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首页> 外文期刊>IEEE sensors journal >A Method for Selecting the Next Best Angle-of-Approach for Touch-Based Identification of Beam Members in Truss Structures
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A Method for Selecting the Next Best Angle-of-Approach for Touch-Based Identification of Beam Members in Truss Structures

机译:选择下一个最佳接触角的桁架结构梁构件基于触摸的识别方法

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摘要

A robot designed to climb truss structures such as power transmission towers is expected to have an adequate tactile sensing in the grippers to identify a structural beam member and its properties. Depending on how a gripper grasps a structural member, defined as the Angle-of-Approach (AoA), the extracted tactile data can result in erroneous identifications due to the similarities in beam cross-sectional shapes and sizes. In these cases, further grasps at favorable Angles-of-Approach (AoAs) are required to correctly identify the beam member and its properties. This paper presents an information-based method which uses tactile data to determine the next best AoA for the identification of beam members in truss structures. The method is used in conjunction with a state estimate of beam shape, dimension, and AoA calculated by a Random Forest classifier. The method is verified through simulation by using the data collected using a soft gripper retrofitted with simple tactile sensors. The results show that this method can correctly identify a structural beam member and its properties with a small number of grasps (typically fewer than 4). This method can be applied to other adaptive robotic gripper designs fitted with suitable tactile sensors, regardless of the number of sensors used and their layout.
机译:旨在爬上诸如输电塔之类的桁架结构的机器人有望在夹具中具有足够的触觉,以识别结构梁构件及其特性。取决于抓取器如何抓取定义为接近角度(AoA)的结构构件,由于光束横截面形状和大小的相似性,提取的触觉数据可能会导致错误的识别。在这些情况下,需要进一步把握有利的接近角度(AoA),以正确识别梁构件及其属性。本文提出了一种基于信息的方法,该方法使用触觉数据来确定用于识别桁架结构中梁构件的次佳AoA。该方法与由随机森林分类器计算的光束形状,尺寸和AoA的状态估计结合使用。通过使用安装有简单触觉传感器的软抓手收集的数据,通过仿真验证了该方法。结果表明,该方法只需少量的抓取(通常少于4个)就可以正确识别结构梁构件及其属性。该方法可应用于装配有合适触觉传感器的其他自适应机器人抓取器设计,而无需考虑使用的传感器数量及其布局。

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