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Data Cleaning Method Based on Time Series Similarity Measurement for Large-Scale Smart Grid Load Data

机译:基于时间序列相似性度量的大规模智能电网负荷数据数据清洗方法

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On account of the strong time series feature of smart grid load data, this paper presents a data cleaning method based on similarity measurement of time series, which detects the abnormal data of load data and fills the vacancy value. In this paper, an up-and-coming symbolic method symbolic aggregate approximation(SAX) is applied to the similarity study of 96-point load data. The Euclidean distance algorithm is used to measure the similarity of time series, and the load data are cleaned according to the fitted curves obtained by adjusting similar sequences weighted by similarity. The experimental results show that the method has adequate accuracy and low computational complexity.
机译:鉴于智能电网负荷数据具有很强的时间序列特性,本文提出了一种基于时间序列相似性度量的数据清理方法,该方法可以检测负荷数据的异常数据并填充空缺值。本文将一种崭新的符号方法符号聚集近似(SAX)应用于96点荷载数据的相似性研究。欧几里得距离算法用于测量时间序列的相似性,并根据通过调整相似性加权的相似序列获得的拟合曲线来清理负荷数据。实验结果表明,该方法具有足够的精度和较低的计算复杂度。

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