Secure Federated Learning for Cognitive Radio Sensing

23 Mar 2023  ·  Malgorzata Wasilewska, Hanna Bogucka, H. Vincent Poor ·

This paper considers reliable and secure Spectrum Sensing (SS) based on Federated Learning (FL) in the Cognitive Radio (CR) environment. Motivation, architectures, and algorithms of FL in SS are discussed. Security and privacy threats on these algorithms are overviewed, along with possible countermeasures to such attacks. Some illustrative examples are also provided, with design recommendations for FL-based SS in future CRs.

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