用于航空发动机剩余使用寿命预测的多通道长期外部关注网络

Xuezhen Liu;Yongyi Chen;Dan Zhang;Ruqiang Yan;Hongjie Ni
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引用次数: 0

摘要

准确估算飞机发动机的剩余使用寿命(RUL)可以有效防止飞机失事和人员伤亡。在一些 RUL 预测方法中,尤其是针对复杂工况下运行的飞机发动机,很难全面描述发动机的退化过程,导致 RUL 预测结果不佳。为解决上述难题,本文提出了一种用于涡扇发动机 RUL 预测的多通道长期外部注意力网络(MLEAN)。首先,对预处理样本进行转换,使 MLEAN 能够专注于学习同一退化阶段中传感器间的相关性。然后,为了提高网络的特征表示能力,设计了多通道时间注意网络(MTANet)来实现多尺度和多频率特征学习,从而有效地实现了对不同通道中长期依赖关系的多视角分析。然后,引入外部注意块(EAB)来记忆不同样本的重要退化特征,从而提高网络的全局特征提取能力和泛化能力。在 C-MAPSS 公开数据集上检验了 MLEAN 的性能。评估指标 RMSE 和得分值分别为 13.71 和 680。在对比实验中,所提出的 MLEAN 比所列出的最先进的 RUL 预测方法表现更好。
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A Multichannel Long-Term External Attention Network for Aeroengine Remaining Useful Life Prediction
Accurately estimating the remaining useful life (RUL) of aircraft engines can effectively prevent aircraft crashes and human casualties. In some RUL prediction methods, particularly for aircraft engines running under complex conditions, they are difficult to comprehensively characterize the engine degradation process, resulting in poor predicted RUL. To address the above challenge, a multichannel long-term external attention network (MLEAN) is proposed for the RUL prediction of turbofan engines. First, the preprocessed samples are transformed to enable MLEAN to focus on learning inter-sensor correlations within the same degradation stage. To improve the feature representation capability of the network, multichannel time attention network (MTANet) is then designed to realize multiscale and multifrequency feature learning, which effectively achieves multiperspective analysis of long-term dependencies in different channels. Then, external attention block (EAB) is introduced to memorize important degraded features from different samples, which can improve the ability of global feature extraction and generalization ability of the network. The performance of MLEAN is examined on the C-MAPSS public dataset. The evaluation metrics RMSE and score values are 13.71 and 680, respectively. In comparison experiments, the proposed MLEAN performs better than the listed state-of-the-art RUL prediction methods.
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