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Using big-data and surface fitting to improve aircraft safety through the study of relationships and anomalies.

机译:通过研究关系和异常情况,使用大数据和表面拟合来提高飞机安全性。

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摘要

The aim of this paper is to assess the utility of a Big-Data approach to fault detection for ‘systems of systems’, utilising the derivation of empiricaludrelationships identified through surface fitting. So-called Big-Data Integrated Vehicle Health Management systems do currently exist, but tendudto analyse the health of vehicle systems based on the behaviour of individual sensors and readings. This paper proposes that it is possible toudconsider vehicle systems with a ‘macro’ approach and identify relationships between key variables which may not be initially apparent. Usedudin this paper is the open source flight simulation software FlightGear which has previously been assessed for the development of fault detectionudsystems with positive results. The relationships found can be combined into a model of expected results against which real-time data is tested.udSurface fitting and the assessment of ‘goodness of fit’ is used to identify these relationships. It is proposed that this technique need not be limitedudto fault detection in vehicle systems but is also applicable to other vital systems which require redundancy and constant health analysis. Thisudpaper concludes that this method is a viable approach and that relationships can be successfully identified for fault detection purposes.
机译:本文的目的是利用通过表面拟合确定的经验非关系的派生,评估大数据方法在“系统系统”故障检测中的实用性。当前确实存在所谓的大数据集成车辆健康管理系统,但是往往会基于各个传感器的行为和读数来分析车辆系统的健康状况。本文提出,可以采用“宏观”方法来考虑车辆系统,并识别最初可能并不明显的关键变量之间的关系。本文使用的是开放源代码的飞行模拟软件FlightGear,之前已对其进行评估,以开发故障检测 udsystem,并取得了积极的成果。可以将找到的关系合并到预期结果模型中,并根据该模型测试实时数据。 ud表面拟合和“拟合优度”评估用于识别这些关系。提出该技术不必局限于车辆系统中的故障检测,而是还可以应用于需要冗余和持续健康分析的其他重要系统。本白皮书得出的结论是,此方法是可行的方法,并且可以成功识别关系以进行故障检测。

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