AI Breakthrough Accelerates Fusion Reactor Safety Calculations

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A new AI method called HEAT-ML, developed through a public-private partnership, significantly speeds up the process of finding "magnetic shadows" in fusion reactors, potentially revolutionizing fusion energy development.

AI Breakthrough in Fusion Reactor Safety

Researchers from Commonwealth Fusion Systems (CFS), the U.S. Department of Energy's Princeton Plasma Physics Laboratory (PPPL), and Oak Ridge National Laboratory have developed a groundbreaking artificial intelligence (AI) approach that could revolutionize the design and operation of fusion reactors. The new method, called HEAT-ML, significantly accelerates the process of identifying "magnetic shadows" within fusion vessels, which are crucial safe zones protected from the intense heat of plasma

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Source: Interesting Engineering

Source: Interesting Engineering

The Challenge of Plasma Heat

Fusion, the process that powers the sun and stars, holds the promise of providing virtually limitless clean energy on Earth. However, harnessing this power presents significant scientific and engineering challenges. One of the most critical issues is managing the extreme heat generated by plasma within fusion reactors, known as tokamaks

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Doménica Corona Rivera, an associate research physicist at PPPL and lead author of the paper on HEAT-ML, explains, "The plasma-facing components of the tokamak might come in contact with the plasma, which is very hot and can melt or damage these elements. The worst thing that can happen is that you would have to stop operations"

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HEAT-ML: A Game-Changing Solution

HEAT-ML employs a deep neural network to rapidly calculate "shadow masks," which are 3D maps of magnetic shadows within the fusion vessel. These shadows represent areas shielded from direct plasma heat due to the interaction between internal components and magnetic field lines

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The AI method dramatically reduces computation time from around 30 minutes to just a few milliseconds per simulation. This significant speed increase could enable real-time adjustments during fusion operations, potentially preventing problems before they occur

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SPARC: A Testbed for HEAT-ML

HEAT-ML was specifically developed to simulate a section of SPARC, a tokamak under construction by CFS. The company aims to demonstrate net energy gain by 2027, meaning SPARC would generate more energy than it consumes

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The research team focused on a critical area of SPARC where the most intense plasma heat exhaust intersects with the material wall. This section, comprising 15 tiles near the bottom of the machine, represents the part of the exhaust system subjected to the most heat

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Future Implications and Expansion

While HEAT-ML is currently tailored to SPARC's specific exhaust system design, the research team envisions expanding its capabilities. Michael Churchill, co-author of the paper and head of digital engineering at PPPL, states, "This research shows that you can take an existing code and create an AI surrogate that will speed up your ability to get useful answers, and it opens up interesting avenues in terms of control and scenario planning"

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The team hopes to generalize HEAT-ML's application to calculate shadow masks for exhaust systems of any shape and size, as well as other plasma-facing components inside tokamaks. This advancement could significantly accelerate the development of fusion energy systems, bringing us closer to a future of clean, abundant energy

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