Development of Solar Flare and Energetic Particle Prediction Portal (SEP3)Solar activity is a primary factor determining the state of the Earth’s space environment, geomagnetic and ionospheric disturbances, and radiation hazards. In the current state of knowledge, machine learning (ML) methods provide essential tools for processing data, investigating relationships among various physical properties and characteristics, uncovering hidden connections, and predicting hazardous solar events. The primary difficulty in developing and applying modern machine-learning tools in heliophysics is that the essential data are scattered among over a hundred data repositories developed by instrument teams of space missions and ground-based observatories. In addition, statistical and ML methods require long time series of homogeneous measurements. To facilitate ML-ready data preparation and access, we have developed an interactive database of solar flares integrating the most essential datasets (https://solarflare.njit.edu/). The database performs an initial data processing and is automatically updated. In addition, we are developing the Solar Energetic Particle Prediction Portal (SEP3, https://sun.njit.edu/SEP3), which hosts web applications that allow users to retrieve the database records. The Portal has a search page for browsing the events from the most widely used catalogs and a dedicated space to share the most recent achievements of the team. The interactive widget can display soft X-ray and proton flux time series from GOES satellites and the flare records. The data portal has been used to evaluate the forecasts of solar proton events and investigate machine-learning approaches to SEP prediction.
Document ID
20240009982
Acquisition Source
Ames Research Center
Document Type
Poster
Authors
Alexander Kosovichev (New Jersey Institute of Technology Newark, United States)
Viacheslav Sadykov (New Jersey Institute of Technology Newark, United States)
Vincent Oria (New Jersey Institute of Technology Newark, United States)
Irina Kitiashvili (Ames Research Center Mountain View, United States)
Patrick O'Keefe (New Jersey Institute of Technology Newark, United States)
Aatiya Ali (Georgia State University Atlanta, Georgia, United States)
Chun-Jie Chong (New Jersey Institute of Technology Newark, United States)
Paul Kosovich (New Jersey Institute of Technology Newark, United States)
Samuel Granovsky (Universities Space Research Association Columbia, United States)