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Multi-objective heuristics applied to robot task planning for inspection plants

机译:多目标启发式技术在检查工厂机器人任务计划中的应用

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Robotics are generally subject to stringent operational conditions that impose a high degree of criticality on the allocation of resources and the schedule of operations in mission planning. In this regard the so-called cost of a mission must be considered as an additional criterion when designing optimal task schedules within the mission at hand. Such a cost can be conceived as the impact of the mission on the robotic resources themselves, which range from the consumption of battery to other negative effects such as mechanic erosion. This manuscript focuses on this issue by presenting experimental results obtained over realistic scenarios of two heuristic solvers (MOHS and NSGA-II) aimed at efficiently scheduling tasks in robotic swarms that collaborate together to accomplish a mission. The heuristic techniques resort to a Random-Keys encoding strategy to represent the allocation of robots to tasks whereas the relative execution order of such tasks within the schedule of certain robots is computed based on the Traveling Salesman Problem (TSP). Experimental results in three different deployment scenarios reveal the goodness of the proposed technique based on the Multi-objective Harmony Search algorithm (MOHS) in terms of Hypervolume (HV) and Coverage Rate (CR) performance indicators.
机译:机器人技术通常会受到严格的操作条件的约束,这些条件对任务规划中的资源分配和操作计划施加了高度的严格性。在这方面,当在手边的任务中设计最佳任务计划时,必须考虑所谓的任务成本。可以将这种成本视为任务对机器人资源本身的影响,其范围从电池消耗到其他负面影响(例如机械侵蚀)。本手稿重点介绍了在两个启发式求解器(MOHS和NSGA-II)的实际场景下获得的实验结果,旨在有效地调度协同工作以完成任务的机器人群中的任务。启发式技术诉诸于随机键编码策略来表示机器人对任务的分配,而此类机器人在某些机器人时间表内的相对执行顺序是根据旅行商问题(TSP)计算的。在三种不同的部署方案中的实验结果从超容量(HV)和覆盖率(CR)性能指标的角度揭示了基于多目标和谐搜索算法(MOHS)的拟议技术的优势。

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