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CORDIS - Wyniki badań wspieranych przez UE
CORDIS

Data and decentralized Artificial intelligence for a competitive and green European metallurgy industry

CORDIS oferuje możliwość skorzystania z odnośników do publicznie dostępnych publikacji i rezultatów projektów realizowanych w ramach programów ramowych HORYZONT.

Odnośniki do rezultatów i publikacji związanych z poszczególnymi projektami 7PR, a także odnośniki do niektórych konkretnych kategorii wyników, takich jak zbiory danych i oprogramowanie, są dynamicznie pobierane z systemu OpenAIRE .

Rezultaty

Project Handbook (odnośnik otworzy się w nowym oknie)

T1.1-T1.3. It shall describe all operational aspects of the project, project execution and management in order to provide the consortium partners with background information about specific procedures and norms to be followed during the project lifetime. Quality procedures, risk identification, management and mitigation procedures, as well as guidelines on knowledge management for information sharing, IPR protection and innovation will be here described.

Plan for impact creation, standardisation and exploitation (odnośnik otworzy się w nowym oknie)

T6.1-T6.3 Report on the communication, dissemination, and standardisation. This report will include detailed plans for dissemination, communication, standardization and exploitation activities and IPR to be followed by all partners to publicise the ALCHIMA results. This deliverable will also include a preliminary Business Plan for the sustainability of the project

Use-cases preparation (odnośnik otworzy się w nowym oknie)

T5.1. Report that describes the readiness of each pilot for the development and deployment activities based on T5.1.

Requirements and human-centric recommendations (odnośnik otworzy się w nowym oknie)

T2.1, T2.3 This deliverable will include the stakeholders’ expectations. Also, the findings of the research with survey results and interviews provide insights and foresight recommendations for human-centric technology development and insertion.

Data Management Plan (odnośnik otworzy się w nowym oknie)

T1.5. It defines the guidelines for data management in order to ensure a high level of data quality and accessibility for final users and stakeholders and to allow the application of data analytics techniques. Note: Financial and progress reporting will be provided at the end of each reporting period through the EC tool.

Federated Learning framework_version 1 (odnośnik otworzy się w nowym oknie)

T3.1-T3.3 Report and prototype implementation of ALCHIMIA Federated Learning framework, Transfer Learning and domain adaptation techniques.

Publikacje

Artificial Intelligence in Steel Production: Questions of Augmentation, Optimisation and Accountability

Autorzy: Dean Stroud, Rachel Hale; Martin Weinel; Luca Antonazzo; Vinicio Di Iorio
Opublikowane w: 2026
Wydawca: ELGAR - Handbook of Disruptive Digital Technology

Journal of Workplace Learning

Autorzy: S. Dettori, A. Zaccara, L. Laid, I. Matino, V. Colla, C. Parea, D. Esteban
Wydawca: 18th International Conference on Society & Materials, SAM18, 2024

Unlocking the LCA recycling modelling dilemma in steelmaking industry through the inclusion of temporal, spatial, and steel grades variability

Autorzy: Federico Rossi, Fabio Irado, Monia Niero
Wydawca: Resources, Conservation, and Recycling ELSEVIER

AI-based modelling techniques for input materials optimisation in the EAF route

Autorzy: S. Dettori, A. Zaccara, L. Laid, I. Matino, V. Colla, C. Parea, D. Esteban
Wydawca: SAM Society

Decreasing the environmental impact of the electric steel route through advanced modelling techniques

Autorzy: Valentina Colla, Antonella Zaccara,Stefano Dettori, Laura Laid, Ismael Matino, Silvia Cateni, Teresa Annunziata Branca, Lorenzo Vannini
Wydawca: 10th European Oxygen Steelmaking Conference 10th EOSC – 7th Conference on Clean Technologies in the Steel Industry 7th CTSI EOSC-CTSI 2025

Machine learning-based models applied for improving electric steelworks sustainability

Autorzy: Valentina Colla, Stefano Dettori, Antonella Zaccara, Laura Laid, Ismael Matino, Teresa Annunziata Branca, Silvia Cateni
Wydawca: AISTech-Iron and Steel Technology Conference Proceedings - AISTECH2025

Machine Learning models to forecast defects occurrence on foundry products (odnośnik otworzy się w nowym oknie)

Autorzy: S. Dettori, A. Zaccara, L. Laid, I. Matino, M. Vannucci, V. Colla, G. Bontempi, L. Forlani
Opublikowane w: IFAC-PapersOnLine, Numer 58, 2024, ISSN 2405-8963
Wydawca: Elsevier BV
DOI: 10.1016/J.IFACOL.2024.09.300

18th International Conference on Society & Materials, SAM18, 2024

Autorzy: Rossi F., Niero M., Colla V., Zaccara A., Dettori S., Laid L., Branza T.A., Cateni S., Vannini L., Iraldo F.
Wydawca: 19th International Conference on Society & Materials, SAM19, 2025

