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WELD quality evaluation with AI and Digitalization (WELD-AID)

Reference number
Coordinator Winteria AB
Funding from Vinnova SEK 6 386 000
Project duration September 2024 - August 2027
Status Ongoing
Venture Advanced digitalization - Enabling technologies
Call AI for advanced digitalization 2024

Purpose and goal

The purpose of the WELD-AID project is to transform the quality assurance of welded structures by integrating artificial intelligence and digitalization. The goal is to strengthen Sweden´s position as a global leader in the design and manufacturing of welded products. The project focuses on improving both the predictive accuracy of the lifespan of welded structures and the ability to classify welds and imperfections using AI.

Expected effects and result

The WELD-AID project will enable automated inspection and classification of various welds, providing direct feedback on fatigue quality during quality inspection. Additionally, it will offer insights into how process parameters impact the final quality. By utilizing advanced neural networks, the welding process will be optimized, improving predictive accuracy and efficiency in weld quality assurance, and enhancing Sweden´s global industrial competitiveness.

Planned approach and implementation

The WELD-AID project aims to enhance the quality assurance of welded structures through AI-based solutions in three areas: developing methods for detecting joints and imperfections using deep learning and data augmentation, improving fatigue life predictions of welds through digital twins and AI, and developing an autonomous welding process control system that combines reinforcement learning with traditional optimization techniques.

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

Last updated 17 September 2024

Reference number 2024-01442