一种基于深度学习的电气设备剩余使用寿命预测方法

Huibin Fu, Ying Liu
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引用次数: 0

摘要

电气设备维护对管理公司至关重要。高效的维护可以大大降低企业成本,避免灾难性设备故障造成的安全事故。在当前背景下,基于机器学习方法的预测性维护(PdM)日益流行,而其对低压接触器等电气设备的研究还处于起步阶段。低压接触器的故障模式主要是熔焊和爆炸,少数是无法接通。本研究提出了一种数据驱动方法来预测低压接触器的剩余使用寿命(RUL)。首先,三相交流电压和电流通过跟踪电气设备的操作次数来记录其寿命。其次,利用时域、频域和小波方法提取故障相关特征。然后,设计并使用 CNN-LSTM 网络根据提取的特征训练电气设备 RUL 预测模型。基于从低压交流接触器中收集的十个数据集进行的实验研究表明,所提出的方法在 MAE 和 RMSE 方面与现有的深度学习算法相比具有优势。
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A deep learning-based approach for electrical equipment remaining useful life prediction

Electrical equipment maintenance is of vital importance to management companies. Efficient maintenance can significantly reduce business costs and avoid safety accidents caused by catastrophic equipment failures. In the current context, predictive maintenance (PdM) is becoming increasingly popular based on machine learning approaches, while its research on electrical equipment such as low-voltage contactors is in its infancy. The failure modes are mainly fusion welding and explosion, and a few are unable to switch on. In this study, a data-driven approach is proposed to predict the remaining useful life (RUL) of the low-voltage contactor. Firstly, the three-phase alternating voltage and current records the life of electrical equipment by tracking the number of times it has been operated. Secondly, the failure-relevant features are extracted by using the time domain, frequency domain, and wavelet methods. Then, a CNN-LSTM network is designed and used to train an electrical equipment RUL prediction model based on the extracted features. An experimental study based on ten datasets collected from low-voltage AC contactors reveals that the proposed method shows merits in comparison with the prevailing deep learning algorithms in terms of MAE and RMSE.

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