基于深度自动编码器的雷达信号源识别:解决大规模不平衡数据和边缘计算限制问题

Yuehua Liu, Xiaoyu Li, Jifei Fang
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摘要

雷达辐射源识别技术对电子对抗、电磁控制和空中交通管理至关重要。其主要功能是通过计算和推断截获信号的参数来实时识别雷达信号。随着人工智能技术的飞速发展,深度学习算法在应对雷达辐射源识别挑战方面取得了可喜的成果。然而,巨大的障碍依然存在:雷达辐射源数据往往呈现大规模、不均衡的样本分布,且样本标记不完整,导致训练数据资源有限。此外,在实际应用中,模型必须部署在户外边缘计算终端上,而轻量级嵌入式系统的存储和计算能力有限。本文的重点是克服数据资源和边缘计算能力带来的限制,设计和部署大规模雷达辐射源识别算法。首先,本文通过数据分析、预处理和特征选择,提取并形成先验知识信息,解决了大规模雷达辐射源样本的相关问题。随后,结合这些先验知识,开发了一个名为 RIR-DA(基于深度学习自动编码器的雷达 ID 识别)的模型。在样本分布高度不平衡的数据集中,RIR-DA 模型成功识别了 96 个雷达辐射源目标,准确率超过 95%。为解决轻量级边缘计算平台迁移效果差和计算效率低的难题,设计了一种基于嵌入式微处理器 T4240 的并行加速方案。这种方法在保持原有训练性能的同时,将计算速度提高了近八倍。此外,还初步设计了一种结合 PC 设备和边缘设备的雷达辐射源智能检测系统的集成解决方案。实验结果表明,与现有的雷达辐射源目标识别算法相比,所提出的方法具有更优越的模型性能和更大的实用扩展性。该研究为深度学习模型在雷达辐射源识别中的工业应用提供了一种创新的探索性解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep-Autoencoder-Based Radar Source Recognition: Addressing Large-Scale Imbalanced Data and Edge Computing Constraints
Radar radiation source recognition technology is vital in electronic countermeasures, electromagnetic control, and air traffic management. Its primary function is to identify radar signals in real time by computing and inferring the parameters of intercepted signals. With the rapid advancement of AI technology, deep learning algorithms have shown promising results in addressing the challenges of radar radiation source recognition. However, significant obstacles remain: the radar radiation source data often exhibit large-scale, unbalanced sample distribution and incomplete sample labeling, resulting in limited training data resources. Additionally, in practical applications, models must be deployed on outdoor edge computing terminals, where the storage and computing capabilities of lightweight embedded systems are limited. This paper focuses on overcoming the constraints posed by data resources and edge computing capabilities to design and deploy large-scale radar radiation source recognition algorithms. Initially, it addresses the issues related to large-scale radar radiation source samples through data analysis, preprocessing, and feature selection, extracting and forming prior knowledge information. Subsequently, a model named RIR-DA (Radar ID Recognition based on Deep Learning Autoencoder) is developed, integrating this prior knowledge. The RIR-DA model successfully identified 96 radar radiation source targets with an accuracy exceeding 95% in a dataset characterized by a highly imbalanced sample distribution. To tackle the challenges of poor migration effects and low computational efficiency on lightweight edge computing platforms, a parallel acceleration scheme based on the embedded microprocessor T4240 is designed. This approach achieved a nearly eightfold increase in computational speed while maintaining the original training performance. Furthermore, an integrated solution for a radar radiation source intelligent detection system combining PC devices and edge devices is preliminarily designed. Experimental results demonstrate that, compared to existing radar radiation source target recognition algorithms, the proposed method offers superior model performance and greater practical extensibility. This research provides an innovative exploratory solution for the industrial application of deep learning models in radar radiation source recognition.
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