电力变压器剩余使用寿命预测的改进神经控制微分方程

Zhikai Xing, Yigang He
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引用次数: 0

摘要

近年来,研究人员提出了许多深度学习(DL)方法,以在预后和健康管理(PHM)应用中提供可靠的剩余使用寿命(RUL)预测。尽管有监督的深度学习方法,如门控循环单元、长短期记忆已经克服了规则学习预测技术,但这些方法仍然依赖于确定性数据。在实际的PHM应用中,基于机器学习的电力变压器RUL预测方法还处于起步阶段。为了解决这一问题,本文提出了改进的神经控制微分方程,用于电力变压器RUL预测。首先,基于振动信号,利用多尺度熵和k均值计算电力变压器的健康置信度;然后,交叉注意机制提高了神经控制微分方程的特征提取能力,克服了不确定现象的影响。最后,利用健康指数公式得到了电力变压器的RUL。13台实际电力变压器的振动数据验证了该方法的优越性。该方法与不同的RUL预测方法进行了比较,得到了比比较算法更强的性能。对比结果表明,该方法可以准确地在线获得电力变压器的RUL。RUL预测精度达到0.0523。
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Improved Neural Controlled Differential Equation for Remaining Useful Life Prediction of Power Transformers
In recent years, researchers have presented numerous deep learning (DL) approaches to provide reliable prediction of remaining useful life (RUL) in prognostic and health management (PHM) applications. Although supervised DL approaches, such as gated recurrent unite, long-short term memory have overcome RUL prediction technology, these methods are still dependent on certainty data. Concerning real-life PHM applications, the machine learning-based RUL prediction of the power transformer methods is still in the initial phase. To solve this issue, this paper presented improved neural controlled differential equations for RUL prediction of power transformers. First, the multi-scale entropy and K-means are used to calculate the health confidence of the power transformer based on the vibration signal. Then, the cross-attention mechanism improves the feature extraction ability of neural controlled differential equation to overcome the influence of uncertain phenomena. Finally, the RUL of the power transformers is obtained by the health index formula. The advantages of the presented approach have been verified on the vibration data from 13 real power transformers. The presented approach compares with the different RUL prediction methods and obtains a stronger performance than the comparison algorithms. Contrastive results demonstrate that the presented approach obtains an accurate RUL of the power transformer online. Moreover, the accuracy of RUL prediction achieves 0.0523.
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