Diagnostic of an Aircraft by Different Dynamics of Operating Conditions

Abdullah Al Mamun, Kamrul Islam Shahin, C. Simon, P. Weber
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Abstract

This paper proposes an Input-Output Hidden Markov Model (IOHMM) to describe how the diagnostic of aircraft gas turbine engines can be estimated under multiple operating conditions. The PHM data challenge 2008 is used to model the system under the uncertainties of model parameters, operating dynamics, and the initial health situation. In this paper, multiple inputs are considered respective to the operating conditions. The thermodynamic simulation model generated the data of all sensors as a function of variations of flow and the efficiency of the modules concerned. The exponential rate of flow variation and efficiency loss was established in each data set, starting at a randomly selected initial deterioration set point. Well- known algorithms dedicated to Hidden Markov Model (HMM) are adapted to train different versions of IOHMM with the operating conditions. Finally, the best version of the model based on the most appropriate operating conditions for the system operation is selected to perform the diagnostic of the engine. The proposed method is validated by the cross-validation method to provide confidence over the model performance.
飞机不同动力学工况的诊断
本文提出了一种输入-输出隐马尔可夫模型(IOHMM)来描述飞机燃气涡轮发动机在多种工况下的诊断估计。利用PHM数据挑战2008,在模型参数、运行动力学和初始健康状况不确定的情况下对系统进行建模。本文考虑了不同工况下的多个输入。热力学模拟模型生成了所有传感器的数据作为流量变化和相关模块效率的函数。在每个数据集中建立流量变化和效率损失的指数率,从随机选择的初始劣化设定点开始。隐马尔可夫模型(HMM)的知名算法可以根据不同的运行条件训练不同版本的隐马尔可夫模型。最后,根据最适合系统运行的工况,选择模型的最佳版本对发动机进行诊断。通过交叉验证方法对所提出的方法进行验证,以提供对模型性能的置信度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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