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  4. Gen-JEMA: enhanced explainability using generative joint embedding multimodal alignment for monitoring directed energy deposition
 
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2025
Journal Article
Title

Gen-JEMA: enhanced explainability using generative joint embedding multimodal alignment for monitoring directed energy deposition

Abstract
This work introduces Gen-JEMA, a generative approach based on joint embedding with multimodal alignment (JEMA), to enhance feature extraction in the embedding space and improve the explainability of its predictions. Gen-JEMA addresses these challenges by leveraging multimodal data, including multi-view images and metadata such as process parameters, to learn transferable semantic representations. Gen-JEMA enables more explainable and enriched predictions by learning a decoder from the embedding. This novel co-learning framework, tailored for directed energy deposition (DED), integrates multiple data sources to learn a unified data representation and predict melt pool images from the primary sensor. The proposed approach enables real-time process monitoring using only the primary modality, simplifying hardware requirements and reducing computational overhead. The effectiveness of Gen-JEMA for DED process monitoring was evaluated, focusing on its generalization to downstream tasks such as melt pool geometry prediction and the generation of external melt pool representations using off-axis sensor data. To generate these external representations, autoencoder (AE) and variational autoencoder (VAE) architectures were optimized using Bayesian optimization. The AE outperformed other approaches achieving a 38% improvement in melt pool geometry prediction compared to the baseline and 88% in data generation compared with the VAE. The proposed framework establishes the foundation for integrating multisensor data with metadata through a generative approach, enabling various downstream tasks within the DED domain and achieving a small embedding, allowing efficient process control based on model predictions and embeddings.
Author(s)
Ferreira, José
Universidade do Porto  
Darabi, Roya
Universidade do Porto  
Sousa, Armando
Universidade do Porto  
Brückner, Frank  
Fraunhofer-Institut für Werkstoff- und Strahltechnik IWS  
Reis, Luís Paulo
Universidade do Porto  
Reis, Ana
Universidade do Porto  
Tavares, João Manuel R.S.
Universidade do Porto  
Meireles De Sousa, Joao Paulo
Fraunhofer-Institut für Werkstoff- und Strahltechnik IWS  
Journal
Journal of Intelligent Manufacturing  
Project(s)
Sensitive Industry
Recuperação do Setor de Componentes Automóveis
Funder
European Regional Development Fund
Presidência da República Portuguesa
Open Access
DOI
10.1007/s10845-025-02614-4
Additional link
Full text
Language
English
Fraunhofer-Institut für Werkstoff- und Strahltechnik IWS  
Keyword(s)
  • Artificial intelligence

  • Contrastive learning

  • Embedding representation

  • Metal additive manufacturing

  • Transference

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