A New DGA Based Transformer Fault Diagnosis Scheme Suitable for Time-Series Fault Data

Yongliang Liang, Kejun Li
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引用次数: 0

Abstract

The quality of original data is crucial to the performance of diagnosis model. To improve the performance of transformer diagnosis model based on Dissolved Gas Analysis (DGA), a new diagnosis scheme suitable for time-series dissolved gas data is proposed in this paper. After the analysis of traditional transformer diagnosis architecture, a fault data extraction step is added to the architecture to improve the quality of original fault data. The fault data extraction step is mainly composed of two parts, invalid data correction and determination of possible initial fault time based on fault early warning. Finally, the numerical results validate that the accuracy and sensitivity of DGA based fault diagnosis for the transformer are improved by extracting fault feature of time-series data.
一种适用于时序故障数据的基于DGA的变压器故障诊断新方案
原始数据的质量对诊断模型的性能至关重要。为了提高基于溶解气体分析(DGA)的变压器诊断模型的性能,提出了一种适用于时间序列溶解气体数据的变压器诊断方案。在分析传统变压器诊断体系结构的基础上,增加故障数据提取步骤,提高原始故障数据的质量。故障数据提取步骤主要由无效数据的校正和基于故障预警的可能初始故障时间的确定两部分组成。最后,通过对时序数据进行故障特征提取,提高了基于DGA的变压器故障诊断的精度和灵敏度。
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来源期刊
Journal of Residuals Science & Technology
Journal of Residuals Science & Technology 环境科学-工程:环境
自引率
0.00%
发文量
0
审稿时长
>36 weeks
期刊介绍: The international Journal of Residuals Science & Technology (JRST) is a blind-refereed quarterly devoted to conscientious analysis and commentary regarding significant environmental sciences-oriented research and technical management of residuals in the environment. The journal provides a forum for scientific investigations addressing contamination within environmental media of air, water, soil, and biota and also offers studies exploring source, fate, transport, and ecological effects of environmental contamination.
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