新型航空风险评估:Kohonen自组织地图在识别具有更大关联风险的巴西飞机中的性能

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引用次数: 1

摘要

本文的目的是提出一种新的评估航空风险的方法,使用Kohonen自组织地图(SOM)的配置来识别更容易发生航空事故的巴西飞机和最危险的巴西飞机。根据DOC 9859,所描述的技术被归类为管理航空风险的预测技术,既可以用于航空事故/事件的预防和调查,也可以用于保险业。利用这种技术,可以确定147架巴西飞机发生航空事故的相关概率最高,180架飞机的相关风险最高。五年后,航空事故/事件的比例分别为34%和27%。这项技术的应用可以帮助航空界实现确定下一次航空事故和/或事件发生的时间、地点和内容的目标。本工作的另一个方面是证明巴西国家民用航空机构收集的数据可用于实施民用航空安全管理的预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New Type of Aeronautical Risk Assessment: Performance of Kohonen SelfOrganizing Maps in Identifying Brazilian Aircraft with Greater Associated Risks
The purpose of this paper is to present a new way of assessing aeronautical risk using a configuration of Kohonen Self-Organizing Maps (SOM) to identify the Brazilian aircrafts more likely to be involved in aeronautical accidents and the riskiest Brazilian aircrafts. The technique described is classified as predictive for managing aeronautical risks, according to DOC 9859, and can be used both in the context of prevention and investigation of aeronautical accidents/incidents, as well as in the context of the insurance industry. Using this technique, it was possible to identify the 147 Brazilian aircraft with the highest associated probabilities of occurrence of aeronautical accidents, and the 180 with the highest associated risks. Five years after this identification, the respective percentages of aeronautical accidents/incidents were 34% and 27%. The application of this technique can help achieve the objective of the aeronautical community in determining what, where, and when the next aeronautical accidents and/or incidents will occur. Another aspect of the present work is to demonstrate that data collected by the national civil aviation agency in Brazil can be used to implement a predictive methodology for the management of safety in civil aviation.
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