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A Hybrid Algorithm for Missing Data Imputation and Its Application to Electrical Data Loggers

机译:数据插补的混合算法及其在电气数据记录仪中的应用

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The storage of data is a key process in the study of electrical power networks related to the search for harmonics and the finding of a lack of balance among phases. The presence of missing data of any of the main electrical variables (phase-to-neutral voltage, phase-to-phase voltage, current in each phase and power factor) affects any time series study in a negative way that has to be addressed. When this occurs, missing data imputation algorithms are required. These algorithms are able to substitute the data that are missing for estimated values. This research presents a new algorithm for the missing data imputation method based on Self-Organized Maps Neural Networks and Mahalanobis distances and compares it not only with a well-known technique called Multivariate Imputation by Chained Equations (MICE) but also with an algorithm previously proposed by the authors called Adaptive Assignation Algorithm (AAA). The results obtained demonstrate how the proposed method outperforms both algorithms.
机译:数据的存储是电力网络研究中与寻找谐波和发现相之间缺乏平衡有关的关键过程。任何主要电气变量(相间电压,相间电压,各相电流和功率因数)缺失数据的存在都会以负面方式影响任何时间序列研究,必须加以解决。发生这种情况时,需要缺少数据插补算法。这些算法能够用缺失的数据代替估计值。这项研究提出了一种基于自组织映射神经网络和马氏距离的缺失数据插补方法的新算法,并将其不仅与众所周知的链式方程多元插补技术(MICE)进行了比较,而且还与先前提出的算法进行了比较。由作者称为自适应分配算法(AAA)。获得的结果证明了所提出的方法如何优于两种算法。

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