Abstract
This research aims to detect and analyze critical internal and surface defects in metal components manufactured by powder bed fusion of metals using a laser beam (PBF-LB/M). The aim is to assess their impact on the fatigue behavior. Therefore, a combination of methods, including image processing of micro-computed tomography ((Formula presented.) CT) scans, fatigue testing, and machine learning, was applied. A workflow was established to contribute to the nondestructive assessment of component quality and mechanical properties. Additionally, this study illustrates the application of machine learning to address a classification problem, specifically the categorization of pores into gas pores and lack of fusion pores. Although it was shown that internal defects exhibited a reduced impact on fatigue behavior compared with surface defects, it was noted that surface defects exert a higher influence on fatigue behavior. A machine learning algorithm was developed to predict the fatigue life using surface defect features as input parameters.
Original language | English |
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Pages (from-to) | 3392-3407 |
Number of pages | 16 |
Journal | Fatigue and Fracture of Engineering Materials and Structures |
Volume | 47 |
Issue number | 9 |
DOIs | |
State | Published - Sep 2024 |
Keywords
- fatigue
- machine learning
- micro-computed tomography
- powder bed fusion of metals using a laser beam
- quality assurance