DGA analysis of transformer using Artificial neutral network to improve reliability in Power Transformers

Kalinda D. Patekar, Bhoopesh Chaudhry
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引用次数: 4

Abstract

In electrical power system transformers are the most important elements. Any fault or damage in Transformer may interrupt continuous operation of electrical power system, as well as incur the expensive repair cost. Thus, it is necessary to conduct periodic inspections and maintenance for detection of incipient faults in power transformer to improve efficiency. Various off-line and on-line oil tests for fault diagnoses of power transformers are perform periodically as per expert recommendation. A number of standards have evolved over the time on transformer loading and power transformer fault diagnosis to minimize unplanned outages. Dissolve gas analysis is successful technique for identifying the incipient fault in a power transformer by analyzing ratios of dissolved gas concentrations arising from the deterioration of transformer liquid/solid insulations.In this paper multi layer perceptron type of artificial neural network is used with DGA methods to improve the reliability, efficiency and to increase power transformer life period. There is always problem in fault interpretation of multi Classification. ANN automatically tune the network Parameters, connection weights and bias terms of the neural networks to achieve the best model based on the proposed evolutionary algorithm, which provides the solution for complex classification problems DGA method find faults but during complexclassification it cannot give accurate results. To avoid such a conditions ANN is used with DGA in power transformer .
利用人工中性网络提高变压器可靠性的DGA分析
在电力系统中,变压器是最重要的元件。变压器的任何故障或损坏都可能中断电力系统的连续运行,并产生昂贵的维修费用。因此,有必要对电力变压器进行定期检查和维护,及时发现电力变压器的早期故障,提高工作效率。根据专家建议,定期进行各种变压器故障诊断的离线和在线油试验。随着时间的推移,许多关于变压器负载和电力变压器故障诊断的标准不断发展,以尽量减少意外停机。溶解气体分析是一种通过分析变压器液/固绝缘劣化引起的溶解气体浓度比来识别电力变压器早期故障的成功技术。本文将多层感知器型人工神经网络与DGA方法相结合,以提高电力变压器的可靠性、效率和寿命。多分类方法在断层解释中存在一定的问题。基于所提出的进化算法,人工神经网络自动调整神经网络的网络参数、连接权值和偏差项以获得最优模型,解决了DGA方法在复杂分类问题中发现故障但不能给出准确结果的问题。为了避免这种情况,在电力变压器中采用了人工神经网络和数字遗传算法。
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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