阻与应变之间的关系后,以120°的间隔连接三个传感器。利用得到的数据,计算机械手的曲率,重构机械手的整体形状。为了验证其准确性,将估计的形状与相机数据进行了比较。我们分别用3个、6个和9个传感器进行了实验,比较了形状估计误差的结果。结果表明,当使用9个传感器时,最小尖端位置误差约为8.9 mm,相当于机械手总长度的4.45%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.70
自引率
0.00%
发文量
0
审稿时长
21 weeks
期刊最新文献
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