基于案例推理的航空事故预测与分析

M. Zubair, M. J. Khan, M. Awais
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引用次数: 11

摘要

预测即将发生的事件在生活的许多学科中都起着至关重要的作用。航空事故和事故就是其中一个关键事件。现有的文学学习方法有很多。基于案例的推理(Case-based reasoning, CBR)是人工智能中一种非常有效地利用过去经验的惰性学习技术。当无法获得精确的信息,或者可用的信息结构不合理时,这种方法很有效。本文提出将CBR应用于航空事故和事件的预测。在该框架中,我们描述了检索策略、求解算法和修订机制。我们已经实施了关于航空事故、事故和坠机数据的建议。结果表明,使用该框架可以实现高达87%的准确率。
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Prediction and Analysis of Air Incidents and Accidents Using Case-Based Reasoning
Prediction of upcoming events has very critical role in many disciplines of life. Air accidents and incidents are one of such critical events. There are many existing learning methods in literature. Case-based reasoning (CBR) is a lazy learning technique of artificial intelligence which exploits past experience very efficiently. It works well when precise information is not available and available information is not well-structured. In this paper, we propose to apply CBR for prediction of air accidents and incidents. In the proposed framework, we describe the retrieval strategies, solution algorithms and revision mechanism. We have implemented the proposed idea for the data of air accidents, incidents and crashes. The results show that up to 87% accuracy can be achieved using the proposed framework.
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