That's the general concept behind a new AI that fills in missing data about plasma, the fuel of fusion, according to Azarakhsh Jalalvand of Princeton University. Jalalvand is the lead author on a paper about the AI, known as Diag2Diag, that was recently published in Nature Communications. "We have found a way to take the data from a bunch of sensors in a system and generate a synthetic version of the data for a different kind of sensor in that system," he said. The synthetic data aligns with real-world data and is more detailed than what an actual sensor could provide. This could increase the robustness of control while reducing the complexity and cost of future fusion systems. "Diag2Diag could also have applications in other systems such as spacecraft and robotic surgery by enhancing detail and recovering data from failing or degraded sensors, ensuring reliability in critical environments."
The research is the result of an international collaboration between scientists at Princeton University, the U.S. Department of Energy's (DOE) Princeton Plasma Physics Laboratory (PPPL), Chung-Ang University, Columbia University and Seoul National University. All of the sensor data used in the research to develop the AI was gathered from experiments at the DIII-D National Fusion Facility, a DOE user facility.
The new AI enhances the way scientists can monitor and control the plasma inside a fusion system and could help keep future commercial fusion systems a reliable source of electricity. "Fusion devices today are all experimental laboratory machines, so if something happens to a sensor, the worst thing that can happen is that we lose time before we can restart the experiment. But if we are thinking about fusion as a source of energy, it needs to work 24/7, without interruption," Jalalvand said.
There are many diagnostics in a fusion system that measure different characteristics of the plasma. Thomson scattering, for example, is a diagnostic technique used in doughnut-shaped fusion systems called tokamaks. The Thomson scattering diagnostic measures the temperature of negatively charged particles known as electrons, as well as the density: the number of electrons packed into a unit of space. It takes measurements quickly but not fast enough to provide details that plasma physicists need to keep the plasma stable and at peak performance.
"Diag2Diag is kind of giving your diagnostics a boost without spending hardware money," said Egemen Kolemen, principal investigator of the research who is jointly appointed at PPPL and Princeton University's Andlinger Center for Energy and the Environment and the Department of Mechanical and Aerospace Engineering.
This is particularly important for Thomson scattering because the other diagnostics can't take measurements at the edge of the plasma, which is also known as the pedestal. It is the most important part of the plasma to monitor, but it's very hard to measure. Carefully monitoring the pedestal helps scientists enhance plasma performance so they can learn the best ways to get the most energy out of the fusion reaction efficiently.
For fusion energy to be a major part of the U.S. power system, it must be both economical and reliable. PPPL Staff Research Scientist SangKyeun Kim, who was part of the Diag2Diag research team, said the AI moves the U.S. toward those goals. "Today's experimental tokamaks have a lot of diagnostics, but future commercial systems will likely need to have far fewer," Kim said. "This will help make fusion reactors more compact by minimizing components not directly involved in producing energy." Fewer diagnostics also frees up valuable space inside the machine, and simplifying the system also makes it more robust and reliable, with fewer chances for error. Plus, it lowers maintenance costs.
"Due to the limitation of the Thomson diagnostic, we cannot normally observe this flattening," said PPPL Principal Research Scientist Qiming Hu, who also worked on the project. "Diag2Diag provided much more details on how this happens and how it evolves."
While magnetic islands can lead to ELMs, a growing body of research suggests they can also be fine-tuned using RMPs to improve plasma stability. Diag2Diag generated data that provided new evidence of this simultaneous flattening of both temperature and density in the pedestal region of the plasma. This strongly supports the magnetic island theory for ELM suppression. Understanding this mechanism is crucial for the development of commercial fusion reactors.
The scientists are already pursuing plans to expand the scope of Diag2Diag. Kolemen noted that several researchers have already expressed interest in trying the AI. "Diag2Diag could be applied to other fusion diagnostics and is broadly applicable to other fields where diagnostic data is missing or limited," he said.
Research Report:Multimodal super-resolution: discovering hidden physics and its application to fusion plasmas
Related Links
Princeton University
Powering The World in the 21st Century at Energy-Daily.com
Subscribe Free To Our Daily Newsletters |
Subscribe Free To Our Daily Newsletters |