Brain Emotional Learning-based Prediction Model For the Prediction of
Geomagnetic Storms
- URL: http://arxiv.org/abs/2007.15579v2
- Date: Sat, 1 Aug 2020 13:37:17 GMT
- Title: Brain Emotional Learning-based Prediction Model For the Prediction of
Geomagnetic Storms
- Authors: Mahboobeh Parsapoor
- Abstract summary: The model which is an instance of Brain Emotional Learning Inspired Models (BELIMs) is known as the Brain Emotional Learning-based Prediction Model (BELPM)
The functions of these subsystems are explained using adaptive networks.
BELPM is employed to predict geomagnetic storms using two geomagnetic indices, Auroral Electrojet (AE) Index and Disturbance Time (Dst) Index.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This study suggests a new data-driven model for the prediction of geomagnetic
storm. The model which is an instance of Brain Emotional Learning Inspired
Models (BELIMs), is known as the Brain Emotional Learning-based Prediction
Model (BELPM). BELPM consists of four main subsystems; the connection between
these subsystems has been mimicked by the corresponding regions of the
emotional system. The functions of these subsystems are explained using
adaptive networks. The learning algorithm of BELPM is defined using the
steepest descent (SD) and the least square estimator (LSE). BELPM is employed
to predict geomagnetic storms using two geomagnetic indices, Auroral Electrojet
(AE) Index and Disturbance Time (Dst) Index. To evaluate the performance of
BELPM, the obtained results have been compared with ANFIS, WKNN and other
instances of BELIMs. The results verify that BELPM has the capability to
achieve a reasonable accuracy for both the short-term and the long-term
geomagnetic storms prediction.
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