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Selecting appropriate machine learning classifiers for DGA diagnosis

机译:为DGA诊断选择合适的机器学习分类器

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Dissolved gas analysis (DGA) is a common method of assessing transformer health. There are a number of machine learning classifiers reported to give a high accuracy on specific datasets, such as Artificial Neural Networks or Support Vector Machines. When these methods reach the same conclusion about the type of fault present, this can give an increased confidence in the veracity of the diagnosis. However, it is critical to analyze and quantify the strength of these classifiers in the presence of conflicting data to test their practicality for usage in the field. This paper investigates the adequacy of different machine learning based DGA diagnosis models in the presence of conflicting data. The proposed method will aid engineers with the selection of machine learning models so as to maximize the usability and accuracy in the presence of conflicting data.
机译:溶解气体分析(DGA)是评估变压器健康的常用方法。据报道,有许多机器学习分类器在特定数据集中提供高精度,例如人工神经网络或支持向量机。当这些方法达到关于存在的故障类型的结论时,这可以增加对诊断的真实性的置信度增加。然而,在存在冲突数据时分析和量化这些分类器的强度至关重要,以测试其实用性在现场使用。本文调查了基于不同机器学习的DGA诊断模型在存在冲突数据的情况下的充分性。所提出的方法将辅助工程师选择机器学习模型,以便在存在冲突数据时最大化可用性和准确性。

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