电力数据挖掘中一种新的加权积分动态时间正则化与欧氏距离优化算法

Wenda Lu, Xiaolong Zhao, Chen Sun, Rongjun Chen, Guang Duan
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引用次数: 0

摘要

随着智能电网大规模建设的发展,电网边缘终端设备将产生大量具有大冗余度的时间序列电力数据,这给设备边缘端的存储带来了很大的挑战。为了降低边缘边的存储成本,需要进行数据挖掘和去权。传统的数据挖掘技术一般采用基于动态时间规则的数据挖掘方法,缺点是挖掘效率低,且无法对相似度较低的相邻数据进行加权。针对这些问题,本文提出了一种基于加权积分动态时间调节和欧氏距离优化的算法,通过计算数据之间的相似度来消除数据冗余,实现数据挖掘和去权。最后,基于智能电网的真实采样数据,分析并验证了所提出的数据挖掘技术在边缘计算安全防护系统中的效果。
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A Novel Weighted Integration Dynamic Time Regularization and Euclidean Distance Optimization Algorithm for Power Data Mining
With the development of large-scale construction of smart grid, the edge terminal equipment of power grid will produce a large number of time series power data with great redundancy, which brings great challenges to the storage of edge side of the equipment. In order to reduce the storage cost of edge side, data mining and weight removal are needed. The traditional data mining technology generally adopts the data mining method based on dynamic time regularity, but the disadvantage is that the mining efficiency is low and the adjacent data with low similarity can not be weighed. Aiming at these problems, this paper proposes an algorithm based on weighted integration dynamic time-regulation and Euclidean distance optimization, which can eliminate data redundancy, achieve data mining and weight removal by calculating the similarity between data. Finally, based on the real sampling data of smart grid, the effect of the proposed data mining technology in edge computing security protection system is analyzed and verified.
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