Feasibility of Modeling Orthogonal Frequency-Division Multiplexing Communication Signals with Unsupervised Generative Adversarial Network.

IF 1.3 4区 工程技术 Q3 INSTRUMENTS & INSTRUMENTATION
Jack Sklar, Adam Wunderlich
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引用次数: 0

Abstract

High-quality recordings of radio frequency (RF) emissions from commercial communication hardware in realistic environments are often needed to develop and assess spectrum-sharing technologies and practices, e.g., for training and testing spectrum sensing algorithms and for interference testing. Unfortunately, the time-consuming, expensive nature of such data collections together with data-sharing restrictions pose significant challenges that limit data set availability. Furthermore, developing accurate models of real-world RF emissions from first principles is often very difficult because system parameters and implementation details are at best only partially known, and complex system dynamics are difficult to characterize. Hence, there is a need for flexible, data-driven methods that can leverage existing data sets to synthesize additional similar waveforms. One promising machine-learning approach is unsupervised deep generative modeling with generative adversarial networks (GANs). To date, GANs for RF communication signals have not been studied thoroughly. In this paper, we present the first in-depth investigation of generated signal fidelity for GANs trained with baseband orthogonal frequency-division multiplexing (OFDM) signals, where each subcarrier is digitally modulated with quadrature amplitude modulation (QAM). Building on prior GAN methods, we developed two novel GAN models and evaluated their performance using simulated data sets with known ground truth. Specifically, we investigated model performance with respect to increasing data set complexity over a range of OFDM parameters and conditions, including fading channels. The findings presented here inform the feasibility of use cases and provide a foundation for further investigations into deep generative models for RF communication signals.

无监督生成对抗性网络正交频分复用通信信号建模的可行性
通常需要在现实环境中对商业通信硬件的射频(RF)发射进行高质量记录,以开发和评估频谱共享技术和实践,例如,用于训练和测试频谱传感算法以及干扰测试。不幸的是,此类数据收集的耗时、昂贵以及数据共享限制带来了重大挑战,限制了数据集的可用性。此外,根据第一性原理开发真实世界RF发射的精确模型通常非常困难,因为系统参数和实现细节充其量只是部分已知,并且复杂的系统动力学很难表征。因此,需要灵活的数据驱动方法,可以利用现有的数据集来合成额外的类似波形。一种很有前途的机器学习方法是使用生成对抗性网络(GANs)的无监督深度生成建模。到目前为止,还没有对用于RF通信信号的GANs进行彻底的研究。在本文中,我们首次深入研究了用基带正交频分复用(OFDM)信号训练的GANs的生成信号保真度,其中每个子载波都用正交幅度调制(QAM)进行数字调制。在现有GAN方法的基础上,我们开发了两个新的GAN模型,并使用具有已知地面实况的模拟数据集评估了它们的性能。具体而言,我们研究了在一系列OFDM参数和条件(包括衰落信道)下,随着数据集复杂性的增加,模型性能。本文的研究结果为用例的可行性提供了信息,并为进一步研究射频通信信号的深层生成模型提供了基础。
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来源期刊
自引率
33.30%
发文量
10
审稿时长
>12 weeks
期刊介绍: The Journal of Research of the National Institute of Standards and Technology is the flagship publication of the National Institute of Standards and Technology. It has been published under various titles and forms since 1904, with its roots as Scientific Papers issued as the Bulletin of the Bureau of Standards. In 1928, the Scientific Papers were combined with Technologic Papers, which reported results of investigations of material and methods of testing. This new publication was titled the Bureau of Standards Journal of Research. The Journal of Research of NIST reports NIST research and development in metrology and related fields of physical science, engineering, applied mathematics, statistics, biotechnology, information technology.
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