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AM Intelligence - A Platform for data driven defect detection in Additive manufacturing

Reference number
Coordinator Interspectral AB
Funding from Vinnova SEK 2 600 000
Project duration January 2023 - June 2024
Status Completed
Venture Advanced digitalization - Enabling technologies
Call Advanced and innovative digitalization 2022

Important results from the project

** Denna text är maskinöversatt ** Additive manufacturing (AM), which is more commonly referred to as "3D printing", is revolutionizing the way industry develops, manufactures and repairs its products. In "AM Intelligence”" we have addressed one of the most important challenges in AM, quality assurance. We have developed an automated defect detection platform that can be used for quality assurance in metal AM. Using AI, defects in a manufactured component can be automatically located and classified, users can then analyze the results presented in a powerful visualization tool.

Expected long term effects

** Denna text är maskinöversatt ** Within the framework of AM Explorer, we have achieved three important results: 1) a technical demonstrator (TRL 7), 2) new knowledge in AI and automatic defect detection, and 3) a new product. The results have been evaluated in industrial production environments, where users have already started to save significant time in quality assurance work. We estimate that the costs of quality assurance can be reduced by up to 75%.

Approach and implementation

** Denna text är maskinöversatt ** The project has been carried out in collaboration between AM FoU-företaget AMEXCI and the visualization and analysis company Interspectral. The project has been implemented in a number of different work packages which together form a platform.

External links

The project description has been provided by the project members themselves and the text has not been looked at by our editors.

Last updated 30 August 2024

Reference number 2022-03016