卷积神经网络在疏水性分类中的应用

Y. Fahmy, A. El-Hag
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引用次数: 1

摘要

评估硅橡胶室外绝缘子的表面状况对保证绝缘子的健康状况至关重要。由瑞典传动研究所(STRI)首先开发的疏水性分类系统最近被IEC 62073标准采用,将绝缘子分为七个不同的类别。该系统需要一定的专业知识才能实现分类,这在许多实用程序中可能不具备。本文的目的是利用深度学习对非陶瓷绝缘子的疏水性进行分类。此外,深度学习的效率将与传统的机器学习(ML)方法进行比较。本文将使用以前的数据集作为数据库。不同的卷积神经网络(CNN)拓扑将被研究。研究发现,使用CNN的预测精度与经典ML算法相似,并且更容易实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Convolution Neural Network in Hydrophobicity Classification
Evaluating silicone rubber outdoor insulators surface condition is crucial to ensure their health conditions. A hydrophobicity classification system first developed by Swedish Transmission Research Institute (STRI) and recently adapted by the IEC 62073 standards classifies the insulators to seven different classes. The system requires certain expertise to be able to implement the classification which may not be available in many utilities. The objective of this paper is use deep learning to classify non-ceramic insulators hydrophobicity. Moreover, the efficiency of deep learning will be compared with the traditional machine learning (ML) approach. A previous dataset will be used as the database for this paper. Different convolutional neural network (CNN) topologies will be investigated. It has been found that the prediction accuracy of using CNN is similar to classical ML algorithms with the advantage of being easier to implement.
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