2019
DOI: 10.3847/1538-4357/ab1b3c
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Predicting Solar Flares Using a Long Short-term Memory Network

Abstract: We present a long short-term memory (LSTM) network for predicting whether an active region (AR) would produce a Υ-class flare within the next 24 hours. We consider three Υ classes, namely ≥M5.0 class, ≥M class, and ≥C class, and build three LSTM models separately, each corresponding to a Υ class. Each LSTM model is used to make predictions of its corresponding Υ-class flares. The essence of our approach is to model data samples in an AR as time series and use LSTMs to capture temporal information of the data s… Show more

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Cited by 119 publications
(180 citation statements)
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“…With quickly increasing interest in and success of pilot studies in the solar-physics community, machinelearning technology has opened a new window into the space weather forecast. Various models have been investigated and developed (e.g., Ahmed et al 2013;Bobra & Couvidat 2015;Liu et al 2017aLiu et al , 2019Nishizuka et al 2017Nishizuka et al , 2018Benvenuto et al 2018;Florios et al 2018;Huang et al 2018;Jonas et al 2018).…”
Section: Introductionmentioning
confidence: 99%
“…With quickly increasing interest in and success of pilot studies in the solar-physics community, machinelearning technology has opened a new window into the space weather forecast. Various models have been investigated and developed (e.g., Ahmed et al 2013;Bobra & Couvidat 2015;Liu et al 2017aLiu et al , 2019Nishizuka et al 2017Nishizuka et al , 2018Benvenuto et al 2018;Florios et al 2018;Huang et al 2018;Jonas et al 2018).…”
Section: Introductionmentioning
confidence: 99%
“…In future work we plan to extend the VPGAN framework for video processing in scientific domains (e.g., solar physics). In solar physics, deep learning has drawn a lot of interest due to its effectiveness in processing big and complex observational data gathered from diverse instruments [43]. Video is the most common form of observational data.…”
Section: Discussionmentioning
confidence: 99%
“…Because of the random nature of solar flares, it is difficult to find an effective precursor. In the recent development of solar flare forecast, deep learning methods [76][77][78][79] are used to automatically extract forecasting patterns from the observational data and finally build a forecasting model. Depending on the big observational solar data, deep learning methods may be one of ways to improve Figure 4 illustrates the structure of the CNN.…”
Section: Solar Flare Forecasting Modelsmentioning
confidence: 99%