Multi-Head CNN-LSTM with Prediction Error Analysis for Remaining Useful Life Prediction

Hyunho Mo, F. Lucca, Jonni Malacarne, Giovanni Iacca
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引用次数: 16

Abstract

Predicting accurate remaining useful life (RUL) of components plays a crucial role in making optimal decision for maintenance management. As sensor technology develops, multiple sensors are used to collect information for monitoring the condition of components. Deep learning architectures, such as convolutional neural network (CNN) and long short term memory (LSTM), can be considered as a successful end-to-end framework to predict RUL from the multivariate time series collected by those sensors. For that, we employ an architecture combining the parallel branch of CNN in series with LSTM which is referred to as multi-head CNN-LSTM. Furthermore, we propose a combination of the network with time series prediction error analysis (PEA). The prediction errors on the entire time series are estimated by recursive least squares (RLS) and single exponential smoothing (SES) respectively. We analyze each of the two sequences of prediction errors with the exponentially weighted moving average (EWMA) and combine them with the Fisher’s method. Finally, the output of the PEA is fed into the multi-head CNN-LSTM network as the additional input. We evaluate the performance of our method on the widely used C-MAPSS dataset. The experimental results suggest that using the PEA improves the performance of the deep learning-based RUL prediction model. Compared to other methods in recent literature, the proposed method achieves the state-of-the-art result on one sub-dataset and very competitive results on the others. In addition, it also shows promising results in the consecutive RUL prediction following the degradation process of components.
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基于预测误差分析的多头CNN-LSTM剩余使用寿命预测
准确预测部件的剩余使用寿命(RUL)对于制定维护管理的最佳决策至关重要。随着传感器技术的发展,使用多个传感器来收集信息以监测部件的状态。深度学习架构,如卷积神经网络(CNN)和长短期记忆(LSTM),可以被认为是一个成功的端到端框架,可以从这些传感器收集的多变量时间序列中预测RUL。为此,我们采用了一种将CNN的并行分支与LSTM串联起来的架构,称为多头CNN-LSTM。此外,我们还提出了将网络与时间序列预测误差分析(PEA)相结合的方法。分别用递推最小二乘(RLS)和单指数平滑(SES)估计整个时间序列的预测误差。我们用指数加权移动平均(EWMA)分析了两种预测误差序列,并将其与Fisher方法相结合。最后,PEA的输出作为附加输入输入到多头CNN-LSTM网络中。我们在广泛使用的C-MAPSS数据集上评估了我们的方法的性能。实验结果表明,使用PEA可以提高基于深度学习的RUL预测模型的性能。与最近文献中的其他方法相比,该方法在一个子数据集上获得了最先进的结果,而在其他子数据集上获得了非常有竞争力的结果。此外,在构件降解过程后的连续RUL预测中也显示出令人满意的结果。
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