Application, Utility and Acceptability of Data Analytics in Safety Risk Management of Airline Operations

Washington Mhangami, S. King, Dave Barry
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Abstract

One area the aviation industry is grappling with is the quantification of the probability of occurrence of safety incidents. Currently, aviation professionals involved in safety risk management mostly rely on collective experience to determine probability of incident occurrences and apply it to the International Civil Aviation Organisation (ICAO) matrix or equivalent to evaluate the risk. A number of limitations linked to the use of risk matrices will be explored in this paper. It is the aim of this paper to explore statistical methods that can be used to determine the probability of safety occurrences and come up with an algorithm that can be used by airlines using available safety data. The novelty of this research is that it combines the exploration of use of statistical techniques to quantitatively assess risk using Flight Data Monitoring (FDM) and other data, with acceptability of Safety Risk Management (SRM) data analytics by operational personnel. The paper also explores the contributory factors leading to the reluctance of operational personnel to use data analytics to inform their risk assessments despite the increasing availability of operational data and advancement in technology.
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数据分析在航空公司安全风险管理中的应用、效用和可接受性
航空业正在努力解决的一个问题是安全事故发生概率的量化。目前,参与安全风险管理的航空专业人员大多依靠集体经验来确定事件发生的概率,并将其应用于国际民航组织(ICAO)矩阵或等效矩阵来评估风险。本文将探讨与使用风险矩阵有关的一些限制。本文的目的是探索可用于确定安全事件概率的统计方法,并提出一种可由航空公司使用可用安全数据的算法。本研究的新颖之处在于,它结合了探索使用统计技术,利用飞行数据监测(FDM)和其他数据定量评估风险,以及操作人员对安全风险管理(SRM)数据分析的可接受性。本文还探讨了导致操作人员不愿使用数据分析来进行风险评估的因素,尽管操作数据的可用性越来越高,技术也在进步。
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