DOE Data Explorer title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Outlier classification using autoencoders: application for fluctuation driven flows in fusion plasmas

Abstract

Understanding the statistics of fluctuation driven flows in the boundary layer of magnetically confined plasmas is desired to accurately model the lifetime of the vacuum vessel components. Mirror Langmuir probes (MLPs) are a novel diagnostic that uniquely allow us to sample the plasma parameters on a time scale shorter than the characteristic time scale of their fluctuations. Sudden large-amplitude fluctuations in the plasma degrade the precision and accuracy of the plasma parameters reported by MLPs for cases in which the probe bias range is of insufficient amplitude. While some data samples can readily be classified as valid and invalid, we find that such a classification may be ambiguous for up to 40% of data sampled for the plasma parameters and bias voltages considered in this study. In this contribution, we employ an autoencoder (AE) to learn a low-dimensional representation of valid data samples. By definition, the coordinates in this space are the features that mostly characterize valid data. Ambiguous data samples are classified in this space using standard classifiers for vectorial data. In this way, we avoid defining complicated threshold rules to identify outliers, which require strong assumptions and introduce biases in the analysis. By removing the outliers that aremore » identified in the latent low-dimensional space of the AE, we find that the average conductive and convective radial heat fluxes are between approximately 5% and 15% lower as when removing outliers identified by threshold values. For contributions to the radial heat flux due to triple correlations, the difference is up to 40%.« less

Authors:
; ; ;
Publication Date:
DOE Contract Number:  
FC02-99ER54512
Research Org.:
Massachusetts Inst. of Technology (MIT), Cambridge, MA (United States). Plasma Science and Fusion Center
Sponsoring Org.:
USDOE Office of Science (SC), Fusion Energy Sciences (FES)
Subject:
70 PLASMA PHYSICS AND FUSION TECHNOLOGY
OSTI Identifier:
1882649
DOI:
https://doi.org/10.7910/DVN/SKEHRJ

Citation Formats

Kube, R., Bianchi, F. M., Brunner, D., and LaBombard, B. Outlier classification using autoencoders: application for fluctuation driven flows in fusion plasmas. United States: N. p., 2021. Web. doi:10.7910/DVN/SKEHRJ.
Kube, R., Bianchi, F. M., Brunner, D., & LaBombard, B. Outlier classification using autoencoders: application for fluctuation driven flows in fusion plasmas. United States. doi:https://doi.org/10.7910/DVN/SKEHRJ
Kube, R., Bianchi, F. M., Brunner, D., and LaBombard, B. 2021. "Outlier classification using autoencoders: application for fluctuation driven flows in fusion plasmas". United States. doi:https://doi.org/10.7910/DVN/SKEHRJ. https://www.osti.gov/servlets/purl/1882649. Pub date:Wed Jun 02 00:00:00 EDT 2021
@article{osti_1882649,
title = {Outlier classification using autoencoders: application for fluctuation driven flows in fusion plasmas},
author = {Kube, R. and Bianchi, F. M. and Brunner, D. and LaBombard, B.},
abstractNote = {Understanding the statistics of fluctuation driven flows in the boundary layer of magnetically confined plasmas is desired to accurately model the lifetime of the vacuum vessel components. Mirror Langmuir probes (MLPs) are a novel diagnostic that uniquely allow us to sample the plasma parameters on a time scale shorter than the characteristic time scale of their fluctuations. Sudden large-amplitude fluctuations in the plasma degrade the precision and accuracy of the plasma parameters reported by MLPs for cases in which the probe bias range is of insufficient amplitude. While some data samples can readily be classified as valid and invalid, we find that such a classification may be ambiguous for up to 40% of data sampled for the plasma parameters and bias voltages considered in this study. In this contribution, we employ an autoencoder (AE) to learn a low-dimensional representation of valid data samples. By definition, the coordinates in this space are the features that mostly characterize valid data. Ambiguous data samples are classified in this space using standard classifiers for vectorial data. In this way, we avoid defining complicated threshold rules to identify outliers, which require strong assumptions and introduce biases in the analysis. By removing the outliers that are identified in the latent low-dimensional space of the AE, we find that the average conductive and convective radial heat fluxes are between approximately 5% and 15% lower as when removing outliers identified by threshold values. For contributions to the radial heat flux due to triple correlations, the difference is up to 40%.},
doi = {10.7910/DVN/SKEHRJ},
journal = {},
number = ,
volume = ,
place = {United States},
year = {2021},
month = {6}
}

Works referencing / citing this record:

Outlier classification using autoencoders: Application for fluctuation driven flows in fusion plasmas
journal, January 2019