异常检测
计算机科学
数据挖掘
异常(物理)
数据类型
异常
数据建模
人工智能
数据质量
工程类
数据库
心理学
社会心理学
公制(单位)
运营管理
物理
程序设计语言
凝聚态物理
作者
Mingjun Wang,Chuitian Rong,Huabo Sun
标识
DOI:10.1109/iccasit58768.2023.10351536
摘要
QAR data serves as a critical data foundation for flight quality assessment, accident investigation and maintenance management. However, raw QAR data contain various types of anomalies caused by sensor faults or abnormal flight operations. Therefore, anomaly detection from QAR data plays important roles in mining the cause of abnormality and providing a guarantee for flight safety. Although, there are several related works focusing on anomaly detection for sensor data of different industries, they cannot get the same high performance on different type of anomalies. Further more, due to the peculiar features of QAR data, the existing methods cannot performs as well as on common sensor data. Therefore, there is a need to propose a generic anomaly detection algorithm for QAR data to detect different type of anomalies efficiently in one time. In this work, we propose a general anomaly detection method, which can effectively capture complex spatial-temporal information in QAR data. The proposed method can be applied to detect multiple types of anomalies using one deep neural model. Experiments are conducted on different types of anomaly datasets. The experimental results show that the proposed new method can effectively detect multiple types of anomalies in QAR data with higher performance compared with existing methods.
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