Fault Detection for Aircraft Fuel System with Neural Network

Nithya Subramanian, Hongmei He, I. Jennions
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引用次数: 3

Abstract

The technological advances in the aircraft industry in the last decade have increased the complexity of aircraft systems. This, in turn, makes the fault detection, diagnosis and modification/ repair processes more difficult. The presence of a fault within a system can result in changes to system function, reduce system performance and cause operational downtime. Due to this reason Condition Based Maintenance (CBM) which predicts the state of the component on based upon data gathered is widely used in aircraft MRO industries. CBM uses diagnostics and prognostics models to make decisions on appropriates maintenance actions based upon the remaining used life (RUL) of the components. In this research, we applied a Neural Network model to solve the fault detection problem, and the experimental results demonstrated the neural network model can obtain excellent performance. Fault diagnosis is a more complicated problem, and it requires diagnosing the type of fault. Therefore, fault diagnosis becomes a classification problem. More importantly, the fault state of a fuel system may relate to the previous state of the fuel system. Therefore, a Recurrent Neural Network model could be developed for fault diagnosis.
基于神经网络的飞机燃油系统故障检测
在过去十年中,飞机工业的技术进步增加了飞机系统的复杂性。这反过来又使故障检测、诊断和修改/修理过程更加困难。系统中出现故障可能导致系统功能的变化,降低系统性能并导致操作停机。基于状态的维修(CBM)是一种基于收集到的数据来预测部件状态的维修方法,在飞机MRO行业中得到了广泛的应用。CBM使用诊断和预测模型,根据组件的剩余使用寿命(RUL)对适当的维护操作做出决策。在本研究中,我们应用神经网络模型来解决故障检测问题,实验结果表明,神经网络模型可以获得良好的性能。故障诊断是一个比较复杂的问题,它需要对故障的类型进行诊断。因此,故障诊断成为一个分类问题。更重要的是,燃油系统的故障状态可能与燃油系统先前的状态有关。因此,可以建立一种用于故障诊断的递归神经网络模型。
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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