Zhuang Yuan, Hu Xiaotong, Tang Bin, Wang Siwei, Cui Anyang, Hou Keyong, He Yunhua, Zhu Liangqing, Li Wenwu, Chu Junhao
Technical Center for Multifunctional Magneto-Optical Spectroscopy (Shanghai), School of Communication and Electronic Engineering, East China Normal University, Shanghai, 200241, China.
Electric Power Research Institute, Guangxi Power Grid Co. Ltd., Nanning, 530023, China.
Sci Rep. 2020 Sep 14;10(1):15039. doi: 10.1038/s41598-020-72187-0.
Gas-insulated switchgear (GIS) is widely used across multiple electric stages and different power grid levels. However, the threat from several inevitable faults in the GIS system surrounds us for the safety of electricity use. In order to improve the evaluation ability of GIS system safety, we propose an efficient strategy by using machine learning to conduct SF decomposed components analysis (DCA) for further diagnosing discharge fault types in GIS. Note that the empirical probability function of different faults fitted by the Arrhenius chemical reaction model has been investigated into the robust feature engineering for machine learning based GIS diagnosing model. Six machine learning algorithms were used to establish models for the severity of discharge fault and main insulation defects, where identification algorithms were trained by learning the collection dataset composing the concentration of the different gas types (SO, SOF, SOF, CF, and CO, etc.) in the system and their ratios. Notably, multiple discharge fault types coexisting in GIS can be effectively identified based on a probability model. This work would provide a great insight into the development of evaluation and optimization on solving discharge fault in GIS.
气体绝缘开关设备(GIS)广泛应用于多个电气阶段和不同的电网电压等级。然而,GIS系统中一些不可避免的故障所带来的威胁,围绕着我们的用电安全。为了提高GIS系统安全性的评估能力,我们提出一种高效策略,利用机器学习进行SF分解成分分析(DCA),以进一步诊断GIS中的放电故障类型。值得注意的是,由阿伦尼乌斯化学反应模型拟合的不同故障的经验概率函数,已被研究用于基于机器学习的GIS诊断模型的稳健特征工程。使用六种机器学习算法建立了放电故障严重程度和主绝缘缺陷的模型,其中识别算法通过学习由系统中不同气体类型(SO、SOF、SOF、CF和CO等)的浓度及其比率组成的采集数据集进行训练。值得注意的是,基于概率模型可以有效识别GIS中并存的多种放电故障类型。这项工作将为解决GIS放电故障的评估和优化发展提供深刻见解。