基于时空图注意力网络的空中编队意图识别
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中北大学信息与通信工程学院 太原 030051

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TN911.7

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Airborne formation intention recognition based on spatio-temporal graph attention network
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College of Information and Communications Engineering,North University of China,Taiyuan 030051,China

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    摘要:

    针对现有意图识别方法未考虑编队空间特性所导致的单元间动态交互缺失的问题,本文引入时空耦合机制,提出了一种结合动态图注意力机制与时空建模的编队意图识别方法。首先,依据编队中目标类型属性确定全局交互骨干网,并结合Top-K近邻策略动态生成邻接矩阵,从而将动态演化的编队态势转化为结构化的时序图;其次,通过在图注意力网络(GAT)中引入协同演化注意力池机制,自适应地学习不同目标间交互的差异化权重,以快速捕捉动态编队时序图中空间协同特征;最后,通过多尺度注意力机制增强的双向门控循环单元(BiGRU),对经GAT提取的包含空间协同信息的节点状态序列进行时序分析,建立了一种时空特征深度融合的意图识别模型(STGAT-BiGRU)。仿真实验结果表明,所提方法与现有主流方法相比,在准确率和F1 分数上平均提升了8.78%和8.9%,证明了所提方法的有效性,并为掌控态势演变、获取决策先机提供了技术支撑。

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    To address the issue of missing dynamic interactions between units caused by existing intent recognition methods failing to account for formation spatial characteristics, this paper introduces a spatiotemporal coupling mechanism and proposes a formation intent recognition method that integrates dynamic graph attention mechanisms with spatiotemporal modeling. First, a global interaction backbone network is established based on target attributes within the formation, combined with a Top-K nearest neighbor strategy to dynamically generate an adjacency matrix. This transforms the dynamically evolving formation state into a structured temporal graph. Second, a Graph Attention Network (GAT) enhanced with a Co-evolution Aware Pooling mechanism is employed to adaptively learn differentiated interaction weights between different targets, enabling rapid capture of spatial coordination features in the dynamic formation temporal graph. Finally, a Bidirectional Gated Recurrent Unit (BiGRU) augmented with a MultiScale Attention mechanism is introduced to perform temporal analysis on the node state sequences extracted by GAT, which contain spatial coordination information. This establishes an intent recognition model that deeply integrates spatiotemporal features (STGAT-BiGRU). Simulation results show that, compared to existing methods, the proposed approach achieves average improvements of 8.78% and 8.9% in accuracy and F1 score, respectively, demonstrating its effectiveness and providing technical support for mastering situation evolution and gaining decision-making initiative.

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牛景琦,杨风暴,王肖霞.基于时空图注意力网络的空中编队意图识别[J].电子测量技术,2026,49(4):169-179

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  • 在线发布日期: 2026-04-16
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