Automated coronal hole identification via multi-thermal intensity segmentation

被引:51
|
作者
Garton, Tadhg M. [1 ]
Gallagher, Peter T. [1 ]
Murray, Sophie A. [1 ]
机构
[1] Trinity Coll Dublin, Sch Phys, Dublin 2, Ireland
关键词
Sun; coronal holes; algorithm; corona; solar wind; DYNAMICS-OBSERVATORY SDO; SOLAR-WIND; VELOCITY;
D O I
10.1051/swsc/2017039
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
Coronal holes (CH) are regions of open magnetic fields that appear as dark areas in the solar corona due to their low density and temperature compared to the surrounding quiet corona. To date, accurate identification and segmentation of CHs has been a difficult task due to their comparable intensity to local quiet Sun regions. Current segmentation methods typically rely on the use of single Extreme Ultra-Violet passband and magnetogram images to extract CH information. Here, the coronal hole identification via multi-thermal emission recognition algorithm (CHIMERA) is described, which analyses multi-thermal images from the atmospheric image assembly (AIA) onboard the solar dynamics observatory (SDO) to segment coronal hole boundaries by their intensity ratio across three passbands (171 angstrom, 193 angstrom, and 211 angstrom). The algorithm allows accurate extraction of CH boundaries and many of their properties, such as area, position, latitudinal and longitudinal width, and magnetic polarity of segmented CHs. From these properties, a clear linear relationship was identified between the duration of geomagnetic storms and coronal hole areas. CHIMERA can therefore form the basis of more accurate forecasting of the start and duration of geomagnetic storms.
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页数:12
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