首页> 外文会议>2003 ASME(American Society of Mechanical Engineers) Turbo Expo; Jun 16-19, 2003; Atlanta, Georgia >FAULT DIAGNOSIS OF A TWO SPOOL TURBO-FAN ENGINE USING TRANSIENT DATA: A GENETIC ALGORITHM APPROACH
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FAULT DIAGNOSIS OF A TWO SPOOL TURBO-FAN ENGINE USING TRANSIENT DATA: A GENETIC ALGORITHM APPROACH

机译:基于暂态数据的两种涡流涡轮风扇发动机故障诊断:遗传算法

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Traditionally engine fault diagnosis has been performed at steady state conditions. There are several problems which can only be detected by transient data analysis like bearing fault, some control problems etc.. In addition, gas turbine performance deviation due to a component fault is more likely to be magnified during transients, when compared with the same parameter deviations at steady states. The specific approach used in this paper is to compare model-based information with measured data obtained from the engine during a slam acceleration. The measured transient data(from actual engine) is compared with a set of simulated data from the engine transient model, under similar operating conditions and known faults through a Cumulative Deviation. The Cumulative Deviations obtained from the comparisons are minimized for the best match using Genetic Algorithm. The Genetic Algorithm has been tailored to use real coding method and to meet the requirements of the new procedure. The paper describes the application of the approach to a 2-spool turbofan engine and discusses the preliminary studies conducted.
机译:传统上,发动机故障诊断是在稳态条件下执行的。存在一些只能通过瞬态数据分析检测到的问题,例如轴承故障,某些控制问题等。此外,与相同参数相比,在瞬态过程中,由组件故障引起的燃气轮机性能偏差更容易被放大。稳态下的偏差。本文中使用的特定方法是将基于模型的信息与猛烈加速期间从发动机获得的测量数据进行比较。在相似的工况和已知故障下,通过累积偏差将测得的瞬态数据(来自实际发动机)与一组来自发动机瞬态模型的模拟数据进行比较。使用遗传算法,将从比较中获得的累积偏差最小化以实现最佳匹配。遗传算法已经过量身定制,可以使用实际编码方法并满足新程序的要求。本文介绍了该方法在2轴涡扇发动机中的应用,并讨论了进行的初步研究。

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