Fan Zhengyang, Li Wanru, Chang Kuo-Chu
Department of Systems Engineering and Operations Research, George Mason University, Fairfax, VA 22030, USA.
Sensors (Basel). 2024 Jan 26;24(3):824. doi: 10.3390/s24030824.
The accurate estimation of the remaining useful life (RUL) for aircraft engines is essential for ensuring safety and uninterrupted operations in the aviation industry. Numerous investigations have leveraged the success of the attention-based Transformer architecture in sequence modeling tasks, particularly in its application to RUL prediction. These studies primarily focus on utilizing onboard sensor readings as input predictors. While various Transformer-based approaches have demonstrated improvement in RUL predictions, their exclusive focus on temporal attention within multivariate time series sensor readings, without considering sensor-wise attention, raises concerns about potential inaccuracies in RUL predictions. To address this concern, our paper proposes a novel solution in the form of a two-stage attention-based hierarchical Transformer (STAR) framework. This approach incorporates a two-stage attention mechanism, systematically addressing both temporal and sensor-wise attentions. Furthermore, we enhance the STAR RUL prediction framework by integrating hierarchical encoder-decoder structures to capture valuable information across different time scales. By conducting extensive numerical experiments with the CMAPSS datasets, we demonstrate that our proposed STAR framework significantly outperforms the current state-of-the-art models for RUL prediction.
准确估计飞机发动机的剩余使用寿命(RUL)对于确保航空业的安全和不间断运行至关重要。许多研究利用了基于注意力的Transformer架构在序列建模任务中的成功,特别是在其对RUL预测的应用中。这些研究主要集中于将机载传感器读数用作输入预测器。虽然各种基于Transformer的方法在RUL预测方面已显示出改进,但它们仅专注于多变量时间序列传感器读数中的时间注意力,而不考虑传感器维度的注意力,这引发了对RUL预测潜在不准确性的担忧。为了解决这一问题,我们的论文提出了一种新颖的解决方案,即基于两阶段注意力的分层Transformer(STAR)框架。这种方法采用了两阶段注意力机制,系统地处理时间和传感器维度的注意力。此外,我们通过集成分层编码器-解码器结构来增强STAR RUL预测框架,以跨不同时间尺度捕获有价值的信息。通过使用CMAPSS数据集进行广泛的数值实验,我们证明了我们提出的STAR框架在RUL预测方面显著优于当前的最先进模型。