STATISTICAL PROPERTIES OF SOLAR CORONAL BRIGHT POINTS

被引:47
作者
Alipour, N. [1 ]
Safari, H. [1 ]
机构
[1] Univ Zanjan, Dept Phys, Zanjan, Iran
关键词
Sun: activity; Sun: corona; Sun: flares; Sun: magnetic fields; sunspots; RANGE; RECONNECTION;
D O I
10.1088/0004-637X/807/2/175
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
Here, we aim to study the statistical properties (i.e., spatial, temporal, and magnetic structures) of extreme ultraviolet coronal bright points (CBPs) observed by SDO during a 4.4 yr period (2010 June 1 to 2014 October 31). We developed the automatic detection method for CBPs based on the machine-learning technique and Zernike image moments. The average number and the mean density of CBPs are estimated to be about 572 (per full disk image taken at 193 angstrom) and 1.9 x 10(-4) Mm(-2), respectively. There is a negative correlation (-0.7) between the number of CBPs and the number of sunspots. The size and lifetime frequency distribution of CBPs show the lognormal and power-law (exponent equal to -1.6) behaviors, respectively. The relationship between the lifetime and size of CBPs is clearly treated by a power-law function with an exponent equal to 0.13. Around 1.3% of the solar surface is covered by the bright cores of CBPs and 2.6% of that is covered by their total area. About 52% of CBPs have lifetimes of less than 20 minutes and the remaining 48% have mean lifetimes of 6 hr. More than 95% of CBPs with lifetimes of less than 20 hr and nine CBPs with lifetimes of more than 72 hr are detected. The average number of the new CBPs emerging every 45 s in the whole of the Sun is about 27 +/- 3. The temporal self-affinity of the time series of CBPs that emerged, indexed by the Hurst exponent determined using both detrended fluctuation analysis and R/S analysis, is 0.78. This long-temporal correlation suggests that CBPs form a system of self-organized criticality.
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页数:9
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