Application of graphene gas sensor technological convergence PSO-SVM in distribution transformer insulation condition monitoring and fault diagnosis

IF 0.7 4区 材料科学 Q3 Materials Science
Min Zhang, Jian Fang, Hongbin Wang, Fangzhou Hao, Xiang Lin, Yong Wang
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Abstract

This study aims to improve the real-time monitoring and fault diagnosis of distribution transformers by utilizing a combination of five thin film gas detectors, these detectors include metal-modified graphene composite films and SnO 2 /RGO humidity sensors, which were prepared using the hydrothermal method. The experiment focused on investigating humidity and main fault characteristic gases that can reflect the insulation status of transformers. Additionally, a gas sensor array was constructed using a deep confidence neural network model. Based on the analysis of dissolved gas in transformer oil, the study extensively discusses the insulation fault diagnosis model and constructs the transformer fault diagnosis model using various methods including TRM, Particle swarm optimization support vector machine. The results demonstrated that the SnO 2 /RGO thin film humidity sensor exhibited high humidity sensitivity, and the other thin film gas sensors also exhibited good sensitivity. The average accuracy of the three classification methods mentioned is 80%, 92%, and 96%, respectively. These findings highlighted that the vector machine model not only improved the fault diagnosis accuracy but also possessed the characteristics of fewer parameters and a fast rate of convergence. Consequently, it effectively addressed the issue of early diagnosis of potential transformer faults. This study was of significant practical importance for ensuring the secure operation of the power grid.
石墨烯气体传感器技术收敛PSO-SVM在配电变压器绝缘状态监测与故障诊断中的应用
本研究利用水热法制备的金属改性石墨烯复合薄膜和SnO 2 /RGO湿度传感器五种薄膜气体探测器组合,提高配电变压器的实时监测和故障诊断能力。实验重点研究了能反映变压器绝缘状态的湿度和主要故障特征气体。此外,利用深度置信度神经网络模型构建了气体传感器阵列。在分析变压器油中溶解气体的基础上,对绝缘故障诊断模型进行了广泛的探讨,并采用TRM、粒子群优化支持向量机等多种方法构建了变压器故障诊断模型。结果表明,SnO 2 /RGO薄膜湿度传感器具有较高的湿度灵敏度,其他薄膜气体传感器也具有良好的灵敏度。上述三种分类方法的平均准确率分别为80%、92%和96%。这些结果表明,向量机模型不仅提高了故障诊断的准确率,而且具有参数少、收敛速度快的特点。从而有效地解决了潜在变压器故障的早期诊断问题。该研究对保障电网安全运行具有重要的现实意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Materials Express
Materials Express NANOSCIENCE & NANOTECHNOLOGY-MATERIALS SCIENCE, MULTIDISCIPLINARY
自引率
0.00%
发文量
69
审稿时长
>12 weeks
期刊介绍: Information not localized
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