利用机器学习模拟托卡马克分流器等离子体

G. Holt, A. Keats, Stanislas Pamela, Mike Kryjak, A. Agnello, N. Amorisco, Benjamin Dudson, M. Smyrnakis
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引用次数: 1

摘要

未来的托卡马克装置旨在创造与发电厂运行相关的条件,必须考虑减轻对分流器中等离子体面对部件的损害的策略。MAST-U 托卡马克运行的目标之一就是通过研究有助于等离子体稳定脱离的先进分流器配置,为这些考虑提供信息。机器设计、方案规划和分离控制都将大大受益于能够在给定一些输入参数的情况下快速计算方案相关量的工具。本文介绍了一种生成大型模拟脱离层数据集的方法,并将其应用于生成 MAST-U 托卡马克的稳态赫尔墨斯-3 模拟数据集。利用贝叶斯超参数优化方法构建了一个机器学习模型,以预测给定控制相关输入特征的可诊断输出量。由此产生的性能最佳的模型是以馈向神经网络为基础的,在预测转发器目标处的电子温度和碳杂质辐射前沿位置时达到了很高的精度,在推理模式下运行时间约为1毫秒。应用了解释模型预测的技术,并对上游条件进行了高分辨率参数扫描,以证明使用仿真器快速生成准确预测的实用性。这项工作标志着在设计机器学习驱动的托卡马克排气模拟代码仿真器方面向前迈进了一步,仿真器的运行模式与分流器分离控制和等离子体方案设计相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tokamak divertor plasma emulation with machine learning
Future tokamak devices that aim to create conditions relevant to power plant operations must consider strategies for mitigating damage to plasma facing components in the divertor. One of the goals of MAST-U tokamak operations is to inform these considerations by researching advanced divertor configurations that aid stable plasma detachment. Machine design, scenario planning and detachment control would all greatly benefit from tools that enable rapid calculation of scenario-relevant quantities given some input parameters. This paper presents a method for generating large, simulated scrape-off layer data sets, which was applied to generate a data set of steady-state Hermes-3 simulations of the MAST-U tokamak. A machine learning model was constructed using a Bayesian approach to hyperparameter optimisation to predict diagnosable output quantities given control-relevant input features. The resulting best-performing model, which is based on a feedfoward neural network, achieves high accuracy when predicting electron temperature at the divertor target and carbon impurity radiation front position and runs in around 1 ms in inference mode. Techniques for interpreting the predictions made by the model were applied, and a high-resolution parameter scan of upstream conditions was performed to demonstrate the utility of rapidly generating accurate predictions using the emulator. This work represents a step forward in the design of machine learning-driven emulators of tokamak exhaust simulation codes in operational modes relevant to divertor detachment control and plasma scenario design.
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