ZENG Haolin, FAN Chenglei, GUO Wei, et al. Research Progress on Cleanliness Monitoring Systems and Evaluation Methodologies in Laser Cleaning[J]. Aeronautical Manufacturing Technology, 2026, 69(4).
DOI:
ZENG Haolin, FAN Chenglei, GUO Wei, et al. Research Progress on Cleanliness Monitoring Systems and Evaluation Methodologies in Laser Cleaning[J]. Aeronautical Manufacturing Technology, 2026, 69(4). DOI: 10.16080/j.issn1671-833x.25010148.
Research Progress on Cleanliness Monitoring Systems and Evaluation Methodologies in Laser Cleaning
the detection methods and evaluation systems for material surface cleanliness after laser cleaning are systematically reviewed. These encompass various online detection techniques such as laser-induced breakdown spectroscopy (LIBS)
fluorescence spectroscopy
reflectance spectroscopy
acoustic signal analysis
and image recognition
as well as offline methods like wettability testing
surface morphology observation
and elemental analysis. The research finds that these diverse methods can effectively identify the characteristic stages of insufficient cleaning
complete cleaning
and excessive cleaning during the cleaning process
with distinct signal features reflecting the evolution of the cleaning state. The collaborative analysis of multi-source detection information aids in enhancing the accuracy of state recognition and process monitoring. At present
there are differences among these methods in terms of response mechanisms
evaluation dimensions
and application scopes. Techniques such as LIBS
spectroscopy
and acoustic signal analysis are more suited for laboratory conditions
whereas image acquisition and analysis
as well as roughness and wettability assessments
are more practical for on-site industrial monitoring. Each detection method yields distinct results with its own characteristics. Future research can further explore areas such as multi-modal integration
cross-scale modeling
and the establishment of standardized systems
thereby advancing laser cleaning quality detection towards higher precision
intelligence
and engineering applicability. This progression will help meet the technical demands for surface cleanliness control in aerospace manufacturing and other advanced industrial fields.