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Aircraft anomaly detection using algorithmic model and data model trained on FOQA data

机译:使用算法模型和基于FOQA数据训练的数据模型进行飞机异常检测

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Two models of anomaly detection are put to use in detecting anomalies in aircraft operation. Self-Organizing Map Neural Network (SOM NN) is used from the culture of algorithmic modeling and One-Class Support Vector Machine (SVM) is used from the culture of data modeling. The goal of the research is to find anomalies within the data of aircraft operation or otherwise known as Flight Operations Quality Assurance (FOQA) data, and to find out which model performs better. SOM NN found 8800 data points of anomalies over 69 flights and One-Class SVM found 40392 data points of anomalies over 651 flights. The anomalies are divided into three categories: performance anomaly, sensor anomaly, and miscellaneous anomaly, each happened because of different causes. It is concluded that both models could detect anomalies within FOQA data and the One-Class SVM outperforms SOM NN in number of anomalies found, however in runtime length, SOM NN performs better, the best choice of model is then concluded according to computing resource availability since SOM NN could still be improved without an expensive resource compared to One-Class SVM.
机译:两种异常检测模型用于检测飞机运行中的异常。从算法建模的文化中使用自组织地图神经网络(SOM NN),从数据建模的文化中使用一类支持向量机(SVM)。该研究的目的是在飞机运行数据或其他已知的飞行运行质量保证(FOQA)数据中查找异常,并找出哪种模型性能更好。 SOM NN在69个航班中发现了8800个异常数据点,One-Class SVM在651个航班中发现了40392个异常数据点。异常分为三类:性能异常,传感器异常和其他异常,每种异常均是由不同的原因引起的。结论是,两个模型都可以检测到FOQA数据中的异常,并且一类SVM在发现的异常数量上胜过SOM NN,但是在运行时长度上,SOM NN表现更好,然后根据计算资源的可用性得出模型的最佳选择因为与One-Class SVM相比,在没有昂贵资源的情况下仍可以改进SOM NN。

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