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Neural Networks Applied in the Prediction of Top Oil Temperature of Transformer

机译:神经网络在变压器顶油温度预测中的应用

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Top oil temperature (TOT) is an important indicator reflecting the load capacity and insulation aging of the transformer. In order to predict the TOT accurately, this paper propose a transformer top oil temperature prediction method based on BP neural networks optimized by Adam. Firstly, we use the grey relational analysis method to calculate the correlation between other state variables of the transformer and the TOT, select state variables with larger correlation as the inputs and the TOT as the output to establish the neural networks prediction model (NNPM) of the TOT. Next NNPM of TOT is trained using historical data of transformer and Adam optimization algorithm. Then the case studying for historical data suggests that the prediction results of NNPM optimized by Adam of TOT are in accordance with measured results. Comparing with D Susa thermal circuit model and NNPM trained by SGD, the prediction accuracy of NNPM optimized by Adam is improved by 78.1% and 33.95% respectively. Finally, we choose different transformers to model and predict, and the results show that NNPM of TOT based on Adam has applicable ability to different transformers. The top oil temperature prediction method proposed in this paper provides a more accurate calculation basis for prediction of TOT of transformers and is of great significance for the safe and stable operation of the power transformers.
机译:最高油温(TOT)是反映变压器的负载能力和绝缘老化的重要指标。为了准确预测TOT,提出了一种基于Adam优化的BP神经网络的变压器顶部油温预测方法。首先,我们使用灰色关联分析方法计算变压器其他状态变量与TOT之间的相关性,选择相关性较大的状态变量作为输入,并选择TOT作为输出,以建立变压器的神经网络预测模型(NNPM)。 TOT。使用变压器的历史数据和Adam优化算法对TOT的下一个NNPM进行训练。然后通过对历史数据的研究表明,由TOT的Adam优化的NNPM的预测结果与实测结果一致。与SGD训练的D Susa热回路模型和NNPM相比,由Adam优化的NNPM的预测精度分别提高了78.1%和33.95%。最后,我们选择了不同的变压器进行建模和预测,结果表明基于Adam的TOT NNPM具有适用于不同变压器的能力。本文提出的最高油温预测方法为变压器TOT的预测提供了更准确的计算依据,对电力变压器的安全稳定运行具有重要意义。

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