基于多约束voronoi的智能仓库任务分配器

George S. Oliveira, P. Plentz, J. T. Carvalho
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引用次数: 0

摘要

多机器人系统由一组机器人组成,它们一起工作以实现一个共同的目标。在这些系统中,有两类问题得到了广泛的解决:多机器人路径规划(MPP)和多机器人任务分配(MRTA)。第一个问题是寻找空间中两点之间的最佳路径,第二个问题是给机器人分配任务,满足限制条件,完成一个或多个一般目标。目标通常与时间优化和能量消耗有关。这些约束需要注意,因为它们影响了问题的复杂性并降低了系统的性能。智能仓库是与这些问题相关的应用的一个重要例子。在这些应用中,产品的拣选和运输控制以自动化的方式进行,由移动机器人完全操作。文献表明,很少有研究探索集成MPP和MRTA策略来解决智能仓库中的任务分配限制。本文的主要贡献是通过使用静态、季节性和动态信息,为智能仓库提供了一个集成的MRTA和MPP方法。静态信息由固定障碍物、电池电量和机器人的负载能力提供。季节性信息来自产品的位置和在特定时期内的可用性。动态信息对应于电池消耗和动态障碍物。提出了一种基于多约束voronoi的任务分配器(MCVB-TA)。它的实现包含了Voronoi图的一个变体,可以根据约束、机器人和环境将机器人分配到最近的任务。仿真结果表明,与常规调度程序相比,该方案大大减少了智能仓库场景中执行任务的时间和能量成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Constrained Voronoi-Based Task Allocator for Smart-Warehouses
Multi-robot systems consist of a set of robots working together to achieve a common goal. In these systems, two types of problems are widely addressed: the multi-robot path planning (MPP) and the multi-robot task allocation (MRTA). While the first one consists of finding the best path between two points in the space, the second one consists of allocating tasks to the robots, meeting restrictions, and completing one or more general objectives. The objectives are usually related to time optimization and energy consumption. The constraints require attention because they impact the complexity of the problem and reduce the system’s performance. Smart warehouses are an important example of application in which these problems are relevant. In such applications, the picking and shipping products control happens in an automated way, and mobile robots completely operate them. The literature shows that few studies explore integrated MPP and MRTA strategies to solve task allocation restrictions in smart warehouses. The main contribution of this paper is to present an integrated MRTA and MPP approach for smart warehouses by using static, seasonal, and dynamic information. Static information is provided by fixed obstacles, battery level, and load capacity of the robots. Seasonal information comes from products’ location and availability of them in a given period. The dynamic information corresponds to battery consumption and dynamic obstacles. In this paper a Multi-Constraints Voronoi-based Task Allocator (MCVB-TA) is presented. Its implementation incorporates a variation of the Voronoi diagram to allocate robots to the nearest tasks according to constraints, robots, and the environment. The simulation results obtained show that the proposed solution considerably reduces the time and energy cost of executing tasks in a smart warehouse scenario compared to a regular scheduler.
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