Detection of Incipient Fault in Transformer using DGA Based Integrated Intelligent Method

Obaidur Rahman, S. Wani, Shaheen Parveen, S. A. Khan
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引用次数: 1

Abstract

The aim of the work is to develop a reliable composite DGA (Dissolved Gas Analysis) based method to diagnose single and multiple transformer incipient faults. To achieve this objective a two-stage model is proposed. The first stage of the model is the ANN implementation of Dornenburg, Rogers ratio, CEGB, IEC, and Duval triangle methods. ANN-based implementation is carried out to circumvent limitations of the considered methods. Further, to resolve the conflicts of the first stage diagnosis and to predict the most probable single or multiple faults an intelligent rule-based scheme is developed as the second stage of the integrated model. The idea is to exploit the strengths of the different DGA methods to converge to a more reliable diagnostic method using intelligent integrating rules. The proposed method is found to be more reliable and comprehensive in comparison to contemporary methods.
基于DGA的变压器早期故障综合智能检测方法
本研究的目的是建立一种可靠的基于溶解气体分析(DGA)的复合故障诊断方法来诊断变压器的单个和多个早期故障。为了实现这一目标,提出了一个两阶段模型。模型的第一阶段是Dornenburg、Rogers ratio、CEGB、IEC和Duval三角方法的人工神经网络实现。基于人工神经网络的实现绕过了所考虑的方法的局限性。此外,为了解决第一阶段诊断的冲突,并预测最可能的单个或多个故障,开发了基于规则的智能方案作为集成模型的第二阶段。其思想是利用不同DGA方法的优势,利用智能集成规则收敛到更可靠的诊断方法。与现有方法相比,该方法更加可靠和全面。
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