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Aircraft air data system fault detection and reconstruction scheme design

机译:飞机空气数据系统故障检测与重建方案设计

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Purpose The purpose of this study is to detect and reconstruct a fault in pitot probe and static ports, which are components of the air data system in commercial aircrafts, without false alarm and no need for pitot-static measurements. In this way, flight crew will be prevented from flying according to incorrect data and aircraft accidents that may occur will be prevented. Design/methodology/approach Real flight data collected from a local airline was used to design the relevant system. Correlation analysis was performed to select the data related to the airspeed and altitude. Fault detection and reconstruction were carried out by using adaptive neural fuzzy inference system and artificial neural networks, which are machine learning methods. MATLAB software was used for all the calculations. Findings No false alarm was detected when the fault test following the fault modeling was carried out at 0-2 s range by filtering the residual signal. When the fault was detected, fault reconstruction process was initiated so that system output could be achieved according to estimated sensor data. Practical implications The presented alternative analytical redundant airspeed and altitude calculation scheme could be used when the pitot-static system contains any fault condition. Originality/value Instead of using the methods based on hardware redundancy, the authors designed a new system within the scope of this study. Fault situations that may occur in pitot probes and static ports are modeled and different fault scenarios that can be encountered in all flight phases have been examined.
机译:目的本研究的目的是检测和重建皮托探针和静态端口的故障,这些故障是商用飞机中的空气数据系统的组件,而没有误报,不需要静态测量。通过这种方式,将防止航班机组人员根据可能发生的不正确的数据和飞机事故来防止飞行。设计/方法/方法从本地航空公司收集的实际飞行数据用于设计相关系统。进行相关分析以选择与空速和高度有关的数据。使用自适应神经模糊推理系统和人工神经网络进行故障检测和重建,这是机器学习方法。 MATLAB软件用于所有计算。当通过过滤残余信号时,在发生故障建模后的故障测试时未检测到错误警报。当检测到故障时,启动故障重建过程,以便根据估计的传感器数据来实现系统输出。实际意义,当皮特 - 静态系统包含任何故障条件时,可以使用所呈现的替代分析冗余空速和高度计算方案。作者在本研究范围内设计了一个新系统的原始性/值而不是使用基于硬件冗余的方法。在皮托探针和静态端口中可能出现的故障情况是模型的,并且已经检查了所有飞行阶段中可以遇到的不同故障场景。

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