论文标题
使用颞深降解网络,用于复杂机械的剩余使用寿命预测,并具有基于注意力的功能提取
Remaining Useful Life Prediction Using Temporal Deep Degradation Network for Complex Machinery with Attention-based Feature Extraction
论文作者
论文摘要
剩余使用寿命(RUL)的确切估计对于预后分析和预测维护至关重要,可以显着降低失败率和维护成本。通过神经网络从传感器流数据中提取的降解相关特征可以显着提高RUL预测的准确性。提出了时间深层降解网络(TDDN)模型,以通过一维卷积神经网络(1D CNN)给出的降解相关特征进行RUL预测。 1D CNN用于从流传感器数据中提取时间特征。时间特征从波动的原始传感器流数据中具有单调降解趋势。注意机制可以通过捕获注意力重量的断层特征和降解发展来改善RUL预测性能。 TDDN模型的性能在公共C-MAPS数据集上进行了评估,并与现有方法进行了比较。结果表明,与当前的机器学习模型相比,TDDN模型可以在复杂条件下实现最佳的RUL预测准确性。从高维传感器流数据中提取的与降解相关的特征证明了清晰的降解轨迹和降解阶段,使TDDN能够准确有效地预测Turbofan-Engine Inder的统治。
The precise estimate of remaining useful life (RUL) is vital for the prognostic analysis and predictive maintenance that can significantly reduce failure rate and maintenance costs. The degradation-related features extracted from the sensor streaming data with neural networks can dramatically improve the accuracy of the RUL prediction. The Temporal deep degradation network (TDDN) model is proposed to make the RUL prediction with the degradation-related features given by the one-dimensional convolutional neural network (1D CNN) feature extraction and attention mechanism. 1D CNN is used to extract the temporal features from the streaming sensor data. Temporal features have monotonic degradation trends from the fluctuating raw sensor streaming data. Attention mechanism can improve the RUL prediction performance by capturing the fault characteristics and the degradation development with the attention weights. The performance of the TDDN model is evaluated on the public C-MAPSS dataset and compared with the existing methods. The results show that the TDDN model can achieve the best RUL prediction accuracy in complex conditions compared to current machine learning models. The degradation-related features extracted from the high-dimension sensor streaming data demonstrate the clear degradation trajectories and degradation stages that enable TDDN to predict the turbofan-engine RUL accurately and efficiently.