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Estimating transformer oil parameters using artificial neural networks

机译:使用人工神经网络估算变压器油参数

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In this paper the correlation between dielectric strength, the water content and oil CO2/CO ratio with insulation resistance in oil-filled power transformers is studied using artificial neural networks. This correlation allows and improves the condition assessment of transformer insulation using the Megger test. This is because dielectric strength, water content and CO2/CO ratio are important parameters for determining the deterioration state of the transformer insulation. The neural network model is built using tests' data for nineteen power transformers. The data collected is the high voltage, medium voltage, and low voltage to ground insulation resistance, oil breakdown voltage, water content and oil CO2/CO ratio. The results propose an efficient model with a breakdown voltage, water content, and oil CO2/CO ratio prediction rates of 95%, 82.8%, and 87.3% respectively.
机译:利用人工神经网络研究了充油式电力变压器的介电强度,含水量和油中CO 2 / CO比与绝缘电阻之间的关系。这种相关性允许并使用Megger测试改善变压器绝缘的状态评估。这是因为介电强度,水含量和CO 2 / CO比是确定变压器绝缘劣化状态的重要参数。使用测试数据为19个电力变压器构建神经网络模型。收集的数据包括高压,中压和低压对地绝缘电阻,油击穿电压,水含量和油中的CO 2 / CO比。结果提出了一个有效的模型,其击穿电压,含水量和油中CO 2 / CO比率的预测率分别为95%,82.8%和87.3%。

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