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An integrated approach for aircraft turbofan engine fault detection based on data mining techniques

机译:基于数据挖掘技术的飞机涡扇发动机故障检测综合方法

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摘要

The present study proposes an algorithm for fault detection in terms of condition-based maintenance with data mining techniques. The proposed algorithm is applied on an aircraft turbofan engine using flight data and consists of two main sections. In the first section, the relationship between engine exhaust gas temperature (EGT) as the main engine health monitoring criterion and other operational and environmental parameters of the engine was modelled using the data-driven models. In the second section, a data set including EGT residuals, that is, the difference between the actual EGT of the system and the EGT estimated by the developed model in the health conditions of the engine, was created. Finally, faults occurring in each flight were detected based on the identification of abnormal events by a one-class support vector machine trained by the health condition EGT residual data set. The results indicated that the proposed algorithm was an effective approach for inspecting aircraft engine conditions and detecting faults, with no need for technical knowledge on the interior characteristics of the aircraft engine.
机译:本研究提出了一种在基于条件的维护方面的故障检测算法,具有数据挖掘技术。所提出的算法应用于使用飞行数据的飞机涡轮机发动机,并由两个主要部分组成。在第一部分中,发动机排气温度(EGT)之间的关系作为发动机的主发动机健康监测标准和其他发动机的其他操作和环境参数的建模是使用数据驱动的模型进行建模的。在第二部分中,创建了一种数据集,包括EGT残差,即,系统的实际EGT与发动机的健康状况中的发达模型估计的EGT之间的差异。最后,通过由健康状况EGT残差数据集训练的单级支持向量机检测到每个飞行中发生的故障。结果表明,该算法是一种检测飞机发动机条件和检测故障的有效方法,无需对飞机发动机的内部特性进行技术知识。

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