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The flare likelihood and region eruption forecasting (FLARECAST) project: Flare forecasting in the big data & machine learning era
- Source :
- Journal of Space Weather and Space Climate, Journal of Space Weather and Space Climate, EDP sciences, 2021, 11, pp.39. ⟨10.1051/swsc/2021023⟩, Journal of Space Weather and Space Climate, Vol 11, p 39 (2021)
- Publication Year :
- 2021
- Publisher :
- EDP Sciences, 2021.
-
Abstract
- The EU funded the FLARECAST project, that ran from Jan 2015 until Feb 2018. FLARECAST had a R2O focus, and introduced several innovations into the discipline of solar flare forecasting. FLARECAST innovations were: first, the treatment of hundreds of physical properties viewed as promising flare predictors on equal footing, extending multiple previous works; second, the use of fourteen (14) different ML techniques, also on equal footing, to optimize the immense Big Data parameter space created by these many predictors; third, the establishment of a robust, three-pronged communication effort oriented toward policy makers, space-weather stakeholders and the wider public. FLARECAST pledged to make all its data, codes and infrastructure openly available worldwide. The combined use of 170+ properties (a total of 209 predictors are now available) in multiple ML algorithms, some of which were designed exclusively for the project, gave rise to changing sets of best-performing predictors for the forecasting of different flaring levels. At the same time, FLARECAST reaffirmed the importance of rigorous training and testing practices to avoid overly optimistic pre-operational prediction performance. In addition, the project has (a) tested new and revisited physically intuitive flare predictors and (b) provided meaningful clues toward the transition from flares to eruptive flares, namely, events associated with coronal mass ejections (CMEs). These leads, along with the FLARECAST data, algorithms and infrastructure, could help facilitate integrated space-weather forecasting efforts that take steps to avoid effort duplication. In spite of being one of the most intensive and systematic flare forecasting efforts to-date, FLARECAST has not managed to convincingly lift the barrier of stochasticity in solar flare occurrence and forecasting: solar flare prediction thus remains inherently probabilistic.<br />Comment: 67 pages, 14 figures; submitted
- Subjects :
- Atmospheric Science
010504 meteorology & atmospheric sciences
F300
Computer science
Big data
F500
Machine learning
computer.software_genre
7. Clean energy
01 natural sciences
law.invention
Sun
solar flares
solar flare forecasting
machine learning
big data
computer science
law
Meteorology. Climatology
0103 physical sciences
Coronal mass ejection
media_common.cataloged_instance
European union
010303 astronomy & astrophysics
0105 earth and related environmental sciences
media_common
Solar flare forecasting
Solar flare
business.industry
Lift (data mining)
[SDU.ASTR.SR]Sciences of the Universe [physics]/Astrophysics [astro-ph]/Solar and Stellar Astrophysics [astro-ph.SR]
Probabilistic logic
Training (meteorology)
Solar flares
Astrophysics - Solar and Stellar Astrophysics
13. Climate action
Space and Planetary Science
Artificial intelligence
QC851-999
business
computer
Flare
Subjects
Details
- Language :
- English
- ISSN :
- 21157251
- Database :
- OpenAIRE
- Journal :
- Journal of Space Weather and Space Climate, Journal of Space Weather and Space Climate, EDP sciences, 2021, 11, pp.39. ⟨10.1051/swsc/2021023⟩, Journal of Space Weather and Space Climate, Vol 11, p 39 (2021)
- Accession number :
- edsair.doi.dedup.....88abcbddbf0ae8ecaf39ad638d21b8b5
- Full Text :
- https://doi.org/10.1051/swsc/2021023⟩