基于CT-GAN的半监督学习电盗窃检测方法

R. Xia, Jiangzhao Wang
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引用次数: 0

摘要

如今,能源盗窃已成为一个世界性的大问题。大多数现有的机器学习算法需要大量的标记数据来训练和构建检测模型,但获取标记数据的成本非常高。本文提出了一种基于合作训练生成对抗网络(CT-GAN)的半监督学习的窃电检测方法,以避免由于标记数据少而导致的效果不佳。这种方法有两个优点。一是半监督学习,解决了深度卷积网络模型在标签样本不足的情况下容易过拟合导致分类性能差的缺陷;二是两个判别器进行协同训练,消除了单个判别器分布误差大的问题,提高了半监督生成对抗网络训练的稳定性。GAN生成标记样本数据的能力也得到了提高。大量的实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Semi-supervised Learning Method for Electricity Theft Detection Based on CT-GAN
Nowadays, energy theft has been a major problem worldwide. Most existing machine learning algorithms require large amounts of labeled data to train and build detection models, but the cost of acquiring labeled data is very high. In this paper, a semi-supervised learning method for electricity theft detection based on cooperative training generative adversarial network (CT-GAN) is proposed to avoid the poor effect due to little labeled data. The method has two advantages. The first is semisupervised learning which can solve the defect that the deep convolutional network model is easy to overfit and leads to poor classification performance in the case of insufficient label samples, and the second is two discriminators for co-training, which eliminates the problem of large distribution error of single discriminator and improves the training of semi-supervised generative adversarial networks stability, the ability of GAN to generate labeled sample data is also improved. A large number of experiments validate the effectiveness of our method.
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