IBM and NASA Release Open-Source AI Model to Predict Solar Weather And Help Protect Critical Technology

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Insider Brief

  • IBM and NASA released Surya, an open-source AI model designed to predict solar weather and protect technology on Earth and in space.
  • The model, trained on nine years of NASA solar observations, uses self-supervised learning on the largest curated heliophysics dataset to improve forecasting accuracy.
  • Surya is openly available on Hugging Face, enabling researchers worldwide to build applications for mitigating risks from solar storms.

PRESS RELEASE — IBM (NYSE: IBM) and NASA today unveiled one of the most advanced open-source foundation models designed to understand and predict how solar activity affects Earth and space-based technology. Surya, named for the Sanskrit word for the Sun, represents a significant advancement in applying AI to solar image interpretation and space weather forecasting research, providing a novel tool to help protect everything from GPS navigation to power grids to telecommunications from the Sun’s ever-changing nature.

The Sun may be 93 million miles away, but its impact on modern life is immediate and growing. Solar flares and coronal mass ejections can knock out satellites, disrupt airline navigation, trigger power blackouts, and pose serious radiation risks to astronauts. With humanity’s increasing dependence on space-based technology and plans for deeper space exploration, accurate solar weather prediction has become critical.

As humanity’s technological dependence grows, so does our vulnerability to space weather. According to a systemic risk scenario created by Lloyd’s, the global economy could be exposed to losses of $2.4 trillion over a five-year period, with the expected loss of $17 billion from the threat of a hypothetical solar storm. Recent solar events have already demonstrated the risk, disrupting GPS services, forcing flight diversions, and damaging satellites. The effects of solar storms can cause:

  • Damage to satellites, spacecraft and/or astronauts that are stationed beyond Earth
  • Loss of satellite hardware, damaging solar panels and circuits
  • Impact to airline travel, due to navigational errors and potential risk of radiation for airline crew and passengers
  • Lowered food production as agriculture can be impacted by disrupted GPS navigation

The implications include both academic research and operational preparedness. The new model will provide tools to help experts mitigate the consequences of solar storms, which can disrupt the Earth’s technological infrastructure.

“Think of this as a weather forecast for space,” said Juan Bernabe-Moreno, Director of IBM Research Europe, UK and Ireland. “Just as we prepare for hurricanes and other hazardous weather events, we need to prepare for solar storms. This AI model gives us unprecedented capability to anticipate what’s coming and is not just a technological achievement, but a critical step toward protecting our technological civilization from the star that sustains us.”

Traditional solar weather prediction relies on partial satellite views of the Sun’s surface, making accurate forecasting extremely difficult. Surya addresses this typical limitation by training on the largest curated heliophysics dataset. This dataset is designed to help researchers better study and evaluate critical space weather prediction tasks, like predicting solar flares, solar winds and the emergence of active regions on the Sun.

The technical challenges were immense. Surya was trained on nine years of high-resolution solar observations from NASA’s Solar Dynamics Observatory. These solar images are 10 times larger than typical AI training data, requiring a custom multi-architecture solution to handle the massive scale while maintaining efficiency. The result is a model with unprecedented spatial resolution that can resolve solar features at scales and contexts not previously captured in large-scale AI training workflows. By using self-supervised learning to identify patterns in unlabeled solar data, using a foundation model eliminates the need for experts to manually categorize thousands of complex solar events.

“We are advancing data-driven science by embedding NASA’s deep scientific expertise into cutting-edge AI models,” said Kevin Murphy, chief science data officer at NASA Headquarters in Washington. “By developing a foundation model trained on NASA’s heliophysics data, we’re making it easier to analyze the complexities of the Sun’s behavior with unprecedented speed and precision. This model empowers broader understanding of how solar activity impacts critical systems and technologies that we all rely on here on Earth.”

By releasing Surya on Hugging Face, IBM and NASA are democratizing access to advanced tools for understanding and forecasting solar weather and scientific exploration. Researchers worldwide can now build upon this foundation to develop specialized applications for their regions and industries.

This model is part of a larger collaboration between IBM and NASA to use AI technology to explore our planet and solar system. It joins the Prithvi family of foundation models, which includes a geospatial model and a weather model. Last year, IBM and NASA released the Prithvi weather model on Hugging Face for scientists and the broader community to develop short- and long-term weather and climate projections.

Matt Swayne

With a several-decades long background in journalism and communications, Matt Swayne has worked as a science communicator for an R1 university for more than 12 years, specializing in translating high tech and deep tech for the general audience. He has served as a writer, editor and analyst at The Space Impulse since its inception. In addition to his service as a science communicator, Matt also develops courses to improve the media and communications skills of scientists and has taught courses.

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