Howard is member of the Magnetic Fusion Experiments Integrated Modeling (MFE-IM) group at the PSFC. Along with MFE-IM group leader Pablo Rodriguez-Fernandez, Howard and the team use simulations and machine learning to predict how plasma will behave in a fusion device. MFE-IM and Howard's research aims to forecast a given technology or configuration's performance before it's piloted in an actual fusion environment, allowing for smarter design choices. To ensure their accuracy, these models are continuously validated using data from previous experiments, keeping their simulations grounded in reality.
In a recent open-access paper titled "Prediction of Performance and Turbulence in ITER Burning Plasmas via Nonlinear Gyrokinetic Profile Prediction," published in the January issue of Nuclear Fusion, Howard explains how he used high-resolution simulations of the swirling structures present in plasma, called turbulence, to confirm that the world's largest experimental fusion device, currently under construction in Southern France, will perform as expected when switched on. He also demonstrates how a different operating setup could produce nearly the same amount of energy output but with less energy input, a discovery that could positively affect the efficiency of fusion devices in general.
In his work to verify the baseline scenario, Howard used CGYRO, a computer code developed by Howard's collaborators at General Atomics. CGYRO applies a complex plasma physics model to a set of defined fusion operating conditions. Although it is time-intensive, CGYRO generates very detailed simulations on how plasma behaves at different locations within a fusion device.
The comprehensive CGYRO simulations were then run through the PORTALS framework, a collection of tools originally developed at MIT by Rodriguez-Fernandez. "PORTALS takes the high-fidelity [CGYRO] runs and uses machine learning to build a quick model called a 'surrogate' that can mimic the results of the more complex runs, but much faster," Rodriguez-Fernandez explains. "Only high-fidelity modeling tools like PORTALS give us a glimpse into the plasma core before it even forms. This predict-first approach allows us to create more efficient plasmas in a device like ITER."
After the first pass, the surrogates' accuracy was checked against the high-fidelity runs, and if a surrogate wasn't producing results in line with CGYRO's, PORTALS was run again to refine the surrogate until it better mimicked CGYRO's results. "The nice thing is, once you have built a well-trained [surrogate] model, you can use it to predict conditions that are different, with a very much reduced need for the full complex runs." Once they were fully trained, the surrogates were used to explore how different combinations of inputs might affect ITER's predicted performance and how it achieved the baseline scenario. Notably, the surrogate runs took a fraction of the time, and they could be used in conjunction with CGYRO to give it a boost and produce detailed results more quickly.
The 14 iterations of CGYRO used to confirm the plasma performance included running PORTALS to build surrogate models for the input parameters and then tying the surrogates to CGYRO to work more efficiently. It only took three additional iterations of CGYRO to explore an alternate scenario that predicted ITER could produce almost the same amount of energy with about half the input power. The surrogate-enhanced CGYRO model revealed that the temperature of the plasma core - and thus the fusion reactions - wasn't overly affected by less power input; less power input equals more efficient operation. Howard's results are also a reminder that there may be other ways to improve ITER's performance; they just haven't been discovered yet.
Howard reflects, "The fact that we can use the results of this modeling to influence the planning of experiments like ITER is exciting. For years, I've been saying that this was the goal of our research, and now that we actually do it - it's an amazing arc, and really fulfilling."
Research Report:"Prediction of performance and turbulence in ITER burning plasmas via nonlinear gyrokinetic profile prediction"
Related Links
Magnetic Fusion Experiments Integrated Modeling Group
Powering The World in the 21st Century at Energy-Daily.com
Subscribe Free To Our Daily Newsletters |
Subscribe Free To Our Daily Newsletters |