Multimodal convolutional neural networks for predicting evolution of gyrokinetic simulations

被引:0
|
作者
Honda, Mitsuru [1 ]
Narita, Emi [2 ]
Maeyama, Shinya [3 ]
Watanabe, Tomo-Hiko [3 ]
机构
[1] Kyoto Univ, Grad Sch Engn, Kyoto 6158530, Japan
[2] Natl Inst Quantum Sci & Technol, Naka Fus Inst, Ibaraki, Japan
[3] Nagoya Univ, Dept Phys, Nagoya, Aichi, Japan
基金
日本学术振兴会;
关键词
convolutional neural network; deep learning; GKV gyrokinetic simulation; multimodal model; turbulent heat flux;
D O I
10.1002/ctpp.202200137
中图分类号
O35 [流体力学]; O53 [等离子体物理学];
学科分类号
070204 ; 080103 ; 080704 ;
摘要
Gyrokinetic simulations are required for the quantitative calculation of fluxes due to turbulence, which dominates over other transport mechanisms in tokamaks. However, nonlinear gyrokinetic simulations are computationally expensive. A multimodal convolutional neural network model that reads images and values generated by nonlinear gyrokinetic simulations and predicts electrostatic turbulent heat fluxes was developed to support efficient runs. The model was extended to account for squared electrostatic potential fluctuations, which are proportional to the fluxes in the quasilinear model, as well as images containing fluctuating electron and ion distribution functions and fluctuating electrostatic potentials in wavenumber space. This multimodal model can predict the time and electron and ion turbulent heat fluxes corresponding to the input data. The model trained on the Cyclone base case data successfully predicted times and fluxes not only for its test data, but also for the completely different and unknown JT-60U case, with high accuracy. The predictive performance of the model depended on the similarity of the linear stability of the case used to train the model to the case being predicted.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Convolutional Neural Networks on Assembly Code for Predicting Software Defects
    Anh Viet Phan
    Minh Le Nguyen
    2017 21ST ASIA PACIFIC SYMPOSIUM ON INTELLIGENT AND EVOLUTIONARY SYSTEMS (IES), 2017, : 37 - 42
  • [42] Predicting Occupancy Distributions of Walking Humans with Convolutional Neural Networks
    Doellinger J.
    Spies M.
    Burgard W.
    IEEE Robotics and Automation Letters, 2018, 3 (03) : 1522 - 1528
  • [43] Predicting species distributions in the open ocean with convolutional neural networks
    Morand, Gaetan
    Joly, Alexis
    Rouyer, Tristan
    Lorieul, Titouan
    Barde, Julien
    PEER COMMUNITY JOURNAL, 2024, 4
  • [44] Predicting the Stability of Hierarchical Triple Systems with Convolutional Neural Networks
    Lalande, Florian
    Trani, Alessandro Alberto
    ASTROPHYSICAL JOURNAL, 2022, 938 (01):
  • [45] Predicting the effect of variants on splicing using Convolutional Neural Networks
    Thanapattheerakul, Thanyathorn
    Engchuan, Worrawat
    Chan, Jonathan H.
    PEERJ, 2020, 8
  • [46] Predicting quantum advantage by quantum walk with convolutional neural networks
    Melnikov, Alexey A.
    Fedichkin, Leonid E.
    Alodjants, Alexander
    NEW JOURNAL OF PHYSICS, 2019, 21 (12) : 1V
  • [47] Dual graph convolutional neural network for predicting chemical networks
    Harada, Shonosuke
    Akita, Hirotaka
    Tsubaki, Masashi
    Baba, Yukino
    Takigawa, Ichigaku
    Yamanishi, Yoshihiro
    Kashima, Hisashi
    BMC BIOINFORMATICS, 2020, 21 (Suppl 3)
  • [48] Predicting the Next Process Event Using Convolutional Neural Networks
    Al-Jebrni, Abdulrhman
    Cai, Hongming
    Jiang, Lihong
    PROCEEDINGS OF THE 2018 IEEE INTERNATIONAL CONFERENCE ON PROGRESS IN INFORMATICS AND COMPUTING (PIC), 2018, : 332 - 338
  • [49] Predicting the Distress of Financial Intermediaries using Convolutional Neural Networks
    Taylor, Stacey
    Keselj, Vlado
    2021 IEEE 23RD CONFERENCE ON BUSINESS INFORMATICS, CBI 2021, VOL 2, 2021, : 71 - 77
  • [50] Predicting the future direction of cell movement with convolutional neural networks
    Nishimoto, Shori
    Tokuoka, Yuta
    Yamada, Takahiro G.
    Hiroi, Noriko F.
    Funahashi, Akira
    PLOS ONE, 2019, 14 (09):