DocumentCode :
1512818
Title :
A Wavelet Spectral Analysis Technique for Automatic Detection of Geomagnetic Sudden Commencements
Author :
Hafez, Ali G. ; Ghamry, Essam ; Yayama, Hideki ; Yumoto, Kiyohumi
Author_Institution :
LTLab Inc., Fukuoka, Japan
Volume :
50
Issue :
11
fYear :
2012
Firstpage :
4503
Lastpage :
4512
Abstract :
Maximal overlap discrete wavelet transform is used to perform spectral analysis of geomagnetic storm sudden commencements (SCs) (SSCs). This spectral analysis guided us in the development of an automatic SSC detection algorithm. The SC can be an indicator of the onset of a geomagnetic storm; in this case, it is called an SSC. The geomagnetic records used in this study were 3-s resolution data collected from the Circum-Pan Pacific Magnetometer Network. Using such high-resolution data enabled us to achieve a small detection error and short processing time. In addition to these technical merits, we introduce a new algorithm that automatically detects, for the first time, the SC from high-resolution data (sampled at the rate of 1 sample/3 s), unlike previous studies that focused on determining the SSC times automatically using 1-min data. Ninety-three geomagnetic storms were considered for testing the proposed algorithm; it was found that the average and maximum standard deviation of the errors in the detection times determined by the algorithm were 7 and 18 samples, respectively, of the corresponding manually determined arrival times.
Keywords :
atmospheric techniques; magnetic storms; Circum-Pan Pacific Magnetometer Network; automatic SSC detection algorithm; geomagnetic automatic detection; geomagnetic records; geomagnetic storm sudden commencements; maximal overlap discrete wavelet transform; wavelet spectral analysis technique; Detection algorithms; Discrete wavelet transforms; Multiresolution analysis; Spectral analysis; Storms; Circum-Pan Pacific Magnetometer Network (CPMN); geomagnetic sudden commencement (SC) detection; maximal overlap discrete wavelet transform (DWT) (MODWT) and wavelets;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2012.2192279
Filename :
6197227
Link To Document :
بازگشت