一种数据驱动的机械手拓扑优化设计框架

Valerio Bo, Enrico Turco, Maria Pozzi, M. Malvezzi, D. Prattichizzo
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引用次数: 0

摘要

以拓扑优化为代表的是提高机器人设备设计的一种广泛的方法。通常,优化的目的是设计机器人的某一部分,以满足先验的、用户自定义的力学性能,同时最大限度地减少建造结构所需的材料。本文将拓扑优化应用于机器人抓取任务,并基于抓取任务的模拟实验,提出以数据驱动的方式定义优化需求。具体来说,我们提出的体系结构由三个连续的阶段组成。该体系结构的输入包括夹持器的初始模型、需要优化的特定夹持器部件和一组参数。该结构的第一部分从抓手组件获取力信号,在抓手模拟过程中感知力信号。因此,这些信号被送入第二阶段,第二阶段通过像素连通性和动态时间翘曲算法分析力,并为拓扑优化提供指令。最后,第三块执行优化。通过优化软刚性夹持器的特定部分,对该方法进行了验证。仿真结果证实,所提出的结构提供了原始抓取器的改进版本,不仅在优化材料使用方面,而且在抓取成功率方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-Driven Topology Optimization Framework for Designing Robotic Grippers
A widespread methodology to enhance the design of robotic devices is represented by topology optimization. Typically, the optimization aims at designing a certain part of the robot to satisfy a priori, user-defined mechanical properties while minimizing the used material for building the structure. In this paper, we apply topology optimization to robotic grippers, and we propose to define the requirements for the optimization in a data-driven way based on simulated experiments of grasping tasks. Specifically, the architecture we propose is composed of three sequential phases. The input of the architecture includes the initial model of the gripper, the specific gripper component to be optimized, and a set of parameters. The first part of the architecture acquires force signals from the gripper component that are sensed during the grasping simulations. Hence, these signals are fed into the second phase, which analyzes the forces through pixel connectivity and Dynamic Time Warping algorithms and provides the instructions for the topology optimization. Ultimately, the third block performs the optimization. The method is tested by optimizing a specific part of a soft-rigid gripper. Results from simulation confirm that the proposed architecture provides an improved version of the original gripper, not only in terms of optimized use of materials but also in terms of grasp success rate.
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