Machine Learning enabled Missing Measurement Data Detection and Recovery of Electricity Grids

Min He, Jia Yang, Simeng Zheng, Ying Lin
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Abstract

This paper proposes a machine learning enabled missing data detection and recovery of electrical measurements based on the improved CPCAE. The proposed solution firstly accurately models the missing generation process to generate the missing mask and then combines the absolute difference sequence and the linear correlation as criteria to detect the possible missing segments under different signal-noise ratios (SNR). The solution divides the detected missing mask into different grades and reshapes the origin of one-dimensional data and mask into two-dimensional matrices as a kind of data enhancement. Then we intuitively turn to the deep learning technologies on image processing and design an improved CPCAE model to repair the damaged images. The proposed machine learning-enabled missing data detection and recovery solution are assessed through simulations and the numerical results confirmed its effectiveness for different missing situations.
机器学习实现了电网缺失测量数据的检测和恢复
本文提出了一种基于改进CPCAE的基于机器学习的电测量缺失数据检测和恢复方法。该方法首先对缺失生成过程进行精确建模,生成缺失掩模,然后结合绝对差序列和线性相关作为准则,在不同信噪比下检测可能存在的缺失片段。该方案将检测到的缺失掩码分成不同的等级,并将一维数据和掩码的原点重塑为二维矩阵,作为一种数据增强。然后,我们直观地将深度学习技术应用到图像处理中,设计了一种改进的CPCAE模型来修复受损图像。通过仿真对提出的基于机器学习的缺失数据检测和恢复方案进行了评估,数值结果证实了其在不同缺失情况下的有效性。
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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