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A new Signal Processing-based Prognostic Approach applied to Turbofan Engines

机译:一种新的基于信号处理的预测方法应用于涡扇发动机

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For modern engineering industry, Prognostic has become a key feature in maintenance strategies since it enables to enhance system availability and safety while reducing operational costs and avoiding unscheduled maintenance. Prognostic can be seen as the prediction of the system’s remaining useful life with the purpose of minimizing catastrophic failure events. Such task could be performed on the basis of an accurate physical representation of the system behavior and/or by using available historical data that have been collected.In this paper, a novel prognostic approach is proposed, based on data-driven category techniques. This approach uses mainly historical data, regardless of the underlying physical process, and it can be divided into two steps. First, an original signal processing technique is used to develop life prediction models. In the second step, the system’s current health state is predicted and the RUL is estimated based on a proposed formula. This approach is validated by using four different data sets generated from the NASA’s turbofan engine simulator (C-MAPSS) and the obtained results are compared with relevant existing approaches tested using the same collected data. The main outputs of our study attest that the proposed approach is robust, applicable and effective even in the presence of various fault modes and operating conditions.
机译:对于现代工程行业,Prognostic已成为维护策略的关键功能,因为它可以提高系统可用性和安全性,同时降低运营成本并避免计划外的维护。预后可以看作是对系统剩余使用寿命的预测,目的是最大程度地减少灾难性故障事件。可以基于对系统行为的准确物理表示和/或使用已收集的可用历史数据来执行此类任务。在本文中,基于数据驱动的分类技术,提出了一种新的预后方法。这种方法主要使用历史数据,而与基础物理过程无关,它可以分为两个步骤。首先,原始信号处理技术用于开发寿命预测模型。第二步,根据建议的公式预测系统的当前健康状况并估算RUL。通过使用从NASA涡扇发动机模拟器(C-MAPSS)生成的四个不同数据集对该方法进行了验证,并将获得的结果与使用相同收集的数据进行测试的相关现有方法进行了比较。我们研究的主要结果证明,即使在存在各种故障模式和运行条件的情况下,所提出的方法也是可靠,适用和有效的。

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