Jing Qianzhen, Yan Jing, Lu Lei, Xu Yifan, Yang Fan
State Key Laboratory of Electrical Insulation and Power Equipment, Xi'an Jiaotong University, Xi'an 710049, China.
Entropy (Basel). 2022 Jul 9;24(7):954. doi: 10.3390/e24070954.
Partial discharge (PD) is the main feature that effectively reflects the internal insulation defects of gas-insulated switchgear (GIS). It is of great significance to diagnose the types of insulation faults by recognizing PD to ensure the normal operation of GIS. However, the traditional diagnosis method based on single feature information analysis has a low recognition accuracy of PD, and there are great differences in the diagnosis effect of various insulation defects. To make the most of the rich insulation state information contained in PD, we propose a novel multi-information ensemble learning for PD pattern recognition. First, the ultra-high frequency and ultrasonic data of PD under four typical defects of GIS are obtained through experiment. Then the deep residual convolution neural network is used to automatically extract discriminative features. Finally, multi-information ensemble learning is used to classify PD types at the decision level, which can complement the shortcomings of the independent recognition of the two types of feature information and has higher accuracy and reliability. Experiments show that the accuracy of the proposed method can reach 97.500%, which greatly improves the diagnosis accuracy of various insulation defects.
局部放电(PD)是有效反映气体绝缘开关设备(GIS)内部绝缘缺陷的主要特征。通过识别局部放电来诊断绝缘故障类型对于确保GIS的正常运行具有重要意义。然而,传统的基于单一特征信息分析的诊断方法对局部放电的识别准确率较低,且对各种绝缘缺陷的诊断效果存在较大差异。为了充分利用局部放电中包含的丰富绝缘状态信息,我们提出了一种用于局部放电模式识别的新型多信息集成学习方法。首先,通过实验获取GIS四种典型缺陷下局部放电的超高频和超声波数据。然后,利用深度残差卷积神经网络自动提取判别特征。最后,在决策层面使用多信息集成学习对局部放电类型进行分类,该方法可以弥补两种特征信息独立识别的不足,具有更高的准确性和可靠性。实验表明,所提方法的准确率可达97.500%,大大提高了各种绝缘缺陷的诊断准确率。