Doctoral degree
国防科学技术大学
中国人民解放军国防科学技术大学
Business Address:民航学院办公楼1103房间
E-Mail:
Affiliation of Author(s):民航学院
Journal:Trans. Nanjing Univ. Aero. Astro.
Abstract:Safety is the foundation of sustainable development in civil aviation. Although catastrophic accidents are rare, indicators of potential incidents and unsafe events frequently materialize. Therefore, a history of unsafe data are considered in predicting safety risks. A deep learning method is adopted for extracting reactions in safety risks. The deep neural network (DNN) model for safety risk prediction is shown to extract complex data characteristics better than a shallow network model. Using extended unsafe data and monthly risk indices, hidden layers and iterations are determined. The effectiveness of DNN is also revealed in comparison with the traditional neural network. Through early risk detection using the method in the paper, airlines and the government can mitigate potential risk and take proactive measures to improve civil aviation safety. © 2019, Editorial Department of Transactions of NUAA. All right reserved.
ISSN No.:1005-1120
Translation or Not:no
Date of Publication:2019-04-01
Co-author:Ni, Xiaomei,Che, Changchang
Correspondence Author:wanghuawei