Title of article :
Machine vision in detection of corrosion products on SO2 exposed ENIG surface and an in situ analysis of the corrosion factors
Author/Authors :
K. Kantola، نويسنده , , R. Tenno، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
Corrosion resistivity is an important property in printed circuit boards manufacturing where the electroless nickel immersion gold (ENIG) is a commonly used surface finish. The corrosion resistivity of the surface is tested with a sulphur dioxide (SO2) test which imitates the influence of atmospheric corrosion. The test result is analyzed manually by vision inspection, which is unsuitable for mass production. The result is also qualitative (failed or passed) and therefore the corrosion severity is impossible to analyze and further mathematical analysis is hard to conduct. In this paper, a new machine vision based corrosion evaluation algorithm is developed for quantitative and objective analyzing of the SO2 test result. The algorithm produces automatically the same data as the manual method and, in addition, also new continuous corrosion state estimates. The produced data are further used for correlation analysis in which the relations between the parameters of the ENIG process and the corrosion resistivity of the surface are studied and the algorithm is verified.
Keywords :
Corrosion detection , PCB manufacturing , ENIG-surface finish , Quality control
Journal title :
Journal of Materials Processing Technology
Journal title :
Journal of Materials Processing Technology