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Multiple classifier systems combined with localized generalization error for fault diagnosis of power transformers

机译:多种分类器系统结合电力变压器故障诊断的局部概括误差

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Dissolved gas-in-oil analysis (DGA) is an effective approach for detecting incipient inner fault transformers and various methods derived from DGA have been introduced. To overcome their inherent weaknesses such as the variability of DGA data, this paper proposes a novel multiple classifier system to identify the inner fault of power transformers. The presented method is based on some primitive RBF classifiers and the multiple classifier system is evaluated with the Localized Generalization Error obtained by the Localized Generalization Error model (L-GEM). Compared to other measurements of ensemble system, the proposed method archives a good result.
机译:溶解气体分析(DGA)是检测初始故障变压器的有效方法,并引入了衍生自DGA的各种方法。为了克服其固有的弱点,例如DGA数据的可变性,提出了一种新型多分类器系统,用于识别电力变压器的内部故障。呈现的方法基于一些原始的RBF分类器,并且通过通过本地化泛化误差模型(L-Gem)获得的本地化泛化误差来评估多分类器系统。与集合系统的其他测量相比,所提出的方法归档良好的结果。

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