图上的态势感知:实现用于频谱分析和战场管理的图神经网络

Jeff Anderson
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引用次数: 0

摘要

图神经网络(GNN)最初是为了推断复杂图环境(如社交网络)中对象之间的关系而开发的。不过,最近它们已被应用到自然支持图表达的其他领域,如硬件和软件分析。我们建议将 GNN 的应用扩展到包含时间成分的数据集,从而使 GNN 能够推断涉及射频(RF)频谱的事件驱动情况。战后分析可对 GNN 进行训练,以识别代表事件序列的各个子图。经过训练的 GNN 可在战争时期用于推断更大的情况,因为一系列子图已被识别出来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Situational awareness on a graph: towards graph neural networks for spectrum analysis and battlefield management
Graph Neural Networks (GNN) were originally developed to infer relationships between objects in complex graph environments such as social networks. However, they have recently been applied to other domains which naturally support graph expression, such as hardware and software analysis. We propose to extend the application of GNNs to datasets which contain a temporal component, thus enabling GNN inference of event-driven situations involving the radio frequency (RF) spectrum. Post-battle analysis can train a GNN to identify individual subgraphs representing sequences of events. Trained GNNs can then be used in war time to infer a larger situation as a series of subgraphs are identified.
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