Research Status and Challenges of Deep Learning-Based Remaining Useful Life Prediction of Equipment

Ju Sun, Lehui Zheng, Ying Huang
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引用次数: 1

Abstract

With the development of modern science and technology, aviation, aerospace, satellite and other equipment are developing in the direction of high reliability, safety and stability, which puts forward higher requirements for the performance of components. In order to ensure the normal operation of complex equipment, the remaining useful life (RUL) prediction technology has been widely concerned by researchers. Deep learning emerging in recent years has powerful data processing capabilities and feature expression capabilities, realizing autonomous learning of model parameters and providing accurate RUL prediction results. In view of this, four typical deep learning methods applied to RUL prediction are analyzed and elaborated in detail, and the research status of each method is combed. Then the corresponding advantages and disadvantages are sorted out through experiments. Finally, the future research directions of deep learning-based RUL prediction are discussed.
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基于深度学习的设备剩余使用寿命预测研究现状与挑战
随着现代科学技术的发展,航空、航天、卫星等设备正朝着高可靠、安全、稳定的方向发展,这就对元器件的性能提出了更高的要求。为了保证复杂设备的正常运行,剩余使用寿命(RUL)预测技术一直受到研究者的广泛关注。近年来兴起的深度学习具有强大的数据处理能力和特征表达能力,可以实现模型参数的自主学习,提供准确的RUL预测结果。鉴于此,本文对四种典型的深度学习方法应用于RUL预测进行了详细的分析和阐述,并对每种方法的研究现状进行了梳理。然后通过实验整理出相应的优缺点。最后,对基于深度学习的规则学习预测的未来研究方向进行了展望。
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