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A Deep Neural Network Potential Study on the Mechanical and Thermophysical Properties of β-HMX Molecular Crystal

  • Jiyuan Wei
  • , Yifeng Dong*
  • , Teng Zhang
  • , Hao Liu
  • , Yao Long
  • , Ying Li*
  • , Jun Chen*
  • *Corresponding author for this work
  • Beijing Institute of Technology
  • IAPCM
  • Peking University

Research output: Contribution to journalArticlepeer-review

Abstract

Neural network potentials (NNPs) provide an efficient and accurate approach for predicting the mechanical and thermophysical properties of high-energy-density materials (HEDMs) under extreme temperature and pressure conditions, where experimental characterization is often limited and first-principles simulations become computationally demanding. In this work, an NNP for HEDMs is developed within a new active-learning framework that automatically eliminates structurally redundant configurations. The resulting NNP predicts the mechanical and thermophysical properties of β-cyclotetramethylene-tetranitramine (β-HMX) with density functional theory (DFT)-level accuracy while achieving orders-of-magnitude improvements in computational efficiency. The predicted bulk modulus of β-HMX at zero pressure agrees with experimental measurements within 13%, representing a substantial improvement over the classical molecular dynamics. Likewise, the volumetric thermal expansion coefficient α, constant-pressure heat capacity Cp, and constant-volume heat capacity Cv are all reproduced with deviations below 1%, demonstrating quantitative agreement with experiments. Beyond reproducing known benchmarks, the NNP enables efficient mapping of the coupled pressure–temperature dependence of thermophysical properties. Specifically, α decreases with pressure in two distinct regimes: a rapid drop at 0–6 GPa, which correlates with densification and the suppression of low-frequency phonon modes, followed by a more gradual decline at higher pressures where phonon stiffening becomes more uniform. Overall, this work addresses an important gap in the characterization of temperature- and pressure-dependent mechanical and thermophysical properties of HEDMs. The proposed training strategy provides a transferable framework for modeling the thermomechanical responses under extreme conditions.

Original languageEnglish
Pages (from-to)29733-29747
Number of pages15
JournalACS Omega
Volume11
Issue number20
DOIs
Publication statusPublished - 26 May 2026
Externally publishedYes

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