Age Feature Enhanced Neural Network for RUL Estimation of Power Electronic Devices

Zhonghai Lu, R. Shi, Chao Guo, Mingrui Liu
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Abstract

Like other deep learning problems, critical features are critical to enable effective estimation of Remaining Useful Lifetime (RUL) for power electronic devices using Neural Networks (NNs). However, these critical features are often indirectly obtained after data pre-processing, complicated either in form (high dimension) or in computation (computation-intensive pre-processing). In the paper, we suggest adding a simple direct feature, age, into the NN based RUL estimation technique. The rationale for incorporating this feature is that the device lifetime is a sum of past time (age) plus RUL. Thus it has a strong correlation to RUL. In our experiments using accelerated aging tests, we show that the new age feature enhanced Recurrent Neural Network (RNN) model can significantly improve estimation accuracy and shorten training convergence time. It also outperforms a state-of-the-art RNN model using derived time-domain statistical features.
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年龄特征增强神经网络在电力电子设备RUL估计中的应用
与其他深度学习问题一样,关键特征对于使用神经网络(nn)有效估计电力电子设备的剩余使用寿命(RUL)至关重要。然而,这些关键特征往往是经过数据预处理后间接获得的,无论是形式(高维)还是计算(计算密集型预处理)都很复杂。在本文中,我们建议在基于神经网络的规则学习估计技术中加入一个简单的直接特征——年龄。合并此功能的基本原理是,设备寿命是过去时间(年龄)加上RUL的总和。因此,它与RUL有很强的相关性。在加速老化实验中,我们证明了新年龄特征增强的递归神经网络(RNN)模型可以显著提高估计精度和缩短训练收敛时间。它还优于使用派生的时域统计特征的最先进的RNN模型。
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