首页|期刊导航|北京航空航天大学学报|基于VMD-CNN-BiLSTM的变工况涡扇发动机剩余使用寿命预测

基于VMD-CNN-BiLSTM的变工况涡扇发动机剩余使用寿命预测OA

Remaining useful life prediction of variable-operating turbofan engine based on VMD-CNN-BiLSTM

中文摘要英文摘要

为解决传统预测方法变工况涡扇发动机剩余寿命预测精度较低的问题,提出一种变工况涡扇发动机剩余使用寿命(RUL)预测模型.采用归一化处理和变分模态分解(VMD)将数据分解为预定个数的特定区间内的子数据,充分挖掘多维数据中的隐藏时序特征,消除奇异样本和不同量纲的影响;构建基于 VMD-CNN-BiLSTM的变工况涡扇发动机 RUL预测模型,卷积神经网络(CNN)用于特征提取和融合生成若干映射,将数据映射输入双向长短时神经网络(BiLSTM)进行训练,捕捉时序数据的时间依赖性,输出 RUL预测结果;采用麻雀搜索算法(SSA)选取超参数优解,提升模型的预测性能.涡扇发动机 RUL预测实验结果表明:VMD-CNN-BiLSTM在变工况涡扇发动机 RUL预测中,均方根误差(RMSE)和平均绝对误差(MAE)分别达到 13.74±0.51和11.24±0.49,且在噪声环境下仍具有较高的精度和泛化性能.

In order to address the issue of low prediction accuracy in traditional forecasting methods for residual life of turbofan engines under variable working conditions,a variational mode decomposition convolutional neural network bidirectional long short term memory(VMD-CNN-BiLSTM)model is proposed.Firstly,variational mode decomposition(VMD)is used to normalize the data and split it into sub-data at predetermined intervals.This allows for the thorough extraction of hidden temporal features in multidimensional data as well as the removal of singular samples and dimensional variations.Secondly,a VMD-CNN-BiLSTM model is constructed for predicting the residual life of turbofan engines under variable working conditions.The convolutional neural network(CNN)is employed for feature extraction and fusion to generate multiple mappings.These mappings are then input into the BiLSTM network to capture time dependencies in the time series data and produce accurate predictions of remaining engine life.Finally,hyperparameter optimization using the Sparrow algorithm enhances the prediction performance of the model.As shown by root mean squared error(RMSE)values of 13.74±0.51 and mean absolute error(MAE)values of 11.24±0.49 when predicting remaining engine life under variable operating conditions,experimental results on the commercial modular aero-propulsion system simulation(C-MAPSS)dataset show that VMD-CNN-BiLSTM achieves high accuracy and generalization performance even with noisy data.

张鲁一航;杨彦明;陈永展;李军亮;戴豪民

海军航空大学青岛校区,青岛 266041海军航空大学青岛校区,青岛 266041海军航空大学青岛校区,青岛 266041海军航空大学青岛校区,青岛 266041海军航空大学青岛校区,青岛 266041

信息技术与安全科学

航空发动机剩余使用寿命预测变分模态分解麻雀优化深度学习

aeroengineremaining useful life predictionvariational mode decompositionsparrow optimizationdeep learning

《北京航空航天大学学报》 2026 (4)

1279-1289,11

国家社科基金(SKJJ-2022-B-037)山东省自然科学基金(ZR2020ME131) National Fund for Social Science(SKJJ-2022-B-037)Natural Science Foundation of Shandong Province(ZR2020ME131)

10.13700/j.bh.1001-5965.2024.0051

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