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Application of interpretable machine learning for cross-diagnostic inference on the ST40 spherical tokamak

Published 26 Jul 2024 in physics.plasm-ph, physics.app-ph, and physics.ins-det | (2407.18741v1)

Abstract: Machine learning models are exceptionally effective in capturing complex non-linear relationships of high-dimensional datasets and making accurate predictions. However, their intrinsic black-box'' nature makes it difficult to interpret them or guaranteesafe behavior'' when deployed in high-risk applications such as feedback control, healthcare and finance. This drawback acts as a significant barrier to their wider application across many scientific and industrial domains where the interpretability of the model predictions is as important as accuracy. Leveraging the latest developments in interpretable machine learning, we develop a method to parameterise black-box'' models, effectively transforming them intogrey-box'' models. We apply this approach to plasma diagnostics by creating a parameterised synthetic Soft X-Ray imaging $-$ Thomson Scattering diagnostic, which predicts high temporal resolution electron temperature and density profiles from the measured soft X-ray emission. The grey-box'' model predictions are benchmarked against the trainedblack-box'' models as well as a diverse range of plasma conditions. Our model-agnostic approach can be applied to various machine learning architectures, enabling direct comparisons of model interpretations.

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