Fault Diagnosis Research on Aviation Aircraft

Authors

  • Zeyu Xu

DOI:

https://doi.org/10.54097/ebbde814

Keywords:

Aviation aircraft; Fault diagnosis; Data driven.

Abstract

With the development of modern aviation technology, how to ensure the stability of the air cargo process and how to ensure the safety of the aircraft has always been one of the important issues of concern to the air transport industry. During actual transportation, aircraft often lose control due to their own mechanical failures or system failures. In order to solve this problem, based on a comprehensive survey of relevant literature on aircraft fault diagnosis, a classification and introduction of related research was conducted based on different data-driven methods. This review is expected to provide a useful reference for research on aircraft fault diagnosis.

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References

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Published

27-04-2024

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Section

Articles

How to Cite

Xu, Z. (2024). Fault Diagnosis Research on Aviation Aircraft. Academic Journal of Science and Technology, 10(3), 163-166. https://doi.org/10.54097/ebbde814