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CORDIS - EU research results
CORDIS

Active Region Classification and Flare Forecasting

CORDIS provides links to public deliverables and publications of HORIZON projects.

Links to deliverables and publications from FP7 projects, as well as links to some specific result types such as dataset and software, are dynamically retrieved from OpenAIRE .

Deliverables

Project Reporting Year 1 (opens in new window)

This deliverable relates to the regular periodic reports for year 1

Project Reporting Year 2 (opens in new window)

This deliverable relates to the regular periodic reports for year 2

Progress report of user engagement in development process 1 (opens in new window)

This deliverable will include a report on progress so far to engage operational users of ARCAFF outputs. This includes (but not limited to) interactions with Advisory Board members, community workshop results and surveys, results of presentations at conferences etc. Month 24 has been chosen to allow time to reflect before any last changes are required in year 3 of the project to finalise the forecast service.

ARCAFF DL services v1 (opens in new window)

This deliverable will be a report and a set of executable services published in GitHub and integrated with the PITHIA-e-Science Centre. It will include the cloud-based implementation of these services, their preliminary user interfaces integrated into the e-Science Centre, and related learning and research material supporting their execution and utilisations.

Point-in-time based Flare forecast ML Dataset (magnetogram and multimodal) (opens in new window)

Software and DL datasets (3D images cubes and labels or outputs) for the point-in-time flare forecast objectivesboth magnetgram (O3) and multimodal (O4).

AR Localisation and Classification ML Datasets (opens in new window)

Software and DL datasets (images and label or outputs) for the AR Classification (O1) and AR Localisation andClassification Objectives (O2).

Trained AR Localisation and Classification DNNs and software (opens in new window)

Release of the training pipeline and model software as well as the trained model weights for AR Classification(O1) and AR Localisation and Classification Objectives (O2).

Project Web Site (opens in new window)

This deliverable will establish the ARCAFF website where all information about the project aims, consortiummembers, progress etc will be found, and later will display project outputs.

ARCAFF Data Management Plan (opens in new window)

Creation of a Data Management Plan for the consortium to follow when delivering project outputs.

Publications

Deep Learning for Active Region Classification: A Systematic Study from Convolutional Neural Networks to Vision Transformers (opens in new window)

Author(s): Edoardo Legnaro, Sabrina Guastavino, Michele Piana, Anna Maria Massone
Published in: The Astrophysical Journal, Issue 981, 2025, ISSN 0004-637X
Publisher: American Astronomical Society
DOI: 10.3847/1538-4357/ADB41A

Physics-driven Machine Learning for the Prediction of Coronal Mass Ejections’ Travel Times (opens in new window)

Author(s): Sabrina Guastavino; Valentina Candiani; Alessandro Bemporad; Francesco Marchetti; Federico Benvenuto; Anna Maria Massone; Salvatore Mancuso; Roberto Susino; Daniele Telloni; Silvano Fineschi; Michele, Piana
Published in: The Astrophysical Journal, Issue 954-2, 2023, ISSN 1538-4357
Publisher: IOP Publishing
DOI: 10.3847/1538-4357/ace62d

Unbiased CLEAN for STIX in Solar Orbiter (opens in new window)

Author(s): Emma Perracchione; Fabiana Camattari; Anna Volpara; Paolo Massa; Anna Maria Massone; Michele Piana
Published in: The Astrophysical Journal Supplement Series, 2023, ISSN 1538-4365
Publisher: IOP
DOI: 10.48550/arxiv.2307.09991

Prediction of Solar Energetic Events Impacting Space Weather Conditions (opens in new window)

Author(s): Manolis K. Georgoulis, Stephanie L. Yardley, Jordan A. Guerra, Sophie A. Murray, Azim Ahmadzadeh, Anastasios Anastasiadis, Rafal Angryk, Berkay Aydin, Dipankar Banerjee, Graham Barnes, Alessandro Bemporad, Federico Benvenuto, D. Shaun Bloomfield, Monica B
Published in: Advances in Space Research, 2024, ISSN 0273-1177
Publisher: Elsevier
DOI: 10.1016/j.asr.2024.02.030

Forecasting Geoffective Events from Solar Wind Data and Evaluating the Most Predictive Features through Machine Learning Approaches (opens in new window)

Author(s): Sabrina Guastavino, Katsiaryna Bahamazava, Emma Perracchione, Fabiana Camattari, Gianluca Audone, Daniele Telloni, Roberto Susino, Gianalfredo Nicolini, Silvano Fineschi, Michele Piana, Anna Maria Massone
Published in: The Astrophysical Journal, Issue 971, 2024, ISSN 0004-637X
Publisher: American Astronomical Society
DOI: 10.3847/1538-4357/AD5B57

Physically Motivated Deep Learning to Superresolve and Cross Calibrate Solar Magnetograms (opens in new window)

Author(s): Andrés Muñoz-Jaramillo, Anna Jungbluth, Xavier Gitiaux, Paul J. Wright, Carl Shneider, Shane A. Maloney, Atılım Güneş Baydin, Yarin Gal, Michel Deudon, and Freddie Kalaitzis
Published in: The Astrophysical Journal Supplement Series, 2024, ISSN 1538-4365
Publisher: Institute of Physics Publishing
DOI: 10.3847/1538-4365/AD12C2

Snakes on a spaceship—an overview of python in space physics (opens in new window)

Author(s): Burrell, A. G., Coxon, J., Aye, K.-M., Lamarche, L., Murray, S. A., eds.
Published in: Frontiers in Astronomy and Space Science, 2023, ISSN 1664-8714
Publisher: Lausanne: Frontiers Media SA
DOI: 10.3389/978-2-8325-2959-1

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