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Health Index Prediction of Underground Cable System using Artificial Neural Network

机译:人工神经网络的地下电缆系统健康指标预测

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The application of machine learning (ML) towards the prediction of the insulation health condition of high voltage XLPE cable was emphasized in this work. Deterioration due to aging and partial discharge is the primary cause of cable insulation failure. However, replacement and maintenance of underground cable circuits during the period of excavation are very expensive. The information regarding the severity of the insulation level assists to make smarter informed decisions for system planning and repair prediction. In this work, the interpretation and recognition of the insulation health condition analysed with the help of an Artificial Neural Network (ANN). The classification based on the ANN requires a pre-processing of the input data obtained from the test results. The test result provided information about each sample's Partial Discharge (PD) magnitude, Aging, Neutral corrosion, Loading, Visual condition, etc. This work mainly focused on the application of deep-learning,i.e. multiclass classification of five different health index classes based on the acquired dataset.
机译:在这项工作中强调了机器学习(ML)朝向预测高压XLPE电缆绝缘健康状况的预测。老化和局部放电引起的劣化是电缆绝缘失效的主要原因。然而,在挖掘期间的地下电缆电路的更换和维护非常昂贵。关于绝缘水平严重程度的信息有助于对系统规划和修复预测进行更智能的决策。在这项工作中,在人工神经网络(ANN)的帮助下分析了对绝缘健康状况的解释和识别。基于ANN的分类需要预处理从测试结果获得的输入数据。测试结果提供了有关每个样品的局部放电(Pd)幅度,老化,中性腐蚀,装载,视觉条件等的信息。这项工作主要集中在深度学习的应用中,即。基于获取的数据集的五种不同健康索引类的多级分类。

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