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首页> 外文期刊>Journal of Physics, D. Applied Physics: A Europhysics Journal >Artificial neural network based method for temperature correction in FDS measurement of transformer insulation
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Artificial neural network based method for temperature correction in FDS measurement of transformer insulation

机译:基于人工神经网络的变压器绝缘FDS测量温度校正方法

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Frequency domain spectroscopy (FDS) measurement has become an important method for the assessment of the condition of the insulation of oil transformers. In recent years, numerous researchers have found that temperature variation affect FDS results. The master curve technique is commonly used to correct the effect of temperature on FDS results. In this paper, an FDS experiment is carried out on a sample transformer. Then, for this transformer, insulation model parameters are determined by using a genetic algorithm based on the FDS results. Then, by using the insulation model parameters, tan delta curves are simulated and compared to real results. Finally, an FDS experiment is conducted on two other transformers at 22 degrees C, 30 degrees C, 40 degrees C, 50 degrees C, 60 degrees C, and 70 degrees C (in order to give sufficient information for a training neural network) and insulation model parameters are calculated via the genetic algorithm. In one of the transformers, the effect of temperature on the FDS curves is corrected by using the master curve technique and the FDS curves are transmitted over the reference curve. It is also shown that the transformer insulation is an Arrhenius-type dielectric. The error of this method is calculated by using a mean square error technique. In the two other transformers, the insulation model parameters related to 22 degrees C are considered as the target parameters. The insulation model parameters of the other temperatures are fed into an artificial neural network as input, to train it to transfer insulation model parameters related to other temperatures to the reference parameters. Finally, the errors of both methods are compared, and it is shown that this latter method for correcting the temperature effects in the FDS method is the more effective.
机译:频域光谱(FDS)测量已成为评估油变压器绝缘条件的重要方法。近年来,许多研究人员发现温度变化会影响FDS结果。主曲线技术通常用于校正温度对FDS结果的影响。在本文中,在样品变压器上进行FDS实验。然后,对于该变压器,通过使用基于FDS结果的遗传算法来确定绝缘模型参数。然后,通过使用绝缘模型参数,模拟并将TAN Delta曲线模拟并与实际结果进行比较。最后,FDS实验在22℃,30摄氏度,40摄氏度,60摄氏度和70摄氏度(以便为训练神经网络提供足够的信息)上进行FDS实验。绝缘模型参数通过遗传算法计算。在其中一个变压器中,通过使用主曲线技术来校正温度对FDS曲线的影响,并且通过参考曲线传输FDS曲线。还示出了变压器绝缘是Arrhenius型电介质。通过使用均方误差技术计算该方法的错误。在两个其他变压器中,与22℃相关的绝缘模型参数被认为是目标参数。其他温度的绝缘模型参数被馈送到人工神经网络中作为输入,以训练其与其他温度相关的绝缘模型参数到参考参数。最后,比较了两种方法的误差,并显示出后一种方法,用于校正FDS方法中的温度效应是更有效的。

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