摘要
为确保飞行区安全运行,收集1233条机场飞行区事件的数据,结合事故报告及相关规范文件,利用共现分析和加权矩阵,结合复杂网络理论,建立飞行区人因风险事件网络。使用Python软件对网络节点属性进行分析,并结合天气因素,评估各个节点的重要程度。研究结果表明,飞行区人因风险事件网络符合复杂网络的特征,并确定了对飞行区事件影响较大的人为因素风险节点。根据研究结果,应加强飞行机组人员对规章的学习和对重点人员的监控。
To ensure the safe operation of the flight area,a total of 1233 data on airport flight area incidents were collected,along with accident reports and relevant regulatory documents.By employing co-occurrence analysis and weighted matrices,combined with the theory of complex networks,a flight area human-factor risk factor network was established.The Python software was used to analyze the network node properties,and considering weather factors,the importance of each node was evaluated.The research findings indicate that the flight area human-factor risk network exhibits characteristics of a complex network,and identifies human-factor risk nodes that have significant impacts on flight area incidents.According to the results,it is suggested to strengthen the learning of regulations by flight crews and monitoring key personnel.
作者
崔宇婕
程小慷
CUI Yujie;CHENG Xiaokang(Airport College,Civil Aviation Flight University of China,Guanghan 618307,Sichuan,China)
出处
《科技和产业》
2023年第23期182-186,共5页
Science Technology and Industry
基金
中国民用航空飞行学院“大学生创新创业”项目(S202210624255)。
关键词
机场飞行区
人因风险
复杂网络
事件
aircraft movement area
human-factor risk
complex network
incident