Regional Spatial Mean of Ionospheric Irregularities Based on K-Means Clustering of ROTI Maps

被引:0
|
作者
Migoya-Orue, Yenca [1 ]
Abe, Oladipo E. [2 ]
Radicella, Sandro [3 ]
机构
[1] Abdus Salam Int Ctr Theoret Phys ICTP, STI Unit, Str Costiera 11, I-34151 Trieste, Italy
[2] Fed Univ Oye Ekiti, Dept Phys, Oye Ekiti 370111, Ekiti State, Nigeria
[3] Boston Coll, Inst Sci Res, Newton, MA 02459 USA
关键词
ionospheric irregularities; ROTI; Kriging; unsupervised machine learning; optimization sample technique; K-means; low-latitude ionosphere; SCINTILLATIONS;
D O I
10.3390/atmos15091098
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
In this paper, we investigate and propose the application of an unsupervised machine learning clustering method to characterize the spatial and temporal distribution of ionospheric plasma irregularities over the Western African equatorial region. The ordinary Kriging algorithm was used to interpolate the rate of change of the total electron content (TEC) index (ROTI) over gridded 0.5 degrees by 0.5 degrees latitude and longitude regional maps in order to simulate the level of ionospheric plasma irregularities in a quasi-real-time scenario. K-means was used to obtain a spatial mean index through an optimal stratification of regional post-processed ROTI maps. The results obtained could be adapted by appropriate K-means algorithms to a real-time scenario, as has been performed for other applications. This method could allow us to monitor plasma irregularities in real time over the African region and, therefore, lead to the possibility of mitigating their effects on satellite-based location systems in the said region.
引用
收藏
页数:15
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