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探索一种新颖的基于多查询电阻网格的规划方法,应用于高自由度机器人。

Exploring a Novel Multiple-Query Resistive Grid-Based Planning Method Applied to High-DOF Robotic Manipulators.

机构信息

Instituto Tecnologico Superior de Poza Rica, Tecnologico Nacional de Mexico, Luis Donaldo Colosio Murrieta S/N, Arroyo del Maiz, Poza Rica, Veracruz 93230, Mexico.

Consejo Veracruzano de Investigacion Cientifica y Desarrollo Tecnologico (COVEICYDET), Av. Rafael Murillo Vidal No. 1735, Cuauhtemoc, Xalapa, Veracruz 91069, Mexico.

出版信息

Sensors (Basel). 2021 May 10;21(9):3274. doi: 10.3390/s21093274.

DOI:10.3390/s21093274
PMID:34068486
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8126022/
Abstract

The applicability of the path planning strategy to robotic manipulators has been an exciting topic for researchers in the last few decades due to the large demand in the industrial sector and its enormous potential development for space, surgical, and pharmaceutical applications. The automation of high-degree-of-freedom (DOF) manipulator robots is a challenging task due to the high redundancy in the end-effector position. Additionally, in the presence of obstacles in the workspace, the task becomes even more complicated. Therefore, for decades, the most common method of integrating a manipulator in an industrial automated process has been the demonstration technique through human operator intervention. Although it is a simple strategy, some drawbacks must be considered: first, the path's success, length, and execution time depend on operator experience; second, for a structured environment with few objects, the planning task is easy. However, for most typical industrial applications, the environments contain many obstacles, which poses challenges for planning a collision-free trajectory. In this paper, a multiple-query method capable of obtaining collision-free paths for high DOF manipulators with multiple surrounding obstacles is presented. The proposed method is inspired by the resistive grid-based planner method (RGBPM). Furthermore, several improvements are implemented to solve complex planning problems that cannot be handled by the original formulation. The most important features of the proposed planner are as follows: (1) the easy implementation of robotic manipulators with multiple degrees of freedom, (2) the ability to handle dozens of obstacles in the environment, (3) compatibility with various obstacle representations using mathematical models, (4) a new recycling of a previous simulation strategy to convert the RGBPM into a multiple-query planner, and (5) the capacity to handle large sparse matrices representing the configuration space. A numerical simulation was carried out to validate the proposed planning method's effectiveness for manipulators with three, five, and six DOFs on environments with dozens of surrounding obstacles. The case study results show the applicability of the proposed novel strategy in quickly computing new collision-free paths using the first execution data. Each new query requires less than 0.2 s for a 3 DOF manipulator in a configuration space free-modeled by a 7291 × 7291 sparse matrix and less than 30 s for five and six DOF manipulators in a configuration space free-modeled by 313,958 × 313,958 and 204,087 × 204,087 sparse matrices, respectively. Finally, a simulation was conducted to validate the proposed multiple-query RGBPM planner's efficacy in finding feasible paths without collision using a six-DOF manipulator (KUKA LBR iiwa 14R820) in a complex environment with dozens of surrounding obstacles.

摘要

由于工业领域的巨大需求以及在空间、外科和制药应用方面的巨大发展潜力,机器人机械手的路径规划策略的适用性在过去几十年一直是研究人员关注的热点话题。由于末端执行器位置的高度冗余,高自由度 (DOF) 机械手的自动化是一项具有挑战性的任务。此外,在工作空间中存在障碍物的情况下,任务变得更加复杂。因此,几十年来,将机械手集成到工业自动化过程中最常见的方法是通过人工操作员干预进行演示技术。虽然这是一种简单的策略,但必须考虑一些缺点:首先,路径的成功、长度和执行时间取决于操作员的经验;其次,对于具有少量对象的结构化环境,规划任务很简单。但是,对于大多数典型的工业应用,环境中包含许多障碍物,这给规划无碰撞轨迹带来了挑战。在本文中,提出了一种用于具有多个周围障碍物的高 DOF 机械手的无碰撞路径的多次查询方法。所提出的方法受到基于电阻网格的规划器方法 (RGBPM) 的启发。此外,还实施了一些改进来解决原始公式无法处理的复杂规划问题。所提出的规划器的最重要特征如下:(1) 易于实现具有多个自由度的机器人机械手,(2) 能够处理环境中的数十个障碍物,(3) 与使用数学模型表示的各种障碍物表示兼容,(4) 回收先前的仿真策略将 RGBPM 转换为多次查询规划器,(5) 处理表示配置空间的大型稀疏矩阵的能力。进行了数值模拟,以验证所提出的规划方法对具有三个、五个和六个 DOF 的机械手在具有数十个周围障碍物的环境中的有效性。案例研究结果表明,该新策略在使用第一次执行数据快速计算新的无碰撞路径方面具有适用性。对于配置空间由 7291×7291 稀疏矩阵自由建模的 3 DOF 机械手,每个新查询需要不到 0.2s,对于配置空间由 313,958×313,958 和 204,087×204,087 稀疏矩阵自由建模的五个和六个 DOF 机械手,每个查询分别需要不到 30s 和 20s。最后,进行了仿真以验证提出的多次查询 RGBPM 规划器在使用具有数十个周围障碍物的复杂环境中的六个 DOF 机械手(KUKA LBR iiwa 14R820)时找到无碰撞可行路径的功效。

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