Transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing

Abstract Metal additive manufacturing (MAM) provides remarkable design and component geometry freedom over various materials. One of the most recent MAM methods is the wire-arc additive manufacturing (WAAM) technique, which provides a higher deposition rate than other methods. This method also suffe...

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Main Authors: Mohammad Keshmiri, Shirin Dehgahi, Abdullah Mohiuddin, Ahmed J. Qureshi
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-04125-x
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author Mohammad Keshmiri
Shirin Dehgahi
Abdullah Mohiuddin
Ahmed J. Qureshi
author_facet Mohammad Keshmiri
Shirin Dehgahi
Abdullah Mohiuddin
Ahmed J. Qureshi
author_sort Mohammad Keshmiri
collection DOAJ
description Abstract Metal additive manufacturing (MAM) provides remarkable design and component geometry freedom over various materials. One of the most recent MAM methods is the wire-arc additive manufacturing (WAAM) technique, which provides a higher deposition rate than other methods. This method also suffered from heterogeneity in location-based thermal profiles, leading to spatial variation in the properties of as-built mechanical properties, which become more complicated in the manufacturing design and process of large parts. To address this, we developed a data-driven spatio-temporal model based on transformer architecture to predict the location-dependent mechanical properties based on the thermal history of fabricated parts with multiple contours. The framework enables the dynamic emissivity calculation of the part for various temperatures and layer ranges to reduce the error of thermal history acquisition. We systematically compared the proposed approach’s performance with other machine learning methods. The results demonstrate that the framework achieves good prediction capabilities using a small dataset. It provides a state-of-the-art methodology for predicting the spatial and temporal evolution of mechanical properties leveraging the transformer architecture. Finally, for model prediction interpretation, we investigated the location-aware morphology with various thermal profiles and mechanical properties, which allowed us to explain the reason behind each prediction.
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spelling doaj-art-76dfdd2d7f064667a6759ee69d3ca69e2025-08-20T03:37:22ZengNature PortfolioScientific Reports2045-23222025-07-0115111910.1038/s41598-025-04125-xTransformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturingMohammad Keshmiri0Shirin Dehgahi1Abdullah Mohiuddin2Ahmed J. Qureshi3Mechanical Engineering Department, University of AlbertaMechanical Engineering Department, University of AlbertaMechanical Engineering Department, University of AlbertaMechanical Engineering Department, University of AlbertaAbstract Metal additive manufacturing (MAM) provides remarkable design and component geometry freedom over various materials. One of the most recent MAM methods is the wire-arc additive manufacturing (WAAM) technique, which provides a higher deposition rate than other methods. This method also suffered from heterogeneity in location-based thermal profiles, leading to spatial variation in the properties of as-built mechanical properties, which become more complicated in the manufacturing design and process of large parts. To address this, we developed a data-driven spatio-temporal model based on transformer architecture to predict the location-dependent mechanical properties based on the thermal history of fabricated parts with multiple contours. The framework enables the dynamic emissivity calculation of the part for various temperatures and layer ranges to reduce the error of thermal history acquisition. We systematically compared the proposed approach’s performance with other machine learning methods. The results demonstrate that the framework achieves good prediction capabilities using a small dataset. It provides a state-of-the-art methodology for predicting the spatial and temporal evolution of mechanical properties leveraging the transformer architecture. Finally, for model prediction interpretation, we investigated the location-aware morphology with various thermal profiles and mechanical properties, which allowed us to explain the reason behind each prediction.https://doi.org/10.1038/s41598-025-04125-xMetal additive manufacturingMachine learningMultivariate time seriesTransformerThermal historySpatio-temporal
spellingShingle Mohammad Keshmiri
Shirin Dehgahi
Abdullah Mohiuddin
Ahmed J. Qureshi
Transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing
Scientific Reports
Metal additive manufacturing
Machine learning
Multivariate time series
Transformer
Thermal history
Spatio-temporal
title Transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing
title_full Transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing
title_fullStr Transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing
title_full_unstemmed Transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing
title_short Transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing
title_sort transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing
topic Metal additive manufacturing
Machine learning
Multivariate time series
Transformer
Thermal history
Spatio-temporal
url https://doi.org/10.1038/s41598-025-04125-x
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