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UFCORIN: A Fully Automated Predictor of Solar Flares in GOES X-Ray Flux

Authors :
Muranushi, Takayuki
Shibayama, Takuya
Muranushi, Yuko Hada
Isobe, Hiroaki
Nemoto, Shigeru
Komazaki, Kenji
Shibata, Kazunari
Muranushi, Takayuki
Shibayama, Takuya
Muranushi, Yuko Hada
Isobe, Hiroaki
Nemoto, Shigeru
Komazaki, Kenji
Shibata, Kazunari
Publication Year :
2015

Abstract

We have developed UFCORIN, a platform for studying and automating space weather prediction. Using our system we have tested 6,160 different combinations of SDO/HMI data as input data, and simulated the prediction of GOES X-ray flux for 2 years (2011-2012) with one-hour cadence. We have found that direct comparison of the true skill statistics (TSS) from small cross-validation sets is ill-posed, and used the standard scores ($z$) of the TSS to compare the performance of the various prediction strategies. The $z$ of a strategy is a stochastic variable of the stochastically-chosen cross-validation dataset, and the $z$ for the three strategies best at predicting X, $\geq$M and $\geq$C class flares are better than the average $z$ of the 6,160 strategies by 2.3$\sigma$, 2.1$\sigma$, 3.8$\sigma$ confidence levels, respectively. The best three TSS values were $0.75\pm0.07$, $0.48\pm0.02$, and $0.56\pm0.04$, respectively.<br />Comment: 47 pages, 11 figures, accepted for publication in Space Weather: http://onlinelibrary.wiley.com/doi/10.1002/2015SW001257/full

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1098093541
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1002.2015SW001257