干扰机分类与联邦学习

Peng Wu, Helena Calatrava, T. Imbiriba, P. Closas
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引用次数: 1

摘要

干扰信号会危及GNSS接收机的运行,直至使其无法运行。由于干扰信号的普遍存在,干扰抑制和定位技术至关重要,而干扰机分类则有助于实现这一目标。数据驱动的模型在检测这些威胁方面已经被证明是有用的,而他们使用众包数据的训练在私有数据共享方面仍然构成挑战。本文研究使用联邦学习在每个设备上局部训练干扰信号分类器,并在中央服务器上对模型更新进行聚合和平均。这允许不需要集中数据存储或访问客户端本地数据的隐私保护培训程序。在一个由模拟干扰GNSS信号的频谱图图像组成的数据集上对所使用的框架FedAvg进行了评估。六种不同的干扰器类型被有效地分类,其结果与需要大量数据通信并涉及隐私保护问题的完全集中式解决方案相当。
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Jammer classification with Federated Learning
Jamming signals can jeopardize the operation of GNSS receivers until deying its operation. Given their ubiquity, jamming mitigation and localization techniques are of crucial importance, for which jammer classification is of help. Data-driven models have been proven useful in detecting these threats, while their training using crowdsourced data still poses challenges when it comes to private data sharing. This article investigates the use of federated learning to train jamming signal classifiers locally on each device, with model updates aggregated and averaged at the central server. This allows for privacy-preserving training procedures that do not require centralized data storage or access to client local data. The used framework FedAvg is assessed on a dataset consisting of spectrogram images of simulated interfered GNSS signal. Six different jammer types are effectively classified with comparable results to a fully centralized solution that requires vast amounts of data communication and involves privacy-preserving concerns.
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