Abubakar Aliyu, Zachariades Christos
Department of Electrical Engineering and Electronics, University of Liverpool, Liverpool L69 3GJ, UK.
Sensors (Basel). 2024 May 31;24(11):3565. doi: 10.3390/s24113565.
This paper proposes a new method for recognizing, extracting, and processing Phase-Resolved Partial Discharge (PRPD) patterns from two-dimensional plots to identify specific defect types affecting electrical equipment without human intervention while retaining the principals that make PRPD analysis an effective diagnostic technique. The proposed method does not rely on training complex deep learning algorithms which demand substantial computational resources and extensive datasets that can pose significant hurdles for the application of on-line partial discharge monitoring. Instead, the developed Cosine Cluster Net (CCNet) model, which is an image processing pipeline, can extract and process patterns from any two-dimensional PRPD plot before employing the cosine similarity function to measure the likeness of the patterns to predefined templates of known defect types. The PRPD pattern recognition capabilities of the model were tested using several manually classified PRPD images available in the existing literature. The model consistently produced similarity scores that identified the same defect type as the one from the manual classification. The successful defect type reporting from the initial trials of the CCNet model together with the speed of the identification, which typically does not exceed four seconds, indicates potential for real-time applications.
本文提出了一种从二维图中识别、提取和处理相分辨局部放电(PRPD)模式的新方法,以在无需人工干预的情况下识别影响电气设备的特定缺陷类型,同时保留使PRPD分析成为有效诊断技术的原理。所提出的方法不依赖于训练复杂的深度学习算法,这些算法需要大量的计算资源和广泛的数据集,这可能会给在线局部放电监测的应用带来重大障碍。相反,所开发的余弦聚类网络(CCNet)模型是一种图像处理管道,它可以在使用余弦相似性函数测量模式与已知缺陷类型的预定义模板的相似度之前,从任何二维PRPD图中提取和处理模式。使用现有文献中提供的几幅人工分类的PRPD图像对该模型的PRPD模式识别能力进行了测试。该模型始终产生的相似度分数能够识别出与人工分类相同的缺陷类型。CCNet模型初步试验成功报告缺陷类型,再加上识别速度通常不超过4秒,表明其具有实时应用的潜力。