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Online prognostics of aircraft turbine engine component's remaining useful life (RUL)

机译:飞机涡轮发动机组件的剩余使用寿命(RUL)的在线预测

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Prognostics refers to the estimation of remaining useful life (RUL) of components of a system after a fault has been identified. Online prognostics indicates the estimation of RUL every time a new health data is provided to the user. In this paper, an artificial neural network (ANN) based approach is proposed for designing a prognostic system for aircraft turbine engine. A trained ANN is developed to estimate the health parameters such as component efficiency (η) and flow capacity (γ). The ANN was trained for a very small value of mean squared error (MSE). Then a forecasting (prediction) method is used to model the trend of estimated health parameters. The model is developed by autoregressive technique (AR) and all the data processing is done online. The proposed prognostic system also compute the distribution of the end of life (EoL) estimation of the failed component. The EoL and RUL estimation are implemented by modeling the health data using moving window and progressive window. The standard deviation (σ) of the distribution of estimated EoL indicates that progressive window performs better than the moving window with a σ reduction factor of 0.6 and 0.5 for η and γ respectively.
机译:预测是指在确定故障后估计系统组件的剩余使用寿命(RUL)。在线预后表明每次向用户提供新的健康数据时都会对RUL进行估算。本文提出了一种基于人工神经网络(ANN)的方法来设计飞机涡轮发动机的预测系统。开发训练有素的人工神经网络来估算健康参数,例如组件效率(η)和流量(γ)。对ANN进行了很小的均方误差(MSE)训练。然后,使用预测(预测)方法对估计的健康参数的趋势进行建模。该模型是通过自回归技术(AR)开发的,所有数据处理都是在线完成的。所提出的预测系统还可以计算故障组件的寿命终止(EoL)估计的分布。通过使用移动窗口和渐进窗口对健康数据进行建模,可以实现EoL和RUL估计。估计EoL分布的标准偏差(σ)表示,对于η和γ,渐进窗的性能要优于移动窗,且σ的缩小系数分别为0.6和0.5。

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