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Recovery of Missing Data in Correlated Smart Grid Datasets

机译:恢复相关智能电网数据集中的丢失数据

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We study the recovery of missing data from multiple smart grid datasets within a matrix completion framework. The datasets contain the electrical magnitudes required for monitoring and control of the electricity distribution system. Each dataset is described by a low rank matrix. Different datasets are correlated as a result of containing measurements of different physical magnitudes generated by the same distribution system. To assess the validity of matrix completion techniques in the recovery of missing data, we characterize the fundamental limits when two correlated datasets are jointly recovered. We then proceed to evaluate the performance of Singular Value Thresholding (SVT) and Bayesian SVT (BSVT) in this setting. We show that BSVT outperforms SVT by simulating the recovery for different correlated datasets. The performance of BSVT displays the tradeoff behaviour described by the fundamental limit, which suggests that BSVT exploits the correlation between the datasets in an efficient manner.
机译:我们研究了在矩阵完成框架内从多个智能网格数据集中恢复丢失数据的方法。数据集包含监视和控制配电系统所需的电气量。每个数据集由一个低秩矩阵描述。由于包含同一分发系统生成的不同物理量级的测量结果,因此不同的数据集相关。为了评估矩阵完成技术在丢失数据的恢复中的有效性,我们描述了两个相关数据集被联合恢复时的基本限制。然后,我们继续在此设置中评估奇异值阈值(SVT)和贝叶斯SVT(BSVT)的性能。我们通过模拟不同相关数据集的恢复情况,表明BSVT优于SVT。 BSVT的性能显示了基本限制所描述的折衷行为,这表明BSVT以有效的方式利用了数据集之间的相关性。

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