Development of a machine learning model for predicting abnormalities of commercial airplanes

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引用次数: 0

Abstract

Airplanes are a social necessity for movement of humans, goods, and other. They are generally safe modes of transportation; however, incidents and accidents occasionally occur. To prevent aviation accidents, it is necessary to develop a machine-learning model to detect and predict commercial flights using automatic dependent surveillance–broadcast data. This study combined data-quality detection, anomaly detection, and abnormality-classification-model development. The research methodology involved the following stages: problem statement, data selection and labeling, prediction-model development, deployment, and testing. The data labeling process was based on the rules framed by the international civil aviation organization for commercial, jet-engine flights and validated by expert commercial pilots. The results showed that the best prediction model, the quadratic-discriminant-analysis, was 93% accurate, indicating a “good fit”. Moreover, the model’s area-under-the-curve results for abnormal and normal detection were 0.97 and 0.96, respectively, thus confirming its “good fit”.

开发用于预测商用飞机异常的机器学习模型
飞机是人员、货物和其他物品运输的社会必需品。飞机通常是安全的运输方式,但偶尔也会发生事故和意外。为了防止航空事故的发生,有必要开发一种机器学习模型,利用自动依赖监视广播数据来检测和预测商业航班。本研究结合了数据质量检测、异常检测和异常分类模型开发。研究方法包括以下几个阶段:问题陈述、数据选择和标注、预测模型开发、部署和测试。数据标注过程基于国际民用航空组织为商业喷气式发动机航班制定的规则,并经过商业飞行员专家的验证。结果表明,最佳预测模型(二次判别分析)的准确率为 93%,表明 "拟合良好"。此外,该模型在异常和正常检测方面的曲线下面积结果分别为 0.97 和 0.96,从而证实了其 "良好拟合"。
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