Big Data Compression in Smart Grids via Optimal Singular Value Decomposition

Seyed Naser Hashemipour, J. Aghaei, Abdullah Kavousi-fard, T. Niknam, Ladan Salimi, P. C. del Granado, M. Shafie‐khah, Fei Wang, J. Catalão
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引用次数: 3

Abstract

The smart grid is a fully automatic delivery grid for electricity power with a two-way reliable flow of electricity and information among different equipment on the grid. With the rapid development of smart grids, smart meters and sensors are used to monitor the system and provide a wide reporting which produce a huge amount of data in various part of the grid. To logical manage this trouble, the presented paper proposes a new lossy data compression approach for big data compression. In the proposed method, at the first step, the optimal singular value decomposition (OSVD) is applied to a matrix that achieves the optimal number of singular values to the sending process and the other ones will be neglected. This goal is done due to the quality of retrieved data and the rate of compression ratio. In the presented scheme, to implementation of the optimization framework, various intelligent optimization methods are used to determine the number of optimal values in the elimination stage. The efficiency and capabilities of the proposed method are examined using the experimental dataset of several residential microgrid consumers and market dataset. Simulation results show the high performance and efficiency of the proposed model in smart grids with big data.
基于最优奇异值分解的智能电网大数据压缩
智能电网是一个全自动的电力输送电网,在电网上不同设备之间实现双向可靠的电力和信息流动。随着智能电网的快速发展,智能电表和传感器被用于监控系统,并提供广泛的报告,在电网的各个部分产生大量的数据。为了从逻辑上解决这一问题,本文提出了一种新的大数据有损数据压缩方法。在该方法中,首先对一个矩阵进行最优奇异值分解(OSVD),使其达到发送过程中奇异值的最优个数,而忽略其他奇异值。这一目标的实现取决于检索数据的质量和压缩率。在本方案中,为了实现优化框架,采用各种智能优化方法确定淘汰阶段的最优值数量。利用几个住宅微电网用户的实验数据集和市场数据集检验了该方法的效率和能力。仿真结果表明,该模型在大数据智能电网中具有较高的性能和效率。
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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