Synthetic Power Line Communications Channel Generation with Autoencoders and GANs

Davide Righini, N. A. Letizia, A. Tonello
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引用次数: 9

Abstract

Power Line Communication (PLC) technologies have a relevant role in smart energy grids. Channel modeling is important to assess their performance and enable the development of advanced PLC solutions. In this paper, we propose an approach to channel modeling that exploits AutoEncoders (AEs) and Generative Adversarial Networks (GANs) to synthetically generate PLC Channel Transfer Functions (CTFs). A dataset obtained from measurements of CTFs is handled with an AE to extract its complete description through features. Then, a GAN is trained to generate new features that possess the same statistical distribution of the extracted ones. This allows the generation of new CTFs with the previously trained decoding part of the AE. The presented method is evaluated through simulations using a measured dataset and the results are verified with traditional metrics used to statistically characterize the channel.
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用自动编码器和gan合成电力线通信信道生成
电力线通信(PLC)技术在智能电网中具有重要的作用。通道建模对于评估其性能和开发先进的PLC解决方案非常重要。在本文中,我们提出了一种通道建模方法,该方法利用自动编码器(AEs)和生成对抗网络(gan)来综合生成PLC通道传递函数(ctf)。利用声发射对CTFs测量数据集进行处理,通过特征提取CTFs的完整描述。然后,训练GAN生成与提取的特征具有相同统计分布的新特征。这允许使用AE先前训练的解码部分生成新的ctf。通过使用测量数据集的模拟来评估所提出的方法,并使用用于统计表征信道的传统度量来验证结果。
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