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Using machine learning methods in airline flight data monitoring to generate new operational safety knowledge from existing data

机译:使用机器学习方法在航空公司飞行数据监控中,从现有数据生成新的操作安全知识

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摘要

The aim of this work is to investigate the possibility of using machine learning (ML) methods in order to generate novel, safety-relevant knowledge from existing flight data. Airlines routinely generate vast amounts of flight data from routine monitoring, but the concept of extracting safety knowledge from this data is still based on detecting exceedances of expert-defined thresholds. This system is conceptually unable to detect novel occurrences for which no such filters exist. ML techniques are able to close this gap.
机译:这项工作的目的是调查使用机器学习(ML)方法的可能性,以便从现有的航班数据生成新颖,安全相关知识。 航空公司常规产生来自常规监测的大量航班数据,但从该数据中提取安全知识的概念仍然基于检测专家定义的阈值的超标。 该系统在概念上无法检测到哪些滤波器存在的新颖出现。 ML技术能够缩短这种差距。

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