学习合成噪声:多导体电源线案例

N. A. Letizia, A. Tonello, Davide Righini
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引用次数: 4

摘要

通信系统的性能很大程度上依赖于噪声。噪声模式的建模和再现在增强型通信算法的发展中起着重要作用。本文利用机器学习(ML)技术来分析电力线通信(PLC)噪声分布并综合再现看不见的痕迹。生成方法将噪声测量数据集作为输入,并将其处理成以图像表示的频谱图。训练深度卷积生成对抗网络(Deep Convolutional Generative Adversarial Network, DCGAN)生成具有相同统计分布的新频谱图。最后,Griffin-Lim算法将合成的谱图转换成新的噪声迹线。该方法的可扩展性允许合并多导体噪声迹线的相互依赖性并复制它们。通过定性和定量指标对该方法进行了评价:产生的噪声迹线与测量的噪声迹线难以区分,同时,数值结果证明了它们的统计特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Synthesize Noise: The Multiple Conductor Power Line Case
The performance of communication systems is strongly dependent on noise. Modeling and reproducing noise patterns play an important role in the development of enhanced communication algorithms. This article exploits Machine Learning (ML) techniques to analyze the Power Line Communication (PLC) noise distribution and synthetically reproduce unseen traces. The generation method takes as input a dataset consisting of noise measurements and processes them into spectrograms, represented as images. A Deep Convolutional Generative Adversarial Network (DCGAN) is trained to generate new spectrograms with the same statistical distribution. Lastly, the Griffin-Lim algorithm converts the synthesized spectrograms into new noise traces. The scalability of the proposed approach allows to incorporate the mutual dependence of multi-conductor noise traces and replicate them. The presented method is evaluated through qualitative and quantitative metrics: the generated noise traces are perceived indistinguishable from the measured ones, and at the same time, their statistical properties are preserved as proven by numerical results.
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