AI Article Synopsis

  • Maintaining high temperatures and pressures for nuclear fusion is tough due to turbulence in plasma, making accurate modeling of turbulent transport crucial for fusion research.
  • This study introduces a method called multi-fidelity modeling, which combines low-accuracy data with high-accuracy data to improve predictive accuracy for turbulent transport in magnetic fusion plasma.
  • The Nonlinear AutoRegressive Gaussian Process regression (NARGP) technique enhances model predictions through merging various simulation results and applying innovative analyses, potentially aiding in better fusion reactor design and operation.

Article Abstract

Maintaining the high-temperature and pressure conditions required for sustained nuclear fusion is challenging due to the turbulent transport that naturally occurs in the plasma. Developing reliable models for turbulent transport is essential for progress in fusion research and development. This study proposes multi-fidelity modeling for the improved accuracy of regression models for turbulent transport in magnetic fusion plasma. Multi-fidelity modeling combines low-fidelity data, which have low accuracy but many data points, with high-fidelity data, which are highly accurate but have few data points or small parameter ranges, to enhance the overall predictive accuracy of a model. We used a multi-fidelity information fusion technique, Nonlinear AutoRegressive Gaussian Process regression (NARGP), to solve the regression problems associated with turbulent transport in plasma. We applied NARGP to (i) merge the low-resolution and high-resolution simulation results, (ii) apply regression of turbulence diffusivity to the experimental dataset using linear analyses, and (iii) adapt the quasi-linear transport model to nonlinear simulation results of a particular discharge. We demonstrated that NARGP improved the prediction accuracy of the plasma turbulent transport model. NARGP offers a robust and versatile method for integrating multi-fidelity data, and its broad applicability may contribute to optimizing fusion reactor design and operation.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11638262PMC
http://dx.doi.org/10.1038/s41598-024-78394-3DOI Listing

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Article Synopsis
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  • This study introduces a method called multi-fidelity modeling, which combines low-accuracy data with high-accuracy data to improve predictive accuracy for turbulent transport in magnetic fusion plasma.
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