Corrosion & Protection, Volume. 46, Issue 7, 77(2025)

Research Progress and Development Trend of Surface Corrosion Detection Technology for Aviation Equipment

JIA Jinghuan*, SUN Zhihua, LUO Chen, and ZHAN Zhongwei
Author Affiliations
  • AECC Key Laboratory of Advanced Corrosion and Protection of Aeronautical Materials, AECC Beijing Institute of Aeronautical Materials, Beijing100095, China
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    JIA Jinghuan, SUN Zhihua, LUO Chen, ZHAN Zhongwei. Research Progress and Development Trend of Surface Corrosion Detection Technology for Aviation Equipment[J]. Corrosion & Protection, 2025, 46(7): 77

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    Paper Information

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    Received: May. 26, 2023

    Accepted: Aug. 21, 2025

    Published Online: Aug. 21, 2025

    The Author Email: JIA Jinghuan (jinghuanjia@163.com)

    DOI:10.11973/fsyfh230225

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