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BP-Neural-Network-Based Aging Degree Estimation of Power Transformer Using Acoustic Signal

机译:基于BP神经网络的声信号老化度估计

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In this paper, an aging degree estimation method using acoustic signals is proposed based on a BP neural network. Twenty-eight transformers are taken as research objects. The transformer's internal noise mechanism is analyzed, and the acoustic signals of the high- and low-voltage sidewalls are collected and screened. The BP neural network is used to predict the transformer age in real-time. Comparing the predicted results with their actual operation time provides a sufficient basis for determining the degree of transformer aging and the need for an overhaul. After network training and data testing, the error between the predicted value and the actual value reaches the least. The proposed estimation method can play an innovative role in the process of transformer fault monitoring.
机译:本文基于BP神经网络提出了一种使用声信号的老化程度估计方法。二十八个变形金刚作为研究对象。分析变压器的内噪声机构,收集和筛选高压侧壁的声学信号。 BP神经网络用于实时预测变压器年龄。将预测结果与实际操作时间进行比较为确定变压器老化程度以及对大修的需要提供了足够的基础。在网络培训和数据测试之后,预测值与实际值之间的误差最少达到。所提出的估计方法可以在变压器故障监测过程中发挥创新作用。

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