A neural network-based local model for prediction of geomagnetic disturbances

This study shows how locally observed geomagnetic disturbances can bepredicted from solar wind data with artificial neural network (ANN)techniques. After subtraction of a secularly varying base level, thehorizontal components X Sq and Y Sq of the quiettime daily variations are modeled with radial ba...

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Published in:Journal of Geophysical Research: Space Physics
Main Authors: Gleisner, Hans, Lundstedt, Henrik
Format: Article in Journal/Newspaper
Language:English
Published: Wiley-Blackwell 2001
Subjects:
Online Access:https://lup.lub.lu.se/record/130194
https://doi.org/10.1029/2000JA900142
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record_format openpolar
spelling ftulundlup:oai:lup.lub.lu.se:43e3fb5a-bc7c-4e01-b425-0b9a8bbbfec4 2023-05-15T18:20:17+02:00 A neural network-based local model for prediction of geomagnetic disturbances Gleisner, Hans Lundstedt, Henrik 2001 https://lup.lub.lu.se/record/130194 https://doi.org/10.1029/2000JA900142 eng eng Wiley-Blackwell https://lup.lub.lu.se/record/130194 http://dx.doi.org/10.1029/2000JA900142 Journal of Geophysical Research; 106(A5), pp 8425-8434 (2001) ISSN: 2156-2202 Astronomy Astrophysics and Cosmology Ionosphere: Current systems Ionosphere: Modeling and forecasting Magnetospheric Physics: Solar wind/magnetosphere interactions Mathematical Geophysics: Modeling contributiontojournal/article info:eu-repo/semantics/article text 2001 ftulundlup https://doi.org/10.1029/2000JA900142 2023-02-01T23:31:21Z This study shows how locally observed geomagnetic disturbances can bepredicted from solar wind data with artificial neural network (ANN)techniques. After subtraction of a secularly varying base level, thehorizontal components X Sq and Y Sq of the quiettime daily variations are modeled with radial basis function networkstaking into account seasonal and solar activity modulations. Theremaining horizontal disturbance components DeltaX and DeltaY aremodeled with gated time delay networks taking local time and solar winddata as input. The observed geomagnetic field is not used as input tothe networks, which thus constitute explicit nonlinear mappings from thesolar wind to the locally observed geomagnetic disturbances. The ANNsare applied to data from Sodankylä Geomagnetic Observatory locatednear the peak of the auroral zone. It is shown that 73% of the DeltaXvariance, but only 34% of the DeltaY variance, is predicted from asequence of solar wind data. The corresponding results for prediction ofall transient variations X Sq +DeltaX andY Sq +DeltaY are 74% and 51%, respectively. The local timemodulations of the prediction accuracies are shown, and the qualitativeagreement between observed and predicted values are discussed. If drivenby real-time data measured upstream in the solar wind, the ANNs heredeveloped can be used for short-term forecasting of the locally observedgeomagnetic activity. Article in Journal/Newspaper Sodankylä Lund University Publications (LUP) Sodankylä ENVELOPE(26.600,26.600,67.417,67.417) Journal of Geophysical Research: Space Physics 106 A5 8425 8433
institution Open Polar
collection Lund University Publications (LUP)
op_collection_id ftulundlup
language English
topic Astronomy
Astrophysics and Cosmology
Ionosphere: Current systems
Ionosphere: Modeling and forecasting
Magnetospheric Physics: Solar wind/magnetosphere interactions
Mathematical Geophysics: Modeling
spellingShingle Astronomy
Astrophysics and Cosmology
Ionosphere: Current systems
Ionosphere: Modeling and forecasting
Magnetospheric Physics: Solar wind/magnetosphere interactions
Mathematical Geophysics: Modeling
Gleisner, Hans
Lundstedt, Henrik
A neural network-based local model for prediction of geomagnetic disturbances
topic_facet Astronomy
Astrophysics and Cosmology
Ionosphere: Current systems
Ionosphere: Modeling and forecasting
Magnetospheric Physics: Solar wind/magnetosphere interactions
Mathematical Geophysics: Modeling
description This study shows how locally observed geomagnetic disturbances can bepredicted from solar wind data with artificial neural network (ANN)techniques. After subtraction of a secularly varying base level, thehorizontal components X Sq and Y Sq of the quiettime daily variations are modeled with radial basis function networkstaking into account seasonal and solar activity modulations. Theremaining horizontal disturbance components DeltaX and DeltaY aremodeled with gated time delay networks taking local time and solar winddata as input. The observed geomagnetic field is not used as input tothe networks, which thus constitute explicit nonlinear mappings from thesolar wind to the locally observed geomagnetic disturbances. The ANNsare applied to data from Sodankylä Geomagnetic Observatory locatednear the peak of the auroral zone. It is shown that 73% of the DeltaXvariance, but only 34% of the DeltaY variance, is predicted from asequence of solar wind data. The corresponding results for prediction ofall transient variations X Sq +DeltaX andY Sq +DeltaY are 74% and 51%, respectively. The local timemodulations of the prediction accuracies are shown, and the qualitativeagreement between observed and predicted values are discussed. If drivenby real-time data measured upstream in the solar wind, the ANNs heredeveloped can be used for short-term forecasting of the locally observedgeomagnetic activity.
format Article in Journal/Newspaper
author Gleisner, Hans
Lundstedt, Henrik
author_facet Gleisner, Hans
Lundstedt, Henrik
author_sort Gleisner, Hans
title A neural network-based local model for prediction of geomagnetic disturbances
title_short A neural network-based local model for prediction of geomagnetic disturbances
title_full A neural network-based local model for prediction of geomagnetic disturbances
title_fullStr A neural network-based local model for prediction of geomagnetic disturbances
title_full_unstemmed A neural network-based local model for prediction of geomagnetic disturbances
title_sort neural network-based local model for prediction of geomagnetic disturbances
publisher Wiley-Blackwell
publishDate 2001
url https://lup.lub.lu.se/record/130194
https://doi.org/10.1029/2000JA900142
long_lat ENVELOPE(26.600,26.600,67.417,67.417)
geographic Sodankylä
geographic_facet Sodankylä
genre Sodankylä
genre_facet Sodankylä
op_source Journal of Geophysical Research; 106(A5), pp 8425-8434 (2001)
ISSN: 2156-2202
op_relation https://lup.lub.lu.se/record/130194
http://dx.doi.org/10.1029/2000JA900142
op_doi https://doi.org/10.1029/2000JA900142
container_title Journal of Geophysical Research: Space Physics
container_volume 106
container_issue A5
container_start_page 8425
op_container_end_page 8433
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