研究者業績

Hayato Shiba

  (芝 隼人)

Profile Information

Affiliation
Associate Professor, Graduate School of Information Science, University of Hyogo
Degree
博士(理学)(Kyoto University)
修士(工学)(The University of Tokyo)

Researcher number
20549563
ORCID ID
 https://orcid.org/0000-0002-4170-3699
J-GLOBAL ID
201601017035878053
Researcher ID
B-6888-2009
researchmap Member ID
7000014748

External link

Major Papers

 37
  • Hayato Shiba, Masatoshi Hanai, Toyotaro Suzumura, Takashi Shimokawabe
    The Journal of Chemical Physics, 158(8) 084503, Feb 28, 2023  Peer-reviewedLead authorCorresponding author
    Recent developments in machine learning have enabled accurate predictions of the dynamics of slow structural relaxation in glass-forming systems. However, existing machine learning models for these tasks are mostly designed such that they learn a single dynamic quantity and relate it to the structural features of glassy liquids. In this study, we propose a graph neural network model, “BOnd TArgeting Network,” that learns relative motion between neighboring pairs of particles, in addition to the self-motion of particles. By relating the structural features to these two different dynamical variables, the model autonomously acquires the ability to discern how the self motion of particles undergoing slow relaxation is affected by different dynamical processes, strain fluctuations and particle rearrangements, and thus can predict with high precision how slow structural relaxation develops in space and time.
  • Hayato Shiba, Takeshi Kawasaki, Kang Kim
    Physical Review Letters, 123(26) 265501, Dec 23, 2019  Peer-reviewedLead authorCorresponding author
  • Hayato Shiba, Yasunori Yamada, Takeshi Kawasaki, Kang Kim
    PHYSICAL REVIEW LETTERS, 117(24) 245701, Dec, 2016  Peer-reviewed
    By using large-scale molecular dynamics simulations, the dynamics of two-dimensional (2D) supercooled liquids turns out to be dependent on the system size, while the size dependence is not pronounced in three-dimensional (3D) systems. It is demonstrated that the strong system-size effect in 2D amorphous systems originates from the enhanced fluctuations at long wavelengths which are similar to those of 2D crystal phonons. This observation is further supported by the frequency dependence of the vibrational density of states, consisting of the Debye approximation in the low-wave-number limit. However, the system-size effect in the intermediate scattering function becomes negligible when the length scale is larger than the vibrational amplitude. This suggests that the finite-size effect in a 2D system is transient and also that the structural relaxation itself is not fundamentally different from that in a 3D system. In fact, the dynamic correlation lengths estimated from the bond-breakage function, which do not suffer from those enhanced fluctuations, are not size dependent in either 2D or 3D systems.
  • Hayato Shiba, Hiroshi Noguchi, Jean-Baptiste Fournier
    SOFT MATTER, 12(8) 2373-2380, 2016  Peer-reviewed
    Three types of surface tensions can be defined for lipid membranes: the internal tension, sigma, conjugated to the real membrane area in the Hamiltonian, the mechanical frame tension, tau, conjugated to the projected area, and the "fluctuation tension", r, obtained from the fluctuation spectrum of the membrane height. We investigate these surface tensions by means of a Monge gauge lattice Monte Carlo simulation involving the exact, nonlinear, Helfrich Hamiltonian and a measure correction for the excess entropy of the Monge gauge. Our results for the relation between s and t agrees well with the theoretical prediction of [J.-B. Fournier and C. Barbetta, Phys. Rev. Lett., 2008, 100, 078103] based on a Gaussian approximation. This provides a valuable knowledge of t in the standard Gaussian models where the tension is controlled by s. However, contrary to the conjecture in the above paper, we find that r exhibits no significant difference from t over more than five decades of tension. Our results appear to be valid in the thermodynamic limit and are robust to changing the ensemble in which the membrane area is controlled.

Misc.

 11

Presentations

 63

Teaching Experience

 8

Research Projects

 9

Social Activities

 2