...
首页> 外文期刊>Procedia Computer Science >Towards a Semantic Knowledge Base for Competency-Based Training of Airline Pilots
【24h】

Towards a Semantic Knowledge Base for Competency-Based Training of Airline Pilots

机译:迈向航空公司飞行员培训的语义知识库

获取原文
           

摘要

The acquisition and maintenance of non-technical skills by the pilots are fundamental factors for the prevention of aviation accidents. The aviation authorities are promoting that air crew training be carried out through simulator sessions using scenarios specifically designed to develop and assess the global performance of pilots in such skills. When designing custom flight training scenarios, choosing the correct events and conditions from the myriad of possible combinations with respect to their potential utility in training specific competencies is a costly task that depends entirely on highly specialized expert knowledge. In this paper, we present EBTOnto, an OWL DL ontology that allows to formalize this knowledge and other useful data from real cases, laying the foundations for a semantic knowledge base of scenarios for airline pilots training. Previous advances in this matter and possible applications of this system are reviewed. EBTOnto is built on top of a source validated by experts, the Evidence-Based Training Implementation Guide by the International Air Transport Association, and then checked using an automatic reasoner and a database of 37,568 aviation safety incidents, extracted from the widely regarded Aviation Safety Reporting System by the U.S. National Aeronautics and Space Administration. The results suggest that it is possible to classify real aviation scenarios in terms of non-technical competencies and filter useful incident reports for design and enrichment of these training scenarios. EBTOnto opens up new possibilities for interoperability between incident databases and training organizations, and smoothes the path to represent, share and generate custom simulation training scenarios for pilots based on real data.
机译:飞行员的非技术技能的收购和维护是防止航空事故的基本因素。航空机构正在推广,通过专门设计的场景,通过模拟器会议进行空中机组培训,这些方案在这种技能中开发和评估飞行员的全球性能。在设计定制飞行培训方案时,在培训特定能力方面选择正确的活动组合的正确事件和条件是一个昂贵的任务,这取决于高度专业的专家知识。在本文中,我们展示了ebtonto,一种猫头鹰DL本体,允许从真实案例中正式化这一知识和其他有用的数据,为航空公司飞行员训练奠定了语义知识库的基础。以前的介绍在此事和可能的该系统的可能应用程序进行了审查。 Ebtonto建于专家验证的源头,由国际航空运输协会的循证培训实施​​指南,然后使用自动推理和37,568个航空安全事件的数据库检查,从广泛认为的航空安全报告中提取由美国国家航空航天局系统制度。结果表明,在非技术能力和过滤有用的事件报告方面,可以对设计和丰富这些培训情景进行分类。 Ebtonto开辟了事件数据库和培训组织之间的互操作性的新可能性,并将路径平滑为基于实际数据的飞行员分享,共享和生成自定义模拟培训方案。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号