地理环境中的分布式团队资源分配建模

C. Zhou, P. Luh, D. Kleinman
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引用次数: 2

摘要

在许多大型系统中,决策功能分布在多个人类决策者身上,这些决策者可以访问不同位置的资源,并负责处理随机到达的任务。这导致了一个复杂的团队资源分配和协调问题。本文在实验室实验的基础上,提出了研究人类团队任务处理行为的数学模型和求解方法。将现阶段调查的问题表述为涉及多任务、多平台(配备资源的车辆)的集中调度问题。考虑了地理因素(例如,位置和速度)以及任务处理平台的组合。结合决策树和“吸引力度量”的概念,提出了一种解决方法。然后将该方法应用于解决实验案例,解决方法产生的结果与从人体实验中获得的结果相似,并捕获了人类的决策行为。进一步的模型数据比较揭示了人类团队行为中隐藏的几个趋势,例如,人类团队通过加速资源使用来适应节奏,但牺牲了效率。该模型和解决方案方法将扩展到分布式案例,以类似于团队成员之间的协调,并且将开发一个规范描述模型来分析人类的决策制定。
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Modeling Distributed Team Resource Allocation within A Geographical Environment
Decisionmaking functions in many large scale systems are distributed over multiple human decisionmakers who may have access to resources at different locations and are responsible for processing randomly arriving tasks. This leads to a complex team resource allocation and coordination problem. This paper presents a mathematical model and a solution methodology to investigate human team task processing behaviors based on a laboratory experiment. The problem at the current stage of investigation is formulated as a centralized scheduling problem involving multiple tasks and multiple platforms (vehicles equipped with resources). The geographical factors (e.g., locations and velocities) and combination of platforms for task processing are considered. A solution methodology is developed by combining decision tree and the concept of "attractiveness measure." This method is then applied to solve the experimental cases, and the solution methodology generates results similar to those obtained from the human experiment and captures human decisionmaking behaviors. Further model-dats comparison reveals several hidden tendencies in human team behavior, e.g., human teams adapts to tempo by speeding up resource usage but sacrificing efficiency. This model and solution methodology will be extending to a distributed case to resemble the coordination between team members, and a normative-descriptive model will be developed to analyze human decisionmaking.
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