Application of Federated Learning to enhance model-based Decision Support for EAF online Monitoring and Control at multiple plants

Autorzy: B.Kleimt, P. Kannisto, A. Changude, N. Clarevanne, X. Dacquet, N. Garcia, R. Lazcano
Wydawca: European Steel and Application Days (ESTAD) 2025

ALCHIMIA: what it really takes to build industrial AI in European steelmaking

Autorzy: David Blazquez, Irene Garcia and Barbara Fernandez
Opublikowane w: 2026
Wydawca: Steel Times International

Artificial Intelligence-based decision support system for optimising the ladle furnace process in the ALCHIMIA project

Autorzy: S. Dettori, L. Laid, A. Zaccara, V. Colla, I. Matino, L. Vannini, T.A. Branca, M. Vannucci, A. Siddique, F. Rossi, M. Niero
Wydawca: European Steel and Application Days (ESTAD) 2025

Descreasing the environmental impact of the electric steelmaking route through advanced modelling techniques

Autorzy: Valentina Colla, Antonella Zaccara, Stefano Dettori, Laura Laid, Ismael Matino, Silvia Cateni, Teresa Annunziata Branca, Lorenzo Vannini
Wydawca: Steel Research International (extended version of the one we presented at the CTSI conference in Vienna)

Understanding the digitalization of work in the steel industry using the sociology of work, industrial sociology and STS.

Autorzy: Hale, R., Stroud, D. and Weinel, M. 
Opublikowane w: Book of Abstracts 21st STS Conference Graz 2023 Critical Numers in Science, Technology and Society Studies 8 – 10 May 2023
Wydawca: N/A

Embedding Human-Centred AI in Steelmaking: Lessons from the Alchimia Project

Autorzy: Dean Stroud and Martin Weinel
Opublikowane w: 2026
Wydawca: Steel Times International

19th International Conference on Society & Materials, SAM19, 2025

Autorzy: Rossi F, ALbano F, Frey M, Iraldo F, Niero M
Wydawca: Abstract Book - SETAC Europe 34th Annual Meeting

Artificial Intelligence and Transformations of Work

Autorzy: Dr. Dean Stroud, Dr. Martin Weinel, Dr. Rachel Hale, Dr. Vini di Iorio
Opublikowane w: Speakers’ Booklet International Conference Artificial Intelligence and Transformations of Work November 20-22, 2023 Grenoble, Numer N/A
Wydawca: N/A

Intelligenza artificiale applicata alla modellazione del ciclo siderurgico elettrico

Autorzy: A. Zaccara, S. Dettori, L. Laid, I. Matino, V. Colla
Wydawca: La Metallurgia Italiana - International Journal of the Italian Association for Metallurgy

Application of LCA to circular economy strategies in steelmaking industry: state-of-the-art and recommendations

Autorzy: Federico Rossi, Monia Niero, Marco Frey
Wydawca: N/A

Artificial Intelligence for Steelmaking: optimizing processes, augmenting workers, blurring accountability

Autorzy: Dr. Dean Stroud, Dr. Martin Weinel, Dr. Rachel Hale, Dr. Vini di Iorio, Dr. Luca Antonazzo 
Wydawca: N/A

Life Cycle Assessment as a decision support tool for the implementation of circular economy and decarbonization strategies in the steel industry

Autorzy: Monia Niero, Federico Rossi, Francesca Albano, Fabio Iraldo, Marco Frey
Wydawca: N/A

Learning for AI in Industrial Settings: The Importance of Transversal Skills in the Metallurgy Sector

Autorzy: D. Stroud, R. Hale, M. Weinel
Wydawca: Journal of Workplace Learning

Unsupervised Anomaly Detection Combining PCA and Neural Gases (odnośnik otworzy się w nowym oknie)

Autorzy: Marco Vannucci, Valentina Colla, Antonella Zaccara, Stefano Dettori, Laura Laid
Opublikowane w: Engineering Applications of Neural Networks, ISBN 978-3-031-62494-0
Wydawca: Springer Nature
DOI: 10.1007/978-3-031-62495-7_32

Framework with Digital Twins and Federated Learning for Decision Support in Multi-plant Schemes for Electric Steelmaking and Beyond

Autorzy: P. Kannisto
Wydawca: La Metallurgia Italiana - International Journal of the Italian Association for Metallurgy

Optimizing Steelmaking with Models, AI, and Federated and Continual Learning (odnośnik otworzy się w nowym oknie)

Opublikowane w: Automaatioväylä, Numer 41(1), 2025, ISSN 0784-6428
Wydawca: Finnish Society of Automation
DOI: 10.5281/ZENODO.14741719

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