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Asymmetric Loss Functions for Deep Learning Early Predictions of Remaining Useful Life in Aerospace Gas Turbine Engines

机译:用于航空航天燃气涡轮发动机剩余使用寿命的深度学习早期预测的非对称损失函数

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Asymmetric loss functions have been successfully applied to deep learning for image analysis and imbalanced classification. In this paper, we extend the use of particular types of weighted loss functions, namely asymmetric loss functions, to investigate how predictions of engine remaining useful life (RUL) in aerospace are affected. Within prognostics and health management, the main metric used to evaluate deep learning RUL predictions is the scoring function. Our hypothesis is that by using asymmetric loss functions we will improve results for this metric. In order to investigate our hypothesis, we test 4 different asymmetric loss functions, i.e, Mean Square Logarithmic Error-Mean Square Error, Linear-Mean Square Error, Linear-Linear, and Quadratic-Quadratic and evaluate whether and how much they affect different deep learning architectures performance. Results show that the use of asymmetric loss functions improve RUL predictions for the case study investigated.
机译:不对称损失函数已成功应用于深度学习进行图像分析和不平衡分类。在本文中,我们扩展了特定类型的加权损失功能,即不对称损失功能,研究了航空航天中剩余使用寿命(RUL)的预测如何受到影响。在预后和健康管理中,用于评估深度学习rul预测的主要指标是评分功能。我们的假设是,通过使用不对称损失功能,我们将提高该指标的结果。为了调查我们的假设,我们测试4个不同的不对称损失函数,即均方对数误差均方误差,线性均方误差,线性线性和二次二次,并评估它们是否影响了不同的深度学习架构性能。结果表明,使用不对称损失功能改善了研究案例研究的RUL预测。

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