Task planning in robot groups for problems with implicitly defined scenarios based on finite-state automata technique

S. Manko, S. Diane, V. Lokhin
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引用次数: 6

Abstract

This paper provides a methodology for planning collective actions of a group of autonomous robots to solve a multi-stage task in a partially determined environment when operation scenario is not known in advance. We describe finite-automata model of the multi-stage problem and propose a planning algorithm for dynamic formation of the scenario and its parallel-sequential execution. The resulting network of finite state machines allows not only to plan actions of the robots, but also to monitor task execution progress in real-time. Experimental results presented in the paper fully confirm the reliability of the proposed approach.
基于有限状态自动机技术的隐式场景问题机器人群任务规划
本文提供了一种方法来规划一组自主机器人的集体行动,以解决一个多阶段的任务,在一个部分确定的环境,当操作场景是未知的提前。本文描述了多阶段问题的有限自动机模型,提出了一种场景动态形成及其并行顺序执行的规划算法。由此产生的有限状态机网络不仅可以规划机器人的动作,还可以实时监控任务的执行进度。实验结果充分证明了该方法的可靠性。
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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