News — NJIT researchers have been awarded a $593,864 National Science Foundation grant to develop a new AI system for more quickly and accurately predicting when explosive space weather events on the Sun will strike, from solar flares to coronal mass ejections (CMEs).

The three-year project, led by Yan Xu at  and Jason Wang at the university’s , will develop AI-powered space weather forecasting capabilities that could offer solar researchers a new window into the complex magnetic processes in regions of the Sun's atmosphere that trigger such eruptions, and to this point, have rarely been observed.

According to the researchers, the new AI-powered forecasting system — called SolarDM — could boost early-warning detection of these eruptive events on Earth by days, while offering vital insights to the space weather science community as activity on our nearest star ramps up over the course of the current 11-year solar cycle, which began in 2019.

“Major solar eruptions are powered by magnetic processes taking place in the solar corona, where we’ve lacked critical data due to poor observation conditions and insufficient instruments,” said Xu, the project’s principal investigator and research professor at  “Observations of the atmospheric layer underneath are crucial to study 3D magnetic fields. SolarDM’s data insights potentially give us a way to map the magnetic landscape of this region, allowing us to better predict these powerful eruptions."

Solar physicists have long studied the structure and evolution of magnetic fields in the corona (the Sun’s upper atmosphere). The breaking and reconnecting of these field lines are known to power explosive events capable of disrupting technologies on Earth, such as satellite operations.

However, challenges persist in observing the magnetic field conditions in the second layer of the Sun’s atmosphere, the chromosphere, a rarely visible region positioned above the lowest layer of the star’s atmosphere, the photosphere.

To address this, the NJIT team is leveraging advanced artificial intelligence to generate synthetic vector magnetograms — computer-generated images of magnetic field dynamics in both the photosphere and chromosphere — providing critical data that could shed light on the precursors to solar eruptions.

The SolarDM AI system will be trained using simulations of the Sun's magnetic field and observational data from  — one of the world’s most advanced solar telescopes for long-term monitoring of the Sun, currently stationed at . In addition, data from NASA’s missions will be used to augment the training set.

“Due to the differences between the instruments on board the ground-based and space-borne observatories, it is extremely challenging to obtain high-quality alignments of the data needed for training and testing the AI system,” explained Wang. “The forecast horizon of state-of-the-art solar eruption forecasting systems is 24 hours. If successful, with SolarDM’s generated vector magnetograms, it is expected that the new AI system can extend the forecast horizon from 24 hours to three days.”

Ultimately, Xu and Wang say the AI modeling system will use the data not only to predict when and where eruptions are likely to occur across millions of miles of the solar atmosphere, but it will also explain why it has arrived at those conclusions.

“Insights into why the AI model is making its forecasts could significantly enhance our understanding of the underlying physics that are behind these powerful events,” noted Xu.

The NJIT project, "AI-Driven Generation of Vector Magnetograms in the Chromosphere and Photosphere with Application to Explainable Solar Eruption Predictions," will run from September 15, 2024, to August 31, 2027, as part of a broader wave of funding by NSF's Collaborations in Artificial Intelligence and Geosciences (CAIG) program.

The 25 NSF-CAIG projects — each integrating AI approaches with aspects of geoscience research — aim to enhance our understanding of complex Earth systems, improve natural hazard forecasting, and inform decision-making in the face of climate change, while driving the development of innovative AI techniques and expanding educational opportunities.

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