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Document type:
Konferenzbeitrag
Contribution type:
Poster
Author(s):
Natras R., Schmidt M.
Title:
Time-series Forecasting of Ionospheric Space Weather using Ensemble Machine Learning
Abstract:
Space weather describes varying conditions in the space environment between the Sun and Earth that can affect satellites and technologies on the Earth such as navigation systems, power grids, radio and satellite communications. In order to model and predict the space weather, a complex chain of physical processes between the Sun, the interplanetary space, the Earth’s magnetic field and the ionosphere have to be taken into account. Often, however, we do not have physical and/or mathematical relat...     »
Keywords:
Time series, Machine Learning, Ionosphere, Space Weather
Book / Congress title:
Affinity Workshop Women in Machine Learning (WiML) at the Thirty-eighth International Conference on Machine Learning (ICML) 2021
Date of congress:
2021-07-18 - 2021-07-24
Year:
2021
Year / month:
2021-07
TUM Institution:
Deutsches Geodätisches Forschungsinstitut (DGFI-TUM)
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