基于生成式对抗网络的电力系统数据恢复方法

IF 3.1 Q1 Mathematics
Di Yang, Ming Ji, Yuntong Lv, Mengyu Li, Xuezhe Gao
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引用次数: 0

摘要

面对电力系统数据丢失的问题,本文提出了一种基于生成式对抗网络的电力系统数据恢复方法。电力系统聚类方法利用聚合分层聚类,并考虑了不同电力系统数据之间的相似性。为了将电力系统数据恢复问题转化为数据生成问题,提出了一种改进的 GAN 网络数据分析方法,利用 LSTM 作为生成器和判别器。通过实验测试,将 LSTM-GAN 方法与 LSTM 方法、插值方法和低秩方法进行比较,以比较其在不同信号的电力系统数据静态和动态以及四种故障场景下对丢失数据恢复的效果。结果表明,LSTM-GAN 方法在静态-动态波动条件下恢复数据的均方根误差小于 1.2%,55% 和 15% 丢失数据条件下的误差仅相差 0.77%,其中电力系统故障场景下的数据恢复误差最大,为 2.32%。因此,基于 GAN 的电力系统数据恢复方法可以有效实现丢失数据的恢复。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Adversarial Network-based Data Recovery Method for Power Systems
Facing the problem of power system data loss, this paper proposes a power system data recovery method based on a generative adversarial network. The power system clustering method utilizes aggregated hierarchical clustering and takes into consideration the similarity between different power system data. To transform the power system data recovery problem into a data generation problem, an improved GAN network data analysis method is proposed that utilizes LSTM as a generator and discriminator. Through experimental tests, the LSTM-GAN method is tested with the LSTM method, interpolation method and low-rank method to compare its effect on lost data recovery under different signals of power system data static and dynamic and four fault scenarios. The results show that the root-mean-square errors of the LSTM-GAN method for recovering data under static-dynamic fluctuations are less than 1.2%, and the difference between the errors under 55% and 15% missing data conditions is only 0.77%, with the highest data recovery error of 2.32% in the power system fault scenarios. Therefore, the GAN-based power system data recovery method can effectively realize the recovery of lost data.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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