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History-Based Response Threshold Model for Division of Labor in Multi-Agent Systems

机译:基于历史的多代理系统分工响应阈值模型

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摘要

Dynamic task allocation is a necessity in a group of robots. Each member should decide its own task such that it is most commensurate with its current state in the overall system. In this work, the response threshold model is applied to a dynamic foraging task. Each robot employs a task switching function based on the local task demand obtained from the surrounding environment, and no communication occurs between the robots. Each individual member has a constant-sized task demand history that reflects the global demand. In addition, it has response threshold values for all of the tasks and manages the task switching process depending on the stimuli of the task demands. The robot then determines the task to be executed to regulate the overall division of labor. This task selection induces a specialized tendency for performing a specific task and regulates the division of labor. In particular, maintaining a history of the task demands is very effective for the dynamic foraging task. Various experiments are performed using a simulation with multiple robots, and the results show that the proposed algorithm is more effective as compared to the conventional model.
机译:动态任务分配是一组机器人中的必要条件。每个成员应决定自己的任务,以使其与整个系统中的当前状态最相称。在这项工作中,将响应阈值模型应用于动态觅食任务。每个机器人都基于从周围环境获得的本地任务需求来采用任务切换功能,并且在机器人之间不会发生通信。每个成员都有固定大小的任务需求历史记录,可以反映全球需求。此外,它具有所有任务的响应阈值,并根据任务需求的刺激来管理任务切换过程。然后,机器人确定要执行的任务,以调节整体劳动分工。该任务选择引起执行特定任务的专门趋势,并调节分工。特别地,保持任务需求的历史对于动态觅食任务非常有效。使用具有多个机器人的模拟进行了各种实验,结果表明,与传统模型相比,该算法更有效。

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