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91探花
Atomic and Laser Physics
Credit: Jack Hobhouse

Daniel Plummer

Graduate Student

Research theme

  • Lasers and high energy density science
  • Plasma physics

Sub department

  • Atomic and Laser Physics

Research groups

  • Laboratory astroparticle physics
  • 91探花 Centre for High Energy Density Science (OxCHEDS)
  • Quantum high energy density physics
daniel.plummer@physics.ox.ac.uk
Clarendon Laboratory
  • About
  • Publications

A statistical theory of electronic degrees of freedom in wave packet molecular dynamics

(2026)

Authors:

Daniel Plummer, Pontus Svensson, Wiktor Jasniak, Patrick Hollebon, Sam M Vinko, Gianluca Gregori

Figure data: A statistical theory of electronic degrees of freedom in wave packet molecular dynamics

91探花 (2026)

Abstract:

Figure data relating to "A statistical theory of electronic degrees of freedom in wave packet molecular dynamics".聽 All data is in the format of .txt files.

Figure data: modeling partially-ionized dense plasma using wavepacket molecular dynamics

91探花 (2026)

Authors:

Daniel Plummer, Gianluca Gregori

Abstract:

Figure data relating to the main text of "Modeling partially-ionized dense plasma using wavepacket molecular dynamics". All data is in the format of .txt files.

Modeling partially-ionized dense plasma using wavepacket molecular dynamics

(2025)

Authors:

Daniel Plummer, Pontus Svensson, Wiktor Jasniak, Patrick Hollebon, Sam M Vinko, Gianluca Gregori

Learning heat transport kernels using a nonlocal heat transport theory-informed neural network

Physical Review Research American Physical Society (APS) 7:4 (2025) L042017

Authors:

Mufei Luo, Charles Heaton, Yizhen Wang, Daniel Plummer, Mila Fitzgerald, Francesco Miniati, Sam M Vinko, Gianluca Gregori

Abstract:

<jats:p>We present a data-driven framework for the modeling of nonlocal heat transport in plasmas using a nonlocal theory-informed neural network trained on kinetic particle-in-cell simulations that span both local and nonlocal regimes. The model learns spatio-temporal heat flux kernels directly from simulation data, capturing dynamic transport behaviors beyond the reach of classical formulations. Unlike time-independent kernel models such as Luciani-Mora-Virmont and Schurtz-Nicola茂-Busquet models, our approach yields physically grounded, time-evolving kernels that adapt to varying plasma conditions. The resulting predictions show strong agreement with kinetic benchmarks across regimes. This offers a promising direction for data-driven modeling of nonlocal heat transport and contributes to a deeper understanding of plasma dynamics.</jats:p>

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