ARFA:使用进化聚类、分类器和递归密度估计的自动实时飞行数据分析

Denis Kolev, P. Angelov, Garegin Markarian, M. Suvorov, S. Lysanov
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引用次数: 14

摘要

本文提出并研究了一种自主实时飞行数据分析的新方法。异常检测基于递归密度估计(RDE),故障识别基于最近引入的进化自学习分类器。本文首先对目前使用的FDA方法和工具进行了简要的批判性分析。然后对故障检测和识别问题进行了形式化描述。实时和在线(飞行中)处理数据的能力的重要性直接关系到效率和安全。因此,本文的研究重点是计算精简且适合于在线运行模式的递归方法。ARFA(自动实时FDA)的新概念随后被应用于来自俄罗斯和美国制造的飞机的真实飞行数据。对结果进行了比较和分析。本文指出了这种新方法和算法的优点,以及当前的局限性和未来的研究方向,并概述了未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ARFA: Automated real-time flight data analysis using evolving clustering, classifiers and recursive density estimation
In this paper a novel approach to autonomous real time flight data analysis (FDA) is proposed and investigated. The anomaly detection is based on recursive density estimation (RDE) and the fault identification is based on the evolving self-learning classifiers introduced recently. The paper starts with a brief critical analysis of the currently used FDA methods and tools. Then the problems of fault detection (FD) and identification are described formally. The importance of the ability to process the data in real time and on-line (in flight) is directly related to the efficiency and safety. Therefore, in this paper the focus is on the recursive approaches which are computationally lean and suitable for on-line mode of operation. The novel concept of ARFA (Automated Real-time FDA) is then applied to real flight data from Russian and USA made aircrafts. The results are compared and analyzed. Both, advantages that this novel methodology and algorithms offer as well as the current limitations and future directions of research are pointed out and future work outlined.
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