Open Access
Open access
Strojnicky Casopis, volume 70, issue 2, pages 11-20

Machine Learning Algorithm for Surface Quality Analysis of Friction Stir Welded Joint

Publication typeJournal Article
Publication date2020-11-01
scimago Q3
SJR0.335
CiteScore2.0
Impact factor
ISSN00392472, 24505471
Mechanical Engineering
Abstract

The Friction Stir Welding process usually produces weld members of good quality compared to composite weld made with a standard welding process. However, there is a possibility of the formation of various defects if the input parameters are not properly selected. In the recent case study, an image-based feature recognition system using the Fourier conversion method which is a computer visual recognition tool is developed. Five types of filters like Ideal Filter, Butterworth Filter, Low Filter, Gaussian Filter, and High Pass Filter. The results showed that the high pass filter has more ability to detect surface defects compared to the other four filters. It has also been observed that the Ideal filter has a lot of distortions compared to the Gaussian Filter and the Butterworth Filter.

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