RF Waveform Synthesis Guided by Deep Reinforcement Learning

T. S. Brandes, Scott Kuzdeba, J. McClelland, N. Bomberger, Andrew Radlbeck
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引用次数: 4

Abstract

In this work, we demonstrate a system that enhances radio frequency (RF) fingerprints of individual transmitters via waveform modification to uniquely identify them amidst an ensemble of identical transmitters. This has the potential to enable secure identification, even in the presence of stolen and retransmitted unique device identifiers that are present in the transmitted waveforms, and ensures robust communications. This approach also lends itself to steganography as the waveform modifications can themselves encode information. Our system uses Bayesian program learning to learn specific characteristics of a set of emitters, and integrates the learned programs into a reinforcement learning architecture to build a policy for actions applied to the digital waveform before transmission. This allows the system to learn how to modify waveforms that leverage and emphasize inherent differences within RF front-ends to enhance their distinct characteristics while maintaining robust communications. In this ongoing research, we demonstrate our system in a small population, and provide a road map to expand it to larger populations that are expected in today’s interconnected spaces.
基于深度强化学习的射频波形合成
在这项工作中,我们展示了一个系统,该系统通过波形修改来增强单个发射机的射频(RF)指纹,以便在一组相同的发射机中唯一地识别它们。即使在传输波形中存在被盗和重传的唯一设备标识符的情况下,这也有可能实现安全识别,并确保可靠的通信。这种方法也适用于隐写术,因为波形修改本身可以编码信息。我们的系统使用贝叶斯程序学习来学习一组发射器的特定特征,并将学习到的程序集成到强化学习架构中,以建立在传输前应用于数字波形的动作策略。这使系统能够学习如何修改利用和强调RF前端固有差异的波形,以增强其独特特性,同时保持稳健的通信。在这项正在进行的研究中,我们在一个小群体中展示了我们的系统,并提供了一个路线图,将其扩展到今天互联空间中预期的更大群体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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