基于多维特征时空融合网络的雷达PRI调制类型识别
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中国电子科技集团公司第四十一研究所电子测试技术重点实验室青岛266555

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TH7

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国家自然科学基金(U24B6013)项目资助


Radar PRI modulation recognition based on multi-dimensionalfeature space-time fusion network
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Science and Technology on Electronic Test & Measurement Laboratory, The 41st Institute ofChina Electronic Technology Group Corporation, Qingdao 266555, China

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    摘要:

    雷达信号的脉冲重复间隔(PRI)调制类型识别作为电子战系统信号分选与威胁评估的核心环节,其识别精度直接决定战场电磁态势认知与对抗策略的生成效能。针对传统方法存在的专家经验依赖性强、单一模型特征提取能力不足等问题,提出一种基于多维特征时空融合的深度神经网络架构。该方法通过构建卷积神经网络与长短时记忆网络的级联架构,挖掘雷达脉冲时空特征与调制时序演化规律之间的内在关联性,引入序列注意力机制对输出的时序特征进行加权融合,突出PRI变化的关键时刻,从而实现脉冲重复间隔调制类型的准确识别。实验基于包含固定、抖动、组变、参差和滑变5类典型调制信号的数据集进行验证,结果表明,在无干扰理想条件下,模型整体识别准确率达99.40%;在高达70%的脉冲丢失干扰下,识别准确率仍可达70.93%;在同等强度的虚假脉冲干扰下,识别准确率高达96.13%,综合性能显著优于CNN、CNN-LSTM、GRU-Attention及SE-NET等主流对比模型,有效提升了复杂电磁环境下PRI调制识别的精度与鲁棒性。此外,模型单样本推理时间仅为1.54 ms,参数量为653 814,兼具良好的实时性与轻量化部署潜力。所提方法为复杂电磁环境下雷达PRI调制类型的实时、准确识别提供了有效的技术途径,具有重要的理论价值与工程实用性。

    Abstract:

    Pulse repetition interval (PRI) modulation type recognition of radar signals is a critical component for signal sorting and threat assessment in electronic warfare systems, as its accuracy directly affects battlefield electromagnetic situational awareness and the effectiveness of countermeasure strategies. To address the limitations of traditional methods—namely, strong reliance on expert knowledge and insufficient feature extraction capacity of single models—this paper proposes a deep neural network architecture based on multi-dimensional feature space-time fusion. The approach constructs a cascade of convolutional neural networks (CNN) and long short-term memory (LSTM) networks to capture the intrinsic correlations between the spatiotemporal characteristics of radar pulses and the temporal evolution of modulation patterns. A sequential attention mechanism is incorporated to weight and fuse the extracted temporal features, emphasizing key moments of PRI variation and enabling accurate identification of PRI modulation types. Experiments are conducted on a dataset comprising five typical modulation types: Fixed, jitter, group change, stagger, and slip. Results show that, under ideal interference-free conditions, the model achieves an overall recognition accuracy of 99.40%. Even under 70% pulse loss interference, recognition accuracy remains 70.93%, and under equal-strength false pulse interference, it reaches 96.13%. The proposed model significantly outperforms mainstream comparison models, including CNN, CNN-LSTM, GRU-Attention, and SE-NET, demonstrating enhanced accuracy and robustness in complex electromagnetic environments. Furthermore, the model requires only 1.54 ms for single-sample inference and has 653 814 parameters, offering strong real-time capability and potential for lightweight deployment. The proposed method provides an effective technical solution for real-time, accurate recognition of radar PRI modulation types in complex electromagnetic environments, with both theoretical significance and practical engineering applicability.

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张世成,周游,年夫顺,王宏硕,韩顺利.基于多维特征时空融合网络的雷达PRI调制类型识别[J].仪器仪表学报,2026,47(2):116-125

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  • 在线发布日期: 2026-04-08
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