A logistic regression model for predicting the occurrence of intense geomagnetic storms
A logistic regression model is implemented for predicting the occurrence of intense/super-intense geomagnetic storms. A binary dependent variable, indicating the occurrence of intense/super-intense geomagnetic storms, is regressed against a series of independent model variables that define a...
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Copernicus Publications
2005-11-01
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Series: | Annales Geophysicae |
Online Access: | https://www.ann-geophys.net/23/2969/2005/angeo-23-2969-2005.pdf |
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doaj-adbd05c9ce4c439698f4c1da6c61521f2020-11-24T22:25:26ZengCopernicus PublicationsAnnales Geophysicae0992-76891432-05762005-11-01232969297410.5194/angeo-23-2969-2005A logistic regression model for predicting the occurrence of intense geomagnetic stormsN. Srivastava0Udaipur Solar Observatory, Physical Research Laboratory, P.O. Box 198, Udaipur, IndiaA logistic regression model is implemented for predicting the occurrence of intense/super-intense geomagnetic storms. A binary dependent variable, indicating the occurrence of intense/super-intense geomagnetic storms, is regressed against a series of independent model variables that define a number of solar and interplanetary properties of geo-effective CMEs. The model parameters (regression coefficients) are estimated from a training data set which was extracted from a dataset of 64 geo-effective CMEs observed during 1996-2002. The trained model is validated by predicting the occurrence of geomagnetic storms from a validation dataset, also extracted from the same data set of 64 geo-effective CMEs, recorded during 1996-2002, but not used for training the model. The model predicts 78% of the geomagnetic storms from the validation data set. In addition, the model predicts 85% of the geomagnetic storms from the training data set. These results indicate that logistic regression models can be effectively used for predicting the occurrence of intense geomagnetic storms from a set of solar and interplanetary factors.https://www.ann-geophys.net/23/2969/2005/angeo-23-2969-2005.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
N. Srivastava |
spellingShingle |
N. Srivastava A logistic regression model for predicting the occurrence of intense geomagnetic storms Annales Geophysicae |
author_facet |
N. Srivastava |
author_sort |
N. Srivastava |
title |
A logistic regression model for predicting the occurrence of intense geomagnetic storms |
title_short |
A logistic regression model for predicting the occurrence of intense geomagnetic storms |
title_full |
A logistic regression model for predicting the occurrence of intense geomagnetic storms |
title_fullStr |
A logistic regression model for predicting the occurrence of intense geomagnetic storms |
title_full_unstemmed |
A logistic regression model for predicting the occurrence of intense geomagnetic storms |
title_sort |
logistic regression model for predicting the occurrence of intense geomagnetic storms |
publisher |
Copernicus Publications |
series |
Annales Geophysicae |
issn |
0992-7689 1432-0576 |
publishDate |
2005-11-01 |
description |
A logistic regression model is
implemented for predicting the occurrence of intense/super-intense
geomagnetic storms. A binary dependent variable, indicating the
occurrence of intense/super-intense geomagnetic storms, is
regressed against a series of independent model variables that
define a number of solar and interplanetary properties of
geo-effective CMEs. The model parameters (regression coefficients)
are estimated from a training data set which was extracted from a dataset
of 64 geo-effective CMEs observed during 1996-2002. The trained
model is validated by predicting the occurrence of geomagnetic
storms from a validation dataset, also extracted from the same
data set of 64 geo-effective CMEs, recorded during 1996-2002, but
not used for training the model. The model predicts 78% of the
geomagnetic storms from the validation data set. In addition, the
model predicts 85% of the geomagnetic storms from the training
data set. These results indicate that logistic regression models
can be effectively used for predicting the occurrence of intense
geomagnetic storms from a set of solar and interplanetary factors. |
url |
https://www.ann-geophys.net/23/2969/2005/angeo-23-2969-2005.pdf |
work_keys_str_mv |
AT nsrivastava alogisticregressionmodelforpredictingtheoccurrenceofintensegeomagneticstorms AT nsrivastava logisticregressionmodelforpredictingtheoccurrenceofintensegeomagneticstorms |
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1725757688852250624 |