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Remaining useful life prediction of aircraft engines based on cross-dimensional feature fusion |
Dongping ZHANG1( ),Dawei WANG1,Shuji HE1,Siliang TANG2,Zhiyong LIU3,4,Zhongqiu LIU5 |
1. College of Information Engineering, China Jiliang University, Hangzhou 310018, China 2. College of Computer Science and Technology, Zhejiang University, Hangzhou 310058, China 3. Polytechnic Institute of Zhejiang University, Hangzhou 310015, China 4. Supcon Technology Limited Company, Hangzhou 310053, China 5. Miaxis Biometrics Limited Company, Hangzhou 310052, China |
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Abstract To address the issues of low prediction accuracy, weak generalization ability, and insufficient feature extraction in remaining useful life (RUL) prediction under varying conditions for aircraft engines with multi-sensor variable data, a method based on cross-dimensional multi-scale convolutional network (CDMSCN) was proposed. The cross-influence of different sensor signals on RUL was modeled using a channel attention mechanism. Multi-scale gated convolutional layers were constructed to capture potential fault evolution patterns at different time granularities during engine operation. Hidden channel feature information was extracted through a channel-dependent module. By mining and integrating multi-dimensional features in the engine sensor data, the dynamic characterization and prediction of engine RUL were effectively achieved. Experiments on a public dataset of turbofan engines were carried out, and results showed that the proposed method significantly improved the prediction accuracy of RUL based on complex datasets.
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Received: 17 May 2024
Published: 25 July 2025
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Fund: 浙江省重点研发计划项目(2024C01028,2024C01108,2022C01144). |
基于跨维度特征融合的航空发动机寿命预测
针对多传感器变量数据下变工况航空发动机剩余使用寿命(RUL)预测精度低、泛化能力弱及无法充分挖掘数据特征信息的问题,提出基于跨维度多尺度卷积网络(CDMSCN)的RUL预测方法. 利用通道注意力机制建模不同传感器信号对RUL的交叉影响;构建多尺度门控卷积层,捕捉发动机操作过程中不同时间粒度的潜在故障演变模式;通过通道依赖模块挖掘隐藏的通道特征信息. 通过挖掘并整合发动机传感器数据中的多维特征,有效实现对发动机RUL的动态表征和预测. 在涡扇发动机的公开数据集上开展实验,结果表明,所提方法能够有效提高基于复杂数据集的RUL预测精度.
关键词:
航空发动机,
剩余使用寿命(RUL),
通道注意力,
多维特征,
深度学习
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