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Deep Neural Network Feature Selection Approaches for Data-Driven Prognostic Model of Aircraft Engines

机译:飞机发动机数据驱动预后模型的深度神经网络特征选择方法

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Predicting Remaining Useful Life (RUL) of systems has played an important role in various fields of reliability engineering analysis, including in aircraft engines. RUL prediction is critically an important part of Prognostics and Health Management (PHM), which is the reliability science that is aimed at increasing the reliability of the system and, in turn, reducing the maintenance cost. The majority of the PHM models proposed during the past few years have shown a significant increase in the amount of data-driven deployments. While more complex data-driven models are often associated with higher accuracy, there is a corresponding need to reduce model complexity. One possible way to reduce the complexity of the model is to use the features (attributes or variables) selection and dimensionality reduction methods prior to the model training process. In this work, the effectiveness of multiple filter and wrapper feature selection methods (correlation analysis, relief forward/backward selection, and others), along with Principal Component Analysis (PCA) as a dimensionality reduction method, was investigated. A basis algorithm of deep learning, Feedforward Artificial Neural Network (FFNN), was used as a benchmark modeling algorithm. All those approaches can also be applied to the prognostics of an aircraft gas turbine engines. In this paper, the aircraft gas turbine engines data from NASA Ames prognostics data repository was used to test the effectiveness of the filter and wrapper feature selection methods not only for the vanilla FFNN model but also for Deep Neural Network (DNN) model. The findings show that applying feature selection methods helps to improve overall model accuracy and significantly reduced the complexity of the models.
机译:预测系统的剩余使用寿命(RUL)在各种可靠性工程分析领域中发挥了重要作用,包括飞机发动机。 RUL预测批判性是预后和健康管理(PHM)的重要组成部分,这是旨在提高系统可靠性的可靠性科学,又降低维护成本。在过去几年中提出的大多数PHM模型表现出数据驱动部署量的显着增加。虽然更复杂的数据驱动模型通常与更高的准确性相关联,但是相应需要降低模型复杂性。降低模型复杂性的一种可能方法是在模型训练过程之前使用特征(属性或变量)选择和维度减少方法。在这项工作中,研究了多个过滤器和包装物特征选择方法的有效性(相关性分析,释放前向/后退选择等)以及主要成分分析(PCA)作为维度减少方法。深度学习的基础算法,前馈人工神经网络(FFNN)用作基准建模算法。所有这些方法也可以应用于航空器燃气轮机发动机的预测。在本文中,飞机燃气涡轮机引擎来自NASA AMES预测数据存储库的数据用于测试过滤器和包装器特征选择方法的有效性,不仅适用于Vanilla FFNN模型,而且还用于深度神经网络(DNN)模型。调查结果表明,应用功能选择方法有助于提高整体模型精度,并显着降低模型的复杂性。

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