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Support Vector Machine combined with Distance Correlation learning for Dst forecasting during intense geomagnetic storms.

Authors :
Lu, J.Y.
Peng, Y.X.
Wang, M.
Gu, S.J.
Zhao, M.X.
Source :
Planetary & Space Science. Jan2016, Vol. 120, p48-55. 8p.
Publication Year :
2016

Abstract

In this study we apply the Support Vector Machine (SVM) combined together with Distance Correlation (DC) to the forecasting of Dst index by using 80 intense geomagnetic storms ( Dst ≤ − 100 nT ) from 1995 to 2014. We also train the Neural Network (NN) and the Linear Machine (LM) to verify the effectiveness of SVM. The purpose for us to introduce DC is to make feature screening in input datasets that can effectively improve the forecasting performance of the SVM. For comparison, we estimate the correlation coefficients (CC), the RMS errors, the absolute value of difference in minimum Dst ( Δ Dst min ) and the absolute value of difference in minimum time ( Δ t Dst ) between observed Dst and predicted one. K -fold Cross Validation is used to improve the reliability of the results. It is shown that DC-SVM model exhibits the best forecasting performance for all parameters when all 80 events are considered. The CC, the RMS error, the Δ Dst min , and the Δ t Dst of DC-SVM are 0.95, 16.8 nT, 9.7 nT and 1.7 h, respectively. For further comparison, we divide the 80 storm events into two groups depending on minimum value of Dst . It is also found that the DC-SVM is better than other models in the two groups. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00320633
Volume :
120
Database :
Academic Search Index
Journal :
Planetary & Space Science
Publication Type :
Academic Journal
Accession number :
112088053
Full Text :
https://doi.org/10.1016/j.pss.2015.11.004