Enhancing Disruption Prediction through Bayesian Neural Network in KSTAR
Abstract
Disruption in tokamak plasmas, stemming from various instabilities, poses a critical challenge, resulting in detrimental effects on the associated devices. Consequently, the proactive prediction of disruptions to maintain stability emerges as a paramount concern for future fusion reactors. While data-driven methodologies have exhibited notable success in disruption prediction, conventional neural networks within a frequentist approach cannot adequately quantify the uncertainty associated with their predictions, leading to overconfidence. To address this limit, we utilize Bayesian deep probabilistic learning to encompass uncertainty and mitigate false alarms, thereby enhancing the precision of disruption prediction. Leveraging 0D plasma parameters from EFIT and diagnostic data, a Temporal Convolutional Network adept at handling multi-time scale data was utilized. The proposed framework demonstrates proficiency in predicting disruptions, substantiating its effectiveness through successful applications to KSTAR experimental data.
Cite
@article{arxiv.2312.12979,
title = {Enhancing Disruption Prediction through Bayesian Neural Network in KSTAR},
author = {Jinsu Kim and Jeongwon Lee and Jaemin Seo and Young-Chul Ghim and Yeongsun Lee and Yong-Su Na},
journal= {arXiv preprint arXiv:2312.12979},
year = {2023}
}
Comments
18 pages, 15 figures, 6 tables