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Representing and reasoning over military context information in complex multi domain battlespaces using artificial intelligence and machine learning

机译:用人工智能和机器学习在复杂多领域战斗空间中的军事情境信息代表和推理

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In order to make sensible decisions during a multi domain battle, autonomous systems, just like humans, need tounderstand the current military context. They need to ‘know’ important mission context information such as, what is thecommander’s intent and where are, and in what state, are friendly and adversary actors. They also need an understandingof the operating environment; the state of the physical systems ‘hosting’ the AI; and just as importantly, the state of thecommunication networks that allows each AI ‘node’ to receive and share critical information. The problem is: capturing,representing, and reasoning over this contextual information is especially challenging in distributed, dynamic, congestedand contested multi domain battlespaces. This is not only due to rapidly changing contexts and noisy, incomplete andpotentially erroneous data, but also because, at the tactical edge, we have limited computing, storage and batteryresources. The US Army Research Laboratory, Australia’s Defence Science Technology Group and associatedUniversity partners are collaborating to develop an autonomous system called SMARTNet that can transform, prioritizeand control the flow of information across distributed, intermittent and limited tactical networks. In order to do thishowever, SMARTNet requires a good understanding of the current military context. This paper describes how we aredeveloping this contextual understanding using new AI and ML approaches. It then describes how we are integratingthese approaches into an exemplar tactical network application that improves the distribution of information in complexoperating environments. It concludes by summarizing our results to-date and by setting a way forward for futureresearch.
机译:为了在多领域的战斗中做出明智的决定,自主系统,就像人类一样,需要了解当前的军事背景。他们需要“知道”重要的使命背景信息,如,是什么指挥官的意图以及在哪里以及在什么状态,是友好和对手的演员。他们还需要一个理解操作环境; “托管”AI的物理系统的状态;同样重要的是,国家的状态通信网络允许每个AI“节点”接收和共享关键信息。问题是:捕获,代表和推理在这种上下文信息上尤其具有挑战性,在分布式,动态,拥挤中尤其具有挑战性和有争议的多领域战斗空间。这不仅是由于快速改变的背景和嘈杂,不完整和可能是错误的数据,但也因为,在战术边缘,我们的计算,存储和电池有限资源。美国陆军研究实验室,澳大利亚的国防科技集团及相关大学合作伙伴正在合作开发一个名为SmartNet的自治系统,可以改变,优先顺序并控制跨分布式,间歇和有限的战术网络的信息流。为此但是,SmartNet需要对当前的军事背景充分理解。本文介绍了我们的方式使用新的AI和ML方法开发这种语境理解。它然后描述我们如何整合这些方法进入示例性战术网络应用程序,该网络应用程序可提高复杂信息的分布操作环境。它通过总结我们的结果及时,并通过为将来的方式进行前进方向来结束研究。

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