Aviation Safety Mandatory Report Topic Prediction Model using Latent Dirichlet Allocation (LDA)

Jun Hwan Kim, Hyunjin Paek, Sungjin Jeon, Young Jae Choi
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Abstract

Not only in aviation industry but also in other industries, safety data plays a key role to improve the level of safety performance. By analyzing safety data such as aviation safety report (text data), hazard can be identified and removed before it leads to a tragic accident. However, pre-processing of raw data (or natural language data) collected from each site should be carried out first to utilize proactive or predictive safety management system. As air traffic volume increases, the amount of data accumulated is also on the rise. Accordingly, there are clear limitation in analyzing data directly by manpower. In this paper, a topic prediction model for aviation safety mandatory report is proposed. In addition, the prediction accuracy of the proposed model was also verified using actual aviation safety mandatory report data. This research model is meaningful in that it not only effectively supports the current aviation safety mandatory report analysis work, but also can be applied to various data produced in the aviation safety field in the future.
基于潜狄利克雷分配(LDA)的航空安全强制报告主题预测模型
无论是航空业还是其他行业,安全数据都是提高安全绩效水平的关键。通过分析航空安全报告(文本数据)等安全数据,可以在危险导致悲惨事故之前识别和消除危险。但是,首先应该对从每个站点收集的原始数据(或自然语言数据)进行预处理,以利用主动或预测的安全管理系统。随着空中交通量的增加,积累的数据量也在增加。因此,直接用人力分析数据有明显的局限性。本文提出了航空安全强制报告的主题预测模型。此外,还利用实际航空安全强制报告数据验证了所提模型的预测精度。该研究模型不仅有效地支持了当前的航空安全强制性报告分析工作,而且可以应用于未来航空安全领域产生的各种数据,具有一定的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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