1. 昆明理工大学 信息工程与自动化学院,昆明,650500
2. 昆明理工大学 机构 信息建设管理中心,昆明,650500
[ "林荣祥,硕士研究生," ]
[ "朱贵富,高级工程师,硕士," ]
纸质出版:2025
移动端阅览
林荣祥, 王海瑞, 朱贵富. 一种融合神经网络的航空发动机寿命预测方法[J]. 机械科学与技术, 2025,44(11):2034-2046.
林荣祥, 王海瑞, 朱贵富. An Aero-engine Life Prediction Method Incorporating Neural Networks[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(11): 2034-2046.
林荣祥, 王海瑞, 朱贵富. 一种融合神经网络的航空发动机寿命预测方法[J]. 机械科学与技术, 2025,44(11):2034-2046. DOI: 10.13433/j.cnki.1003-8728.20230385.
林荣祥, 王海瑞, 朱贵富. An Aero-engine Life Prediction Method Incorporating Neural Networks[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(11): 2034-2046. DOI: 10.13433/j.cnki.1003-8728.20230385.
为了提高航空发动机RUL的预测精度,提出了一种堆叠卷积融合长短时间记忆网络模型(Stacked convolutional-long short-term memory network
SDCNN-LSTM)求解发动机衰减特性的映射关系来提高航空发动机剩余使用寿命预测精度。首先,对多传感器监测到的数据进行归一化处理,降低数据的量纲使数据落入一个小的特定区间,从而消除奇异样本的影响。其次,构建SDCNN-LSTM神经网络预测模型,SDCNN中的膨胀率用于增加卷积层的感受野,同时保持计算成本低。这使得该模型能够捕捉发生在各种时间尺度上的模式,模型接下来使用自注意力机制对特征进行编码,以便在加入LSTM层之前进一步提取时间序列的特征,LSTM用于捕捉时序数据中的时间依赖性,并对下一个时刻进行预测,从而有效的预测出航空发动机的RUL。最后,通过Hyperband算法对模型进行优化,以提高模型预测准确性,并利用涡扇发动机退化过程数据集C-MAPSS对所提方法进行验证,实验结果表明所提方法优于其他模型,验证了该方法的可行性和有效性。
In order to improve the RUL prediction accuracy of aircraft engines
this paper proposes a stacked convolutional-long short-term memory network (SDCNN-LSTM) model to solve the mapping relationship of engine degradation characteristics. Firstly
the data monitored by multiple sensors is normalized to reduce the dimensionality of the data and make it fall within a small specific range
thus eliminating the influence of singular samples; Secondly
an SDCNN-LSTM neural network prediction model is constructed
wherein the dilation rate in the SDCNN is used to increase the receptive field of the convolutional layer while keeping the computational cost low. This enables the model to capture patterns that occur at various time scales; Then
the model uses a self-attention mechanism to encode features in order to extract time series features before adding LSTM layer to capture the temporal dependencies in the time series data and predict the next time step
thus effectively predicting the RUL of aircraft engines; Finally
the model is optimized using the Hyperband algorithm to improve its prediction accuracy
and the proposed method is validated using the C-MAPSS dataset of turbofan engine degradation processes. Experimental results show that the proposed method is superior to other models
verifying the feasibility and effectiveness of the method.
0
浏览量
0
下载量
0
CSCD
关联资源
相关文章
相关作者
相关机构
京公网安备11010602201714号