基于分布式飞行记录数据的飞机健康管理异常检测

Xuchuan Zhou, Yong Zhong, Liping Cai
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引用次数: 2

摘要

从tb级的飞行记录数据中检测异常行为已经成为许多飞机健康管理系统的关键组成部分。通常,由于数据的专有性质,从不同飞机收集的飞行记录数据不能直接汇总用于异常分析。本文提出了一种新的通用框架,用于无法直接合并的分布式数据源异常检测。在该方法中,首先将异常检测算法应用于单个飞机的数据,然后将其结果进行组合。研究了11种半监督异常检测算法,以及4种结合异常检测结果的方法。我们在模拟数据上进行的实验表明,特定的异常检测算法和组合方法比其他方法更适合分布式异常检测任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection from Distributed Flight Record Data for Aircraft Health Management
Detecting anomalous behavior from terabytes of flight record data has emerged as a crucial component for many systems for Aircraft Health Management. Very often, flight record data collected from various aircraft cannot be directly aggregated for anomaly analysis due to the proprietary nature of the data. This paper proposes a novel general framework for anomaly detection from distributed data sources that cannot be directly merged. In the proposed method, anomaly detection algorithm is first applied to data from individual aircraft and then their results are combined. We investigated eleven semi supervised anomaly detection algorithms, as well as four methods for combining anomaly detection results. Our experiments performed on simulated data have shown that particular anomaly detection algorithms and combining methods are more suitable for the task of distributed anomaly detection than others.
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