Literature DB >> 30996348

Predicting disruptive instabilities in controlled fusion plasmas through deep learning.

Julian Kates-Harbeck1,2,3, Alexey Svyatkovskiy4,5, William Tang6,4.   

Abstract

Nuclear fusion power delivered by magnetic-confinement tokamak reactors holds the promise of sustainable and clean energy1. The avoidance of large-scale plasma instabilities called disruptions within these reactors2,3 is one of the most pressing challenges4,5, because disruptions can halt power production and damage key components. Disruptions are particularly harmful for large burning-plasma systems such as the multibillion-dollar International Thermonuclear Experimental Reactor (ITER) project6 currently under construction, which aims to be the first reactor that produces more power from fusion than is injected to heat the plasma. Here we present a method based on deep learning for forecasting disruptions. Our method extends considerably the capabilities of previous strategies such as first-principles-based5 and classical machine-learning7-11 approaches. In particular, it delivers reliable predictions for machines other than the one on which it was trained-a crucial requirement for future large reactors that cannot afford training disruptions. Our approach takes advantage of high-dimensional training data to boost predictive performance while also engaging supercomputing resources at the largest scale to improve accuracy and speed. Trained on experimental data from the largest tokamaks in the United States (DIII-D12) and the world (Joint European Torus, JET13), our method can also be applied to specific tasks such as prediction with long warning times: this opens up the possibility of moving from passive disruption prediction to active reactor control and optimization. These initial results illustrate the potential for deep learning to accelerate progress in fusion-energy science and, more generally, in the understanding and prediction of complex physical systems.

Entities:  

Year:  2019        PMID: 30996348     DOI: 10.1038/s41586-019-1116-4

Source DB:  PubMed          Journal:  Nature        ISSN: 0028-0836            Impact factor:   49.962


  5 in total

Review 1.  Applications and Techniques for Fast Machine Learning in Science.

Authors:  Allison McCarn Deiana; Nhan Tran; Joshua Agar; Michaela Blott; Giuseppe Di Guglielmo; Javier Duarte; Philip Harris; Scott Hauck; Mia Liu; Mark S Neubauer; Jennifer Ngadiuba; Seda Ogrenci-Memik; Maurizio Pierini; Thea Aarrestad; Steffen Bähr; Jürgen Becker; Anne-Sophie Berthold; Richard J Bonventre; Tomás E Müller Bravo; Markus Diefenthaler; Zhen Dong; Nick Fritzsche; Amir Gholami; Ekaterina Govorkova; Dongning Guo; Kyle J Hazelwood; Christian Herwig; Babar Khan; Sehoon Kim; Thomas Klijnsma; Yaling Liu; Kin Ho Lo; Tri Nguyen; Gianantonio Pezzullo; Seyedramin Rasoulinezhad; Ryan A Rivera; Kate Scholberg; Justin Selig; Sougata Sen; Dmitri Strukov; William Tang; Savannah Thais; Kai Lukas Unger; Ricardo Vilalta; Belina von Krosigk; Shen Wang; Thomas K Warburton
Journal:  Front Big Data       Date:  2022-04-12

Review 2.  The data-driven future of high-energy-density physics.

Authors:  Peter W Hatfield; Jim A Gaffney; Gemma J Anderson; Suzanne Ali; Luca Antonelli; Suzan Başeğmez du Pree; Jonathan Citrin; Marta Fajardo; Patrick Knapp; Brendan Kettle; Bogdan Kustowski; Michael J MacDonald; Derek Mariscal; Madison E Martin; Taisuke Nagayama; Charlotte A J Palmer; J Luc Peterson; Steven Rose; J J Ruby; Carl Shneider; Matt J V Streeter; Will Trickey; Ben Williams
Journal:  Nature       Date:  2021-05-19       Impact factor: 49.962

3.  Information Geometric Theory in the Prediction of Abrupt Changes in System Dynamics.

Authors:  Adrian-Josue Guel-Cortez; Eun-Jin Kim
Journal:  Entropy (Basel)       Date:  2021-05-31       Impact factor: 2.524

4.  Machine learning and big scientific data.

Authors:  Tony Hey; Keith Butler; Sam Jackson; Jeyarajan Thiyagalingam
Journal:  Philos Trans A Math Phys Eng Sci       Date:  2020-01-20       Impact factor: 4.226

5.  Machine learning and serving of discrete field theories.

Authors:  Hong Qin
Journal:  Sci Rep       Date:  2020-11-09       Impact factor: 4.996

  5 in total

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