Rchr
J-GLOBAL ID:202401019623811709   Update date: Jun. 01, 2026

Araki Ryo

アラキ リョウ | Araki Ryo
Affiliation and department:
Job title: Fixed-Term Assistant Professor
Homepage URL  (1): https://ryo-araki.github.io/
Research field  (3): Mathematical physics and basic theory ,  Computational science ,  Fluid engineering
Research keywords  (2): Turbulence ,  Fluid dynamics
Research theme for competitive and other funds  (5):
  • 2026 - 2029 Extracting causal relationships in unsteady aerodynamic flows with information-theoretic machine learning
  • 2025 - 2029 Information-theoretic picture of turbulence and spontaneous stochasticity
  • 2025 - 2028 乱流の自発的確率性と情報理論的描像
  • 2024 - 2026 "Forgetfulness" of developed turbulence and transfer of information
  • 2024 - 2026 「情報」から理解する層流-乱流遷移
Papers (11):
  • Kai Fukami, Ryo Araki. Information-Theoretic Machine Learning for Time-Varying Mode Decomposition of Separated Aerodynamic Flows. AIAA Journal. 2026. 64. 2. 605-613
  • Tomohiro Tanogami, Ryo Araki. Scale-to-scale information flow amplifies turbulent fluctuations. Physical Review Research. 2025
  • Wouter J. T. Bos, Ryo Araki. Equilibrium and nonequilibrium statistics in inhomogeneous and unsteady turbulence. Physical Review Fluids. 2025
  • Shunsuke Someya, Ryo Araki, Takahiro Tsukahara. CNN for scalar-source distance estimation in grid-generated turbulence. Applied Thermal Engineering. 2025
  • Ryo Araki, Alberto Vela-Martín, Adrián Lozano-Durán. Forgetfulness of turbulent energy cascade associated with different mechanisms. Journal of Physics: Conference Series. 2024
more...
MISC (1):
  • Tomohiro Tanogami, Ryo Araki. Information hydrodynamics: Information flow in turbulence. Nagare. 2025. 44. 3. 237-244
Lectures and oral presentations  (66):
  • Information-preserving turbulence model: application to channel turbulence
    (2026)
  • 2次元ゆらぐ乱流の情報熱力学描像と直接数値計算
    (「動的物質科学」キックオフシンポジウム 2026)
  • Information-theoretic picture of turbulence with 'dual causality' concept
    (Fluid Mechanics Seminar Series at Tohoku Aero 2026)
  • Information-theoretic picture of turbulence: cascade and spontaneous stochasticity
    (2026)
  • Transient causal modal analysis of unsteady aerodynamics: A global learning approach
    (The 39th Computational Fluid Dynamics Symposium 2025)
more...
Education (6):
  • 2020 - 2023 École Centrale de Lyon ED 162 : Mécanique, Energétique, Génie Civil, Acoustique
  • 2020 - 2023 Osaka University Graduate School of Engineering Science Department of Mechanical Science and Bioengineering Division of Nonlinear Mechanics
  • 2020 - 2020 Osaka University Graduate School of Engineering Science Department of Mechanical Science and Bioengineering Division of Nonlinear Mechanics
  • 2018 - 2020 Osaka University Graduate School of Engineering Science Department of Mechanical Science and Bioengineering Division of Nonlinear Mechanics
  • 2016 - 2018 Osaka University School of Engineering Science System Science Course
Show all
Professional career (2):
  • Ph. D. (Science) (Osaka University)
  • Doctorat (Mécanique des Fluides) (École Centrale de Lyon)
Work history (1):
  • 2023/10 - 現在 Tokyo University of Science Faculty of Science and Technology
Committee career (2):
  • 2025 - 現在 The Japan Society of Mechanical Engineers Young Members' Group Steering Committee Member
  • - 2025/07 11th International Symposium on Turbulence, Heat and Mass Transfer (THMT'25) Executive Committee
Awards (5):
  • 2025/08 - Journal of Fluid Mechanics Runners-up deserving honourable mention for Emerging Scholar Best paper 2024 Inertial range scaling of inhomogeneous turbulence
  • 2023/12 - The Japan Society of Fluid Mechanics 若手優秀講演表彰
  • 2023 - Fluid Dynamics Research "Highlights of 2023" article Minimal model of quasi-cyclic behaviour in turbulence driven by Taylor-Green forcing
  • 2020/03 - 大阪大学 基礎工学研究科長賞
  • 2018/03 - 日本機械学会 ベストプレゼンテーション賞 閉じた系内の乱流に見られる大規模な時空間変動
Association Membership(s) (3):
The Japan Society of Fluid Mechanics ,  The Physical Society of Japan ,  The Japan Society of Mechanical Engineers
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