Solar Flare Occurrence Rate and Probability in Terms of the Sunspot Classification Supplemented with Sunspot Area and Its Changes

We investigate the solar flare occurrence rate and daily flare probability in terms of the sunspot classification supplemented with sunspot area and its changes. For this we use the NOAA active region data and GOES solar flare data for 15 years (from January 1996 to December 2010). We consider the most flare-productive 11 sunspot classes in the McIntosh sunspot group classification. Sunspot area and its changes can be a proxy of magnetic flux and its emergence/cancellation, respectively. We classify each sunspot group into two sub-groups by its area: “Large” and “Small”. In addition, for each group, we classify it into three sub-groups according to sunspot area changes: “Decrease”, “Steady”, and “Increase”. As a result, in the case of compact groups, their flare occurrence rates and daily flare probabilities noticeably increase with sunspot group area. We also find that the flare occurrence rates and daily flare probabilities for the “Increase” sub-groups are noticeably higher than those for the other sub-groups. In case of the (M+X)-class flares in the ‘Dkc’ group, the flare occurrence rate of the “Increase” sub-group is three times higher than that of the “Steady” sub-group. The mean flare occurrence rates and flare probabilities for all sunspot groups increase with the following order: “Decrease”, “Steady”, and “Increase”. Our results statistically demonstrate that magnetic flux and its emergence enhance the occurrence of major solar flares.

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