Visualising flight regimes using self-organising maps

O. Bektas
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Abstract

The purpose of this paper is to group the flight data phases based on the sensor readings that are most distinctive and to create a representation of the higher-dimensional input space as a two-dimensional cluster map. The research design includes a self-organising map framework that provides spatially organised representations of flight signal features and abstractions. Flight data are mapped on a topology-preserving organisation that describes the similarity of their content. The findings reveal that there is a significant correlation between monitored flight data signals and given flight data phases. In addition, the clusters of flight regimes can be determined and observed on the maps. This suggests that further flight data processing schemes can use the same data marking and mapping themes regarding flight phases when working on a regime basis. The contribution of the research is the grouping of real data flows produced by in-flight sensors for aircraft monitoring purposes, thus visualising the evolution of the signal monitored on a real aircraft.
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使用自组织地图可视化飞行制度
本文的目的是根据最具特色的传感器读数对飞行数据阶段进行分组,并将高维输入空间表示为二维聚类图。研究设计包括一个自组织地图框架,提供飞行信号特征和抽象的空间组织表示。飞行数据被映射到一个保持拓扑结构的组织中,该组织描述了它们内容的相似性。研究结果表明,在监测的飞行数据信号和给定的飞行数据阶段之间存在显著的相关性。此外,还可以在地图上确定和观察飞行状态的群集。这表明,进一步的飞行数据处理方案可以使用相同的数据标记和映射主题关于飞行阶段时,在一个制度的基础上工作。该研究的贡献在于将用于飞机监测的飞行传感器产生的真实数据流分组,从而使在真实飞机上监测的信号的演变可视化。
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