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Distributed Task Selection in Multi-agent Based Swarms Using Heuristic Strategies

机译:基于启发式策略的基于多智能体的群中分布式任务选择

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Swarm-based systems have emerged as an attractive paradigm for implementing distributed autonomous systems for various applications in commercial, military and business domains. One of the major operations in a swarm-based system is to ensure that the individual swarm units process the tasks in the environment in an efficient manner. This can be achieved using a suitable task selection mechanism that allocates the desired number of swarm units to each task while reducing inter-task latencies and communication overhead, and, ensuring adequate commitment of resources to tasks. In this paper, we describe a multi-agent based distributed task selection mechanism for swarm-based systems. We show that the distributed task selection problem is NP-complete and propose polynomial-time heuristic-based algorithms. Our simulation results show that heuristics in which each swarm unit considers both the effects of other swarm units on tasks and its own relative position to other swarm units achieve better task processing efficiency and improved distribution of swarm units over tasks.
机译:基于群体的系统已经成为一种吸引人的范例,用于为商业,军事和商业领域的各种应用实施分布式自治系统。基于群的系统中的主要操作之一是确保单个群单元以有效的方式处理环境中的任务。这可以使用适当的任务选择机制来实现,该机制为每个任务分配所需数量的群集单元,同时减少任务间的等待时间和通信开销,并确保对任务的资源充分投入。在本文中,我们描述了基于群体的系统的基于多代理的分布式任务选择机制。我们证明了分布式任务选择问题是NP完全的,并提出了基于多项式时间启发式算法。我们的仿真结果表明,在每个群体单元同时考虑其他群体单元对任务的影响以及其自身相对于其他群体单元的相对位置的启发式方法可以实现更好的任务处理效率,并改善群体单元在任务上的分布。

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