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An Ensemble-Boosting Algorithm for Classifying Partial Discharge Defects in Electrical Assets

机译:一种对电力资产局部放电缺陷进行分类的集成-提升算法

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This paper presents an ensemble-boosting algorithm (EBA) for classifying partial discharge (PD) patterns in the condition monitoring of insulation diagnosis applied for electrical assets. This approach presents an optimization technique for creating a sequence of artificial neural network (ANNs), where the training data for each constituent of the sequence is selected based on the performance of previous ANNs. Four different PD faults scenarios were manufactured in the high-voltage (HV) laboratory to simulate the PD faults of cylindrical voids in methacrylate, point-air-plane configuration, ceramic bushing with contaminated surface and a transformer affected by the internal PD. A PD dataset was collected, pre-processed and prepared for its use in the improved boosting algorithm using statistical techniques. In this paper, the EBA is extensively compared with the widely used single artificial neural network (SNN). Results show that the proposed approach can effectively improve the generalization capability of the PD patterns. The application of the proposed technique for both online and offline practical PD recognition is examined.
机译:提出了一种用于电力设备绝缘诊断状态监测中的局部放电(PD)模式分类的集成增强算法(EBA)。这种方法提出了一种用于创建人工神经网络(ANN)序列的优化技术,其中,基于先前ANN的性能来选择序列中每个组成部分的训练数据。高压(HV)实验室制造了四种不同的PD故障场景,以模拟甲基丙烯酸酯中的圆柱形空隙,点空气平面配置,受污染的陶瓷套管和受内部PD影响的变压器的PD故障。 PD数据集被收集,预处理并准备使用统计技术在改进的boosting算法中使用。本文将EBA与广泛使用的单一人工神经网络(SNN)进行了广泛比较。结果表明,该方法可以有效提高局部放电模式的泛化能力。研究了所提出的技术在在线和离线实际PD识别中的应用。

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