引用本文:李雅欣,侯慧娟,胥明凯,李善武,盛戈皞,江秀臣.基于策略梯度和生成式对抗网络的变压器油色谱案例扩充方法[J].电力自动化设备,2020,40(12):
LI Yaxin,HOU Huijuan,XU Mingkai,LI Shanwu,SHENG Gehao,JIANG Xiuchen.Oil chromatogram case generation method of transformer based on policy gradient and generative adversarial networks[J].Electric Power Automation Equipment,2020,40(12):
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基于策略梯度和生成式对抗网络的变压器油色谱案例扩充方法
李雅欣1, 侯慧娟1, 胥明凯2, 李善武2, 盛戈皞1, 江秀臣1
1.上海交通大学 电气工程系,上海 200240;2.国网山东省电力公司,山东 济南 250002
摘要:
油色谱数据的缺乏和不均衡会导致训练过拟合、模型缺乏代表性、测试集效果不理想等问题,从而难以对变压器的状态进行准确评价。针对该问题,将强化学习中的策略梯度算法引入生成式对抗网络GAN(Generative Adversarial Networks),提出了一种基于策略梯度和GAN的变压器油色谱案例生成方法。仿真结果表明,与传统的样本扩充算法相比,利用所提方法合成的样本质量较高。对包含9种故障状态共700组样本的变压器油色谱数据利用所提方法进行油色谱故障样本扩充,利用基于BP神经网络模型的变压器故障分类模型对将扩充后样本作为训练集训练得到的神经网络模型和仅用真实数据作为训练集训练得到的神经网络模型进行了对比,结果表明利用扩充的样本后,变压器故障分类准确率得到了提高。变压器故障诊断实例表明利用所提方法得到的结果与实际情况相符。
关键词:  变压器  油色谱  样本扩充  生成式对抗网络  强化学习  策略梯度
DOI:10.16081/j.epae.202009012
分类号:TM41
基金项目:国家自然科学基金资助项目(51477100);上海交通大学新进青年教师启动计划基金(基于人工智能的电力设备故障诊断)
Oil chromatogram case generation method of transformer based on policy gradient and generative adversarial networks
LI Yaxin1, HOU Huijuan1, XU Mingkai2, LI Shanwu2, SHENG Gehao1, JIANG Xiuchen1
1.Department of Electrical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China;2.State Grid Shandong Power Supply Company, Jinan 250002, China
Abstract:
The lack and imbalance of oil chromatogram data lead to problems such as training over fitting, lack of representativeness of the model, and unsatisfactory results of train sets, which makes it hard to accurately evaluate the state of transformers. Aiming at this problem, the policy gradient algorithm in reinforcement learning is introduced into GAN(Generative Adversarial Networks),and an oil chromatogram case gene-ration method of transformer based on policy gradient and GAN is proposed. The simulative results verify that the samples synthesized by the proposed method are of higher quality than those synthesized by the traditional sample expansion algorithm. The transformer oil chromatogram data containing 700 groups of samples of 9 fault states is expanded by the proposed method. The neural network model trained by only the real data as the training set is compared with the neural network model trained by the expanded data by using the transformer fault classification model based on BP neural network model. The results show that the accuracy of transformer fault classification is improved by using the expanded data. The actual transformer fault diagnosis case show that the results gained by the proposed method are consistent with the actual situation.
Key words:  power transformers  oil chromatogram  sample expansion  generative adversarial networks  reinforcement learning  policy gradient

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