Multi-Stage Binary Classification Technique for Incipient Fault Diagnosis of Oil Immersed Power Transformers Based on ANFIS

Benish Jan, Obaidur Rahman, Shaheen Parveen, S. A. Khan
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Abstract

Conventional Dissolved Gas Analysis (DGA) methods show a poor success rate for predicting incipient faults in oil immersed power transformers. It is because their rule foundation is entirely heuristic and non-mathematical. Artificial intelligence is employed in this work to emulate human expertise and ability in fault diagnosis. Adaptive Neuro-Fuzzy Inference System (ANFIS) is used to implement multistage binary classification scheme to diagnose incipient faults. The published TC-10 data from the faulty oil-immersed transformers is utilized to evaluate the ANFIS models’ performance. This developed multistage binary classification technique based on ANFIS gives superior results than the single stage multi class classification. It substantially increases the diagnosis accuracy when compared to the conventional counterparts. Moreover, in this work the idea of multistage classification is conceptualized by selective hybridization of various DGA methods viz., Roger’s Ratio method, IEC-60599 and Doernenberg’s method. The steps of fault classification traverse from determining whether a fault exists or not to further determining its nature and severity. The diagnosis accuracy is significantly improved by integrating AI, binary classification, the hybridization concept and hence this technique altogether is proven as a proactive tool for online fault diagnosis in power transformers.
基于ANFIS的油浸式电力变压器早期故障诊断多级二值分类技术
传统的溶解气体分析(DGA)方法对油浸变压器早期故障的预测成功率较低。这是因为它们的规则基础完全是启发式的和非数学的。本工作采用人工智能模拟人类在故障诊断方面的专业知识和能力。采用自适应神经模糊推理系统(ANFIS)实现多阶段二值分类方案来诊断早期故障。利用已公布的故障油浸变压器TC-10数据来评估ANFIS模型的性能。这种基于ANFIS的多阶段二元分类技术比单阶段多类别分类效果更好。与传统的诊断方法相比,它大大提高了诊断的准确性。此外,在本工作中,通过各种DGA方法的选择性杂交,即罗杰比法,IEC-60599和Doernenberg方法,概念化了多阶段分类的思想。故障分类的步骤从确定故障是否存在到进一步确定其性质和严重程度。该方法将人工智能、二值分类和杂交概念相结合,显著提高了诊断精度,是电力变压器在线故障诊断的一种主动工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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