Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
1708665 | Applied Mathematics Letters | 2012 | 6 Pages |
Abstract
Neural based geomagnetic forecasting literature has heavily relied upon non-sequential algorithms for estimation of model parameters. This paper proposes sequential Bayesian recurrent neural filters for online forecasting of the Dst index. Online updating of the RNN parameters allows for newly arrived observations to be included into the model. The online RNN filters are compared to two (non-sequentially trained) models on a severe double storm that has so far been difficult to forecast. It is shown that the proposed models can significantly reduce forecast errors over non-sequentially trained recurrent neural models.
Keywords
Related Topics
Physical Sciences and Engineering
Engineering
Computational Mechanics
Authors
Lahcen Ouarbya, Derrick Takeshi Mirikitani, Eamonn Martin,