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DeepSun:machine-learning-as-a-service for solar flare prediction

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摘要 Solar flare prediction plays an important role in understanding and forecasting space weather.The main goal of the Helioseismic and Magnetic Imager(HMI), one of the instruments on NASA's Solar Dynamics Observatory, is to study the origin of solar variability and characterize the Sun's magnetic activity.HMI provides continuous full-disk observations of the solar vector magnetic field with high cadence data that lead to reliable predictive capability;yet, solar flare prediction effort utilizing these data is still limited. In this paper, we present a machine-learning-as-a-service(MLaa S) framework, called Deep Sun,for predicting solar flares on the web based on HMI's data products. Specifically, we construct training data by utilizing the physical parameters provided by the Space-weather HMI Active Region Patch(SHARP)and categorize solar flares into four classes, namely B, C, M and X, according to the X-ray flare catalogs available at the National Centers for Environmental Information(NCEI). Thus, the solar flare prediction problem at hand is essentially a multi-class(i.e., four-class) classification problem. The Deep Sun system employs several machine learning algorithms to tackle this multi-class prediction problem and provides an application programming interface(API) for remote programming users. To our knowledge, Deep Sun is the first MLaa S tool capable of predicting solar flares through the internet.
出处 《Research in Astronomy and Astrophysics》 SCIE CAS CSCD 2021年第7期51-61,共11页 天文和天体物理学研究(英文版)
基金 supported by U.S.NSF grants AGS-1927578 and AGS-1954737 the support of NASA under grants NNX16AF72G,80NSSC18K0673 and 80NSSC18K1705。
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  • 1Abramenko, V. I., Yurchyshyn, V. B., Wang, H., Spirock, I". J., & Goode, P. R. 2003, ApJ, 597, 1135.
  • 2Barnes, G., Leka, K. D., Schumer, E. A., & Della-Rose, D. J. 2007, Space Weather, 5, 9002.
  • 3Boser, B., Guyon, I., & Vapnik, V. 1992, A training algorithm for optimal margin classifiers, in the Fifth Annual Workshop on Computational Learning Theory, 144.
  • 4Chang, C.-C., & Lin, C.-J. 2001, LIBSVM: a library for support vector machines, software available at http://www, csie.ntu, edu. tw/ cjlin/libsvm.
  • 5Chen, W.-Z., Liu, C., Song, H., et al. 2007, ChJAA (Chin. J. Astron. Astrophys.), 7, 733.
  • 6Cortes, C., & Vapnik, V. N. 1995, Support-vector network, Machine Learning, 20, 273.
  • 7Dauphin, C., Vilmer, N., & Anastasiadis, A. 2007, A&A, 468, 273.
  • 8Falconer, D. A., Moore, R. L., & Gary, G. A. 2003, J. Geophys. Res. (Space Physics), 108, 1380.
  • 9Fan, R. E., Chert, P. H., & Lin, C. J. 2005, Journal of Machine Learning Research, 6, 1889.
  • 10Gallagher, P. T., Moon, Y., & Wang, H. 2002, Sol. Phys., 209, 171.

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