Supervised learning approaches to modeling pedestal density

N/ACitations
Citations of this article
8Readers
Mendeley users who have this article in their library.

This article is free to access.

Abstract

Pedestals are the key to conventional high performance plasma scenarios in tokamaks. However, high fidelity simulations of pedestal plasmas are extremely challenging due to the multiple physical processes and scales that are encompassed by tokamak pedestals. The leading paradigm for predicting the pedestal top pressure is encompassed by EPED-like models. However, EPED does not predict the pedestal top density, n e , p e d , but requires it as an input. EUROPED (Saarelma et al 2019 Phys. Plasmas 26 072501) employs simplified models, such as log-linear regression, to constrain n e , p e d with tokamak machine control parameters in an EPED-like model. However, these simplified models for n e , p e d often show disagreements with experimental observations and do not use all of the available numerical and categorical machine control information. In this work it is observed that using the same input parameters, decision tree ensembles and deep learning models improves the predictive quality of n e , p e d by about 23% relative to that obtained with log-linear scaling laws, measured by root mean square error. Including all of the available tokamak machine control parameters, both numerical and categorical, leads to further improvement of about 13%. Finally, predictive quality was tested when including global normalized plasma pressure and effective charge state as inputs, as these parameters are known to impact pedestals. Surprisingly, these parameters lead to only a few percent further improvement of the predictive quality. The corresponding code for this analysis can be found at github.com/fusionby2030/supervised_learning_jetpdb.

Author supplied keywords

Cite

CITATION STYLE

APA

Kit, A., Järvinen, A. E., Frassinetti, L., & Wiesen, S. (2023). Supervised learning approaches to modeling pedestal density. Plasma Physics and Controlled Fusion, 65(4). https://doi.org/10.1088/1361-6587/acb3f7

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Save time finding and organizing research with Mendeley

Sign up for free