环境温度对射频指纹识别设备分类的影响

Özkan Yılmaz, Mehmet Akif Yazici
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引用次数: 2

摘要

物理层认证是一项重要的网络安全技术,特别是在军事场景下。在这种情况下,使用射频指纹技术对设备进行分类是一种很有前途的方法。射频指纹技术是基于识别在无线电设备传输开始时观察到的瞬态波形的设备唯一特征。本文研究了环境温度对基于射频指纹识别的射频设备分类性能的影响。研究中使用的无线电设备属于同一品牌、型号和生产日期,这比对不同品牌或型号的无线电设备进行分类要困难得多。我们的研究结果表明,当测试数据和训练数据在相同的温度下收集时,使用卷积神经网络模型(如ResNet50)可以获得较高的准确率,而当测试数据和训练数据属于不同的温度值时,性能会受到影响。我们还提供了混合训练模型的性能数据,该模型使用了不同温度值下的训练数据。
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The Effect of Ambient Temperature On Device Classification Based On Radio Frequency Fingerprint Recognition
Physical layer authentication is an important technique for cybersecurity, especially in military scenarios. Device classification using radio frequency fingerprinting, which is based on recognizing device-unique characteristics of the transient waveform observed at the beginning of a transmission from a radio device, is a promising method in this context. In this study, the effect of the ambient temperature on the performance of radio device classification based on RF fingerprinting is investigated. The radio devices used in the study belong to the same brand, model, and production date, making the problem more difficult than classifying radio devices of different brands or models. Our results show that high levels of accuracy can be attained using convolutional neural network models such as ResNet50 when the test data and the training data are collected at the same temperature, whereas performance suffers when the test data and the training data belong to different temperature values. We also provide the performance figures of a blended training model that uses training data taken at various temperature values.
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