Role-oriented Task Allocation in Human-Machine Collaboration System

Ji Liu, Yunpeng Zhao
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Abstract

In the past few years, collaborative AI-infused machines have been introduced as a new generation of industrial “workers”, working with humans to share the workload. These “workers” have the potential to realize Human-Machine Collaboration (HMC),which enables flexible automation. However, combining intelligent machines with humans to obtain more efficient and accuracy human-in-the-loop solutions is a nontrivial task. Therefore, how to allocate tasks between humans and machines has become an important issue in system design. Inspiring by the graph path searching, in this paper, we adopt an acyclic direction graph to construct the role-oriented task allocation problem, and develop an Ant colony optimization based Human-Machine Task Allocation (A-HMTA) approach to find an optimized allocation solution in the search space. Experimental results show that our approach is superior to traditional approaches in terms of cost and time consumption.
人机协作系统中面向角色的任务分配
在过去的几年里,注入人工智能的协作机器作为新一代工业“工人”被引入,与人类一起工作,分担工作量。这些“工人”有可能实现人机协作(HMC),从而实现灵活的自动化。然而,将智能机器与人类结合起来以获得更高效、更准确的人在环解决方案是一项艰巨的任务。因此,如何在人与机器之间分配任务已成为系统设计中的一个重要问题。受图路径搜索的启发,本文采用无环方向图构造面向角色的任务分配问题,并提出了一种基于蚁群优化的人机任务分配(A-HMTA)方法,在搜索空间中寻找最优分配解。实验结果表明,该方法在成本和时间上都优于传统方法。
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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