Data-Driven FEM Modeling of Elastic Cables for Robotic Manipulation Tasks

Enrico di Maria, S. Yasukawa
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Abstract

The automation of flexible cables assembling tasks by industrial robots is still very challenging. Unlike rigid objects, flexible objects’ state is uncertain, and their deformation is crucial for performing correctly a task. When a human being manipulates a cable, he can have quickly an idea of its geometry and stiffness just by looking at it and shaping it by hands. In this work, we propose a method that mimics this process and makes a robot learn the geometry and stiffness of a cable. The goal is to have a simulator in which the robot can generate the cable and tune its stiffness and damping properties by comparing the simulated deformed shape with that of a cable deformed in a real scenario. At first, the geometry of the cable is obtained by a Lidar, and a FEM model is generated and imported into a simulator. The virtual cable is shaped in a plane by a robot arm, and the resulting shape is compared with that obtained by conducting the same test with a real robot. An optimization based on Bayesian inference and Gaussian process is then used to tune the stiffness and damping properties of the simulated cable. The proposed method shows the ability to generate the cable from scratch and tune its parameters to obtain the desired shape in the plane.
面向机器人操作任务的弹性索数据驱动有限元建模
工业机器人对柔性电缆装配任务的自动化仍然是非常具有挑战性的。与刚性物体不同,柔性物体的状态是不确定的,其变形对正确执行任务至关重要。当一个人操纵一根电缆时,他可以通过观察它并用手塑造它,很快就知道它的几何形状和刚度。在这项工作中,我们提出了一种模仿这一过程的方法,并使机器人学习电缆的几何形状和刚度。目标是有一个模拟器,在这个模拟器中,机器人可以生成电缆,并通过将模拟的变形形状与真实场景中变形的电缆形状进行比较来调整其刚度和阻尼特性。首先利用激光雷达获取电缆的几何形状,生成有限元模型并导入到仿真器中。用机械臂在平面上塑造虚拟电缆的形状,并与真实机器人进行相同测试得到的形状进行比较。然后采用基于贝叶斯推理和高斯过程的优化方法对模拟电缆的刚度和阻尼特性进行了调整。所提出的方法显示了从零开始生成电缆并调整其参数以获得所需平面形状的能力。
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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