Using Big-data and Surface Fitting to Improve Aircraft Safety Through the Study of Relationships and Anomalies
Author(s) -
Duncan Wooder,
Alan Purvis,
Richard McWilliam
Publication year - 2017
Publication title -
procedia cirp
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.683
H-Index - 65
ISSN - 2212-8271
DOI - 10.1016/j.procir.2016.10.126
Subject(s) - redundancy (engineering) , fault detection and isolation , data mining , big data , computer science , complex system , key (lock) , reliability engineering , engineering , artificial intelligence , computer security , actuator
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 empirical\udrelationships identified through surface fitting. So-called Big-Data Integrated Vehicle Health Management systems do currently exist, but tend\udto analyse the health of vehicle systems based on the behaviour of individual sensors and readings. This paper proposes that it is possible to\udconsider vehicle systems with a ‘macro’ approach and identify relationships between key variables which may not be initially apparent. Used\udin this paper is the open source flight simulation software FlightGear which has previously been assessed for the development of fault detection\udsystems 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 limited\udto fault detection in vehicle systems but is also applicable to other vital systems which require redundancy and constant health analysis. This\udpaper concludes that this method is a viable approach and that relationships can be successfully identified for fault detection purposes
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