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Three-way unsupervised data mining for power system applications based on tensor decomposition

机译:基于张量分解的电力系统应用三方无监督数据挖掘

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Sophisticated geospatial metering devices used in today's networks such as the advanced metering infrastructure (AMI), wide area measurement system (WAMS) and supervisory control and data acquisition (SCADA) open new opportunities to monitor the security of the system in real time. Consequently, these metering infrastructures have received significant attention in recent years from data mining communities because of the new challenges involved on managing this information. One of the main challenges is the analysis of multivariable data, which represents datasets containing variables of different nature, which are linked. In this document a data mining technique that allows the analysis of multivariate data is presented. Moreover, an innovative application of an unsupervised data mining algorithm for smart meters data, particularly to Electrical Load Profile using tensor decomposition is presented. Since the proposed tensor representation allows to assign a given dimension to a particular variable involved; data reduction, data compression, data visualization and data clustering is archived separately for every variable. To validate the effectiveness of the proposed methodology, a three-way tensor built with data from the Electrical Reliability Council of Texas (ERCOT) is presented. The results demonstrate that is possible to extract more information than using conventional approaches based on 2-way arrangements (matrices). Additionally, the proposed algorithm is solved using an iterative approach, which indirectly enable to estimate missing data.
机译:在当今网络中使用的复杂地理空间计量设备,如先进的计量基础设施(AMI),广域测量系统(WAMS)和监督控制和数据采集(SCADA)开辟了新的机会,以实时监测系统的安全性。因此,由于管理此信息的新挑战,这些计量基础设施近年来近年来受到了重大关注。主要挑战之一是分析多变量数据,其代表包含不同性变量的数据集,该数据集是链接的。在本文档中,呈现允许分析多变量数据的数据挖掘技术。此外,介绍了一种用于智能仪表数据的无监督数据挖掘算法的创新应用,尤其是使用张量分解的电负载轮廓。由于所提出的张量表示允许将给定维度分配给所涉及的特定变量;数据缩减,数据压缩,数据可视化和数据群集分别为每个变量归档。为了验证所提出的方法的有效性,提出了使用来自德克萨斯州德克萨斯州电力可靠性委员会(ERCOT)的数据建立的三元张卷。结果证明,可以提取与基于双向排列(矩阵)使用传统方法的更多信息。另外,使用迭代方法解决了所提出的算法,该方法间接能够估计缺失数据。

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