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Preprocessing and Golomb–Rice Encoding for Lossless Compression of Phasor Angle Data

机译:相角数据的无损压缩的预处理和Golomb-Rice编码

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摘要

Phasor measurement units (PMUs) are being increasingly deployed to improve monitoring and control of the power grid due to their improved data synchronization and reporting rates in comparison with legacy metering devices. However, one drawback of their higher data rates is the associated increase in bandwidth (for transmission) and storage requirements (for data archives). Fortunately, typical grid behavior can lead to significant compression opportunities for phasor angle measurements. For example, operation of the grid at near-nominal frequency results in small changes in phase angles between frames, and the similarity in frequencies throughout the system results in a high level of correlation between phasor angles of different PMUs. This paper presents several methods for preprocessing of phasor angles that take advantage of these system characteristics, including a new method—frequency compensated difference encoding—that is able to significantly reduce angle data entropy. After the preprocessor stage, the signal is input to an entropy encoder, based on Golomb–Rice codes, that is ideal for high-throughput signal compression. The ability of the proposed methods to compress phase angles is demonstrated using a large corpus of data—over 1 billion phasor angles from 25 data sets—captured during typical and atypical grid conditions.
机译:相量测量单元(PMU)与传统的计量设备相比,由于改善了数据同步和报告速率,因此正在越来越多地部署以改善对电网的监视和控制。但是,它们较高的数据速率的一个缺点是带宽(用于传输)和存储要求(用于数据存档)的相关增加。幸运的是,典型的网格行为可以导致相量角测量的显着压缩机会。例如,以接近标称频率的电网运行会导致帧之间的相位角发生很小的变化,并且整个系统的频率相似性会导致不同PMU的相量角之间具有高度的相关性。本文介绍了利用这些系统特性的相量角预处理方法,其中包括一种新方法-频率补偿差编码-该方法可以显着降低角度数据的熵。在预处理阶段之后,该信号将输入到基于Golomb–Rice码的熵编码器,这对于高通量信号压缩是理想的选择。使用大型数据集(从25个数据集中获取的10亿个相量角)捕获了典型和非典型网格条件下的数据,证明了所提出方法压缩相角的能力。

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