基于动态贝叶斯网络的机载电子设备故障诊断

Pub Date : 2023-12-15 DOI:10.4018/ijiit.335033
Julan Chen, Wengao Qian
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引用次数: 0

摘要

随着航空航天工业的快速发展,机载电子设备的结构也变得越来越复杂,这在一定程度上增加了机载电子设备故障检测和维护的难度。传统的人工故障诊断方法已不能完全满足机载电子设备的诊断需求。因此,本章采用动态贝叶斯网络对机载电子设备进行故障诊断。基于动态贝叶斯网络的机载电子设备故障诊断方法的基本思路是基于机载电子设备的历史故障数据进行数据挖掘,获得机载电子设备的故障症状和训练数据。对于非必要的故障症状,引入粗糙集理论减少其属性,得到最简单的属性集,从而简化网络模型。
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Fault Diagnosis of Airborne Electronic Equipment Based on Dynamic Bayesian Networks
With the rapid development of the aerospace industry, the structure of airborne electronic equipment has become more complex, which to some extent increases the difficulty of fault detection and maintenance of airborne electronic equipment. Traditional manual fault diagnosis methods can no longer fully meet the diagnostic needs of airborne electronic equipment. Therefore, this chapter uses dynamic Bayesian network to diagnose the faults of airborne electronic equipment. The basic idea of using a dynamic Bayesian network-based fault diagnosis method for airborne electronic devices is to mine data based on historical fault data of airborne electronic devices, and obtain fault symptoms and training data of airborne electronic devices. For non-essential fault symptoms, rough set theory was introduced to reduce their attributes and obtain the simplest attribute set, thereby simplifying the network model.
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