2022
DOI: 10.1029/2022sw003200
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Exploring the Potential of Neural Networks to Predict Statistics of Solar Wind Turbulence

Abstract: Time series data sets often have missing or corrupted entries, which need to be handled in subsequent data analysis. For example, in the context of space physics, calibration issues, satellite telemetry issues, and unexpected events can make parts of a time series unusable. This causes problems for understanding the dynamics of the heliosphere and space weather environment. Various approaches exist to tackle this problem, including mean/median imputation, linear interpolation, and autoregressive modeling. Here… Show more

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References 79 publications
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