Path planning control using high abstraction level environment model and industrial task-oriented knowledge

Florent Leoty, P. Fillatreau, B. Archimède
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引用次数: 1

Abstract

In order to face an increasing economic competition, industrial manufacturers wish to reduce the time and cost of product development. Furthermore, up-to-date products are more and more integrated, and must be assembled, disassembled or maintained under potentially very strong geometric constraints. In the context of Industry 4.0, manufacturers are therefore expressing the desire to validate all the tasks related to their products lifecycles, from design stage on, by simulation using a digital mock-up, and before building the physical prototypes. A key issue is then to find a trajectory, a movement, to show the feasibility of the simulated scenarios. Automatic path planning algorithms, developed by the robotics community from the 1980s on, have been widely used for this purpose. In this paper, we intend to improve the relevance of the trajectories proposed by such algorithms and the associated computation times. To do so, we consider: a) the use of path planning algorithms or of combinations of these; b) the involvement for the environment modelling of data with a higher abstraction level than the purely geometric data traditionally used; and c) the representation of the knowledge related to the task to be performed by using ontologies. The approaches developed and associated improvements of the state of the art are validated experimentally through the simulation of highly geometrically constrained manipulation tasks.
利用高抽象层次的环境模型和面向工业任务的知识进行路径规划控制
为了面对日益激烈的经济竞争,工业制造商希望减少产品开发的时间和成本。此外,最新的产品越来越集成,必须在潜在的非常强大的几何约束下进行组装、拆卸或维护。因此,在工业4.0的背景下,制造商表示希望在构建物理原型之前,通过使用数字模型进行仿真,从设计阶段开始验证与其产品生命周期相关的所有任务。一个关键的问题是找到一个轨迹,一个运动,来显示模拟场景的可行性。自20世纪80年代以来,机器人社区开发的自动路径规划算法已被广泛用于此目的。在本文中,我们打算提高这些算法提出的轨迹的相关性和相关的计算时间。为此,我们考虑:a)使用路径规划算法或这些算法的组合;B)与传统上使用的纯几何数据相比,具有更高抽象层次的数据环境建模;c)使用本体表示与要执行的任务相关的知识。通过高度几何约束操作任务的模拟实验验证了开发的方法和相关的技术改进。
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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