Prediction of the SYM‐H Index Using a Bayesian Deep Learning Method With Uncertainty Quantification

Author:

Abduallah Yasser12,Alobaid Khalid A.123,Wang Jason T. L.12ORCID,Wang Haimin145,Jordanova Vania K.6ORCID,Yurchyshyn Vasyl5,Cavus Huseyin78,Jing Ju145

Affiliation:

1. Institute for Space Weather Sciences New Jersey Institute of Technology Newark NJ USA

2. Department of Computer Science New Jersey Institute of Technology Newark NJ USA

3. College of Applied Computer Sciences King Saud University Riyadh Saudi Arabia

4. Center for Solar‐Terrestrial Research New Jersey Institute of Technology Newark NJ USA

5. Big Bear Solar Observatory New Jersey Institute of Technology Big Bear City CA USA

6. Los Alamos National Laboratory Space Science and Applications Los Alamos NM USA

7. Department of Physics Canakkale Onsekiz Mart University Canakkale Turkey

8. Harvard‐Smithsonian Center for Astrophysics Cambridge MA USA

Abstract

AbstractWe propose a novel deep learning framework, named SYMHnet, which employs a graph neural network and a bidirectional long short‐term memory network to cooperatively learn patterns from solar wind and interplanetary magnetic field parameters for short‐term forecasts of the SYM‐H index based on 1‐ and 5‐min resolution data. SYMHnet takes, as input, the time series of the parameters' values provided by NASA's Space Science Data Coordinated Archive and predicts, as output, the SYM‐H index value at time point t + w hours for a given time point t where w is 1 or 2. By incorporating Bayesian inference into the learning framework, SYMHnet can quantify both aleatoric (data) uncertainty and epistemic (model) uncertainty when predicting future SYM‐H indices. Experimental results show that SYMHnet works well at quiet time and storm time, for both 1‐ and 5‐min resolution data. The results also show that SYMHnet generally performs better than related machine learning methods. For example, SYMHnet achieves a forecast skill score (FSS) of 0.343 compared to the FSS of 0.074 of a recent gradient boosting machine (GBM) method when predicting SYM‐H indices (1 hr in advance) in a large storm (SYM‐H = −393 nT) using 5‐min resolution data. When predicting the SYM‐H indices (2 hr in advance) in the large storm, SYMHnet achieves an FSS of 0.553 compared to the FSS of 0.087 of the GBM method. In addition, SYMHnet can provide results for both data and model uncertainty quantification, whereas the related methods cannot.

Publisher

American Geophysical Union (AGU)

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