论文标题

将AI/深度学习干扰预测器实施到等离子体控制系统中

Implementation of AI/Deep Learning Disruption Predictor into a Plasma Control System

论文作者

Tang, William, Dong, Ge, Barr, Jayson, Erickson, Keith, Conlin, Rory, Boyer, M. Dan, Kates-Harbeck, Julian, Felker, Kyle, Rea, Cristina, Logan, Nikolas C., Svyatkovskiy, Alexey, Feibush, Eliot, Abbatte, Joseph, Clement, Mitchell, Grierson, Brian, Nazikian, Raffi, Lin, Zhihong, Eldon, David, Moser, Auna, Maslov, Mikhail

论文摘要

本文报告了基于融合复发性神经网络(FRNN)的最先进的深度学习中断预测模型的进步,最初引入了2019年自然出版物。特别是,该预测变量现在不仅具有破坏分数,作为即将造成破坏的可能性的指标,而且还具有实时的灵敏度评分,以表明迫在眉睫的破坏的根本原因。这为深度学习模型增加了有价值的物理解释性,并且可以为控制执行器提供有用的指导,因为它已被完全实施到现代的等离子体控制系统(PCS)中。进步是从现代深度学习中断预测到实时控制的重要一步,并带来了与未来燃烧的等离子体系统相关的新型AI-a-Sable-ables能力。我们的分析使用在早期自然出版物中审查的JET和DIII-D的大量数据。除了预计射击会破坏何时外,本文还解决了通过进行敏感性研究的原因。因此,FRNN被扩展为使用更多的信息渠道,包括测得的DIII-D信号,例如(i)与n = 1模式相关的N1RMS信号,包括有限频率,包括新古典撕裂模式和锯齿动态,(ii)批次计的数据指示等上杂质的含量,以及(III)Q-MIN,Q-MIN,Q-MIN,Q-MIN,Q-MIN的确保效果。模式。其他渠道和可解释性功能扩展了深度学习FRNN软件提供有关中断子类别的信息的能力,以及在血浆控制系统中为执行器提供更精确和直接的指导。

This paper reports on advances to the state-of-the-art deep-learning disruption prediction models based on the Fusion Recurrent Neural Network (FRNN) originally introduced a 2019 Nature publication. In particular, the predictor now features not only the disruption score, as an indicator of the probability of an imminent disruption, but also a sensitivity score in real-time to indicate the underlying reasons for the imminent disruption. This adds valuable physics-interpretability for the deep-learning model and can provide helpful guidance for control actuators now that it is fully implemented into a modern Plasma Control System (PCS). The advance is a significant step forward in moving from modern deep-learning disruption prediction to real-time control and brings novel AI-enabled capabilities relevant for application to the future burning plasma ITER system. Our analyses use large amounts of data from JET and DIII-D vetted in the earlier NATURE publication. In addition to when a shot is predicted to disrupt, this paper addresses reasons why by carrying out sensitivity studies. FRNN is accordingly extended to use many more channels of information, including measured DIII-D signals such as (i) the n1rms signal that is correlated with the n =1 modes with finite frequency, including neoclassical tearing mode and sawtooth dynamics, (ii) the bolometer data indicative of plasma impurity content, and (iii) q-min, the minimum value of the safety factor relevant to the key physics of kink modes. The additional channels and interpretability features expand the ability of the deep learning FRNN software to provide information about disruption subcategories as well as more precise and direct guidance for the actuators in a plasma control system.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源