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AutoSMC: An Automated Machine Learning Framework for Signal Modulation Classification

Yiran Wang, Jing Bai, Zhu Xiao, Zheng Chen, Yong Xiong, Hongbo Jiang, Licheng Jiao

2024IEEE Transactions on Information Forensics and Security13 citationsDOI

Abstract

The electromagnetic environments have become more complex with the development of wireless communication technology. Signal modulation classification has attracted extensive attention due to its application in electronic countermeasures and physical layer security threat prevention under complex electromagnetic environments. Excellent classification performance requirements challenge the adaptability of the method and the ability to extract modulation characteristics. This paper proposes an automated machine learning framework, AutoSMC, for signal modulation classification. An adaptive signal augmentation method is proposed to adapt to the network changes during the search process. In order to extract the modulation features effectively, an scalable convolutional random fourier feature block is proposed. Moreover, the initial search space of the framework is given. The Bayesian Optimization is used to drive hyperparameter optimization to achieve AutoSMC and obtain the optimal method state. Great experiments were carried out on RADIOML 2016.10A and RADIOML 2016.10B. Experimental evaluations on these datasets show that our approach AutoSMC achieves state-of-the-art results compared to the most relevant signal modulation classification methods.

Topics & Concepts

Computer scienceModulation (music)Artificial intelligenceMachine learningSignal processingSIGNAL (programming language)Pattern recognition (psychology)Speech recognitionDigital signal processingComputer hardwareAestheticsProgramming languagePhilosophyWireless Signal Modulation ClassificationFractal and DNA sequence analysisRadar Systems and Signal Processing
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