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首页> 外文期刊>International Journal of Electrical Power & Energy Systems >Power transformers' condition monitoring using neural modeling and the local statistical approach to fault diagnosis
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Power transformers' condition monitoring using neural modeling and the local statistical approach to fault diagnosis

机译:使用神经模型和局部统计方法进行电力变压器状态监测以进行故障诊断

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摘要

On-line monitoring of electric power transformers can provide a clear indication of their status and ageing behavior. This paper proposes neural modeling and the local statistical approach to fault diagnosis for the detection of incipient faults in power transformers. The method can detect transformer failures at their early stages and consequently can deter critical conditions for the power grid. A neural-fuzzy network is used to model the thermal condition of the power transformer in fault-free operation (the thermal condition is associated to a temperature variable known as hot-spot temperature). The output of the neural-fuzzy network is compared to measurements from the power transformer and the obtained residuals undergo statistical processing according to a fault detection and isolation algorithm. If a fault threshold (that is optimally defined according to detection theory) is exceeded, then deviation from normal operation can be detected at its early stages and an alarm can be launched. In several cases fault isolation can be also performed, i.e. the sources of fault in the power transformer model can be also identified. The performance of the proposed methodology is tested through simulation experiments. (c) 2016 Elsevier Ltd. All rights reserved.
机译:电力变压器的在线监视可以清楚地指示其状态和老化行为。本文提出了一种用于故障诊断的神经模型和局部统计方法,用于检测变压器的早期故障。该方法可以在变压器的早期阶段检测出故障,因此可以阻止电网的关键状况。神经模糊网络用于在无故障运行中对电力变压器的热状况进行建模(该热状况与称为热点温度的温度变量相关联)。将神经模糊网络的输出与电力变压器的测量值进行比较,根据故障检测和隔离算法对获得的残差进行统计处理。如果超过了故障阈值(根据检测理论最佳定义),则可以在早期阶段检测到偏离正常运行的情况并发出警报。在几种情况下,也可以执行故障隔离,即,也可以识别电力变压器模型中的故障源。通过仿真实验测试了所提出方法的性能。 (c)2016 Elsevier Ltd.保留所有权利。

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