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Predicting the Remaining Useful Life of an Aircraft Engine Using a Stacked Sparse Autoencoder with Multilayer Self-Learning

机译:使用具有多层自学习功能的堆叠式稀疏自动编码器预测飞机发动机的剩余使用寿命

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Because they are key components of aircraft, improving the safety, reliability and economy of engines is crucial. To ensure flight safety and reduce the cost of maintenance during aircraft engine operation, a prognostics and health management system that focuses on fault diagnosis, health assessment, and life prediction is introduced to solve the problems. Predicting the remaining useful life (RUL) is the most important information for making decisions about aircraft engine operation and maintenance, and it relies largely on the selection of performance degradation features. The choice of such features is highly significant, but there are some weaknesses in the current algorithm for RUL prediction, notably, the inability to obtain tendencies from the data. Especially with aircraft engines, extracting useful degradation features from multisensor data with complex correlations is a key technical problem that has hindered the implementation of degradation assessment. To solve these problems, deep learning has been proposed in recent years to exploit multiple layers of nonlinear information processing for unsupervised self-learning of features. This paper presents a deep learning approach to predict the RUL of an aircraft engine based on a stacked sparse autoencoder and logistic regression. The stacked sparse autoencoder is used to automatically extract performance degradation features from multiple sensors on the aircraft engine and to fuse multiple features through multilayer self-learning. Logistic regression is used to predict the remaining useful life. However, the hyperparameters of the deep learning, which significantly impact the feature extraction and prediction performance, are determined based on expert experience in most cases. The grid search method is introduced in this paper to optimize the hyperparameters of the proposed aircraft engine RUL prediction model. An application of this method of predicting the RUL of an aircraft engine with a benchmark dataset is employed to demonstrate the effectiveness of the proposed approach.
机译:因为它们是飞机的关键部件,所以提高发动机的安全性,可靠性和经济性至关重要。为了确保飞行安全并降低飞机发动机运行期间的维护成本,引入了以故障诊断,健康评估和寿命预测为重点的预测和健康管理系统来解决这些问题。预测剩余使用寿命(RUL)是做出有关飞机发动机运行和维护决策的最重要信息,并且很大程度上取决于性能下降功能的选择。这些功能的选择非常重要,但是当前用于RUL预测的算法存在一些缺点,尤其是无法从数据中获得趋势。尤其是对于飞机发动机,从具有复杂相关性的多传感器数据中提取有用的降级特征是阻碍降级评估实施的关键技术问题。为了解决这些问题,近年来提出了深度学习,以利用多层非线性信息处理来进行无监督的特征自学习。本文提出了一种基于堆叠式稀疏自动编码器和逻辑回归的预测飞机引擎RUL的深度学习方法。堆叠式稀疏自动编码器用于从飞机发动机上的多个传感器中自动提取性能下降特征,并通过多层自学习融合多个特征。 Logistic回归用于预测剩余使用寿命。但是,在大多数情况下,深度学习的超参数会根据专家的经验来确定,这些参数会对特征提取和预测性能产生重大影响。本文介绍了网格搜索方法,以优化所提出的飞机发动机RUL预测模型的超参数。该方法具有基准数据集的预测飞机发动机RUL的方法的应用被用来证明所提出方法的有效性。

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