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Supporting the Commander's information requirements: Automated support for Battle Drill processes using R-CAST

机译:支持指挥官的信息要求:使用R-CAST自动支持Battle Drill流程

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This paper discusses a novel approach that addresses the problem of supporting the Commander''s dynamic information requirements through automation of the Military Decision-Making Process (MDMP) for time-constrained environments and training purposes, as part of the Tactical Human Integration of Networked Knowledge (THINK) Army Technology Objective - Research (ATO-R) initiative. We demonstrate this capability with automated user support for the execution of battle drills. Our approach is based on adapting the R-CAST cognitively-inspired agent architecture towards a context-aware anticipation of information requirements. R-CAST is a computational model of the Recognition-Primed Decision (RPD) model, which models human decision making under time stress. R-CAST agents support and collaborate with human decision making teams as both “smart aids” and “effective teammates” by anticipating, investigating, seeking, and interpreting information relevant to decision making. A key feature of R-CAST is that the proactive sharing of information relevant to decision making is automatically generated by the computational RPD model. The fundamental research question being addressed is whether the inclusion of R-CAST in Army staff processes improves said staff understanding and execution of battle tasks. We adapted R-CAST to Battle Drill #26 (i.e., responding to an IED event) as a proof of concept for team decision making under stress and constant switching of modalities. We demonstrate that the use of R-CAST cognitive agents effectively assists the Battle Manager in the S3 cell with auto-filling certain forms required by doctrine in response to the dynamism of the current state of the environment, improving cognitive performance in this task. Our novel approach integrates relevant context in communication, information, and socio-cognitive networks, coupled with cognitive modeling. We report initial findings that we can use the R-CAST cognitive framew-n-nork to effectively and efficiently develop individual intelligent training tools that understand and support the dynamic information requirements of Commanders.
机译:本文讨论了一种新颖的方法,该方法通过在时间有限的环境和训练目的中通过自动化军事决策过程(MDMP)来支持司令员的动态信息需求,这是网络战术人类集成的一部分知识(THINK)陆军技术目标-研究(ATO-R)计划。我们通过执行战斗演习的自动用户支持来演示此功能。我们的方法基于使R-CAST认知启发式代理架构适应于信息需求的上下文感知预期。 R-CAST是识别优先决策(RPD)模型的计算模型,该模型对在时间压力下的人类决策进行建模。 R-CAST代理通过预测,调查,寻找和解释与决策相关的信息,以“智能辅助工具”和“有效的队友”的身份支持并与人类决策团队进行协作。 R-CAST的一个关键特征是,与决策相关的信息的主动共享是由RPD计算模型自动生成的。要解决的基本研究问题是将R-CAST纳入陆军参谋流程是否能改善参谋人员对战斗任务的理解和执行。我们将R-CAST改编为26号战役演习(即对IED事件的响应),作为在压力和方式不断变化的情况下进行团队决策的概念证明。我们证明,R-CAST认知剂的使用可有效填充S3单元中的战斗管理器,以自动填充理论所要求的某些形式,以响应当前环境的动态变化,从而改善此任务中的认知表现。我们的新颖方法将沟通,信息和社会认知网络中的相关上下文与认知建模结合在一起。我们报告了初步发现,我们可以使用R-CAST认知框架-n-挪威克来有效地开发个性化的智能训练工具,这些工具可以理解和支持指挥官的动态信息需求。

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