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Machine Learning-Guided Discovery of Temperature-Induced Solid-Solid Phase Transitions in Inorganic Materials

Materials Science 2025-06-03 v1

Abstract

Predicting solid-solid phase transitions remains a long-standing challenge in materials science. Solid-solid transformations underpin a wide range of functional properties critical to energy conversion, information storage, and thermal management technologies. However, their prediction is computationally intensive due to the need to account for finite-temperature effects. Here, we present an uncertainty-aware machine-learning-guided framework for high-throughput prediction of temperature-induced polymorphic phase transitions in inorganic crystals. By combining density functional theory calculations with graph-based neural networks trained to estimate vibrational free energies, we screened a curated dataset of approximately 50,000 inorganic compounds and identified over 2,000 potential solid-solid transitions within the technologically relevant temperature interval 300-600 K. Among our key findings, we uncover numerous phase transitions exhibiting large entropy changes (> 300 J K1^{-1} kg1^{-1}), many of which occur near room temperature hence offering strong potential for solid-state cooling applications. We also identify 2121 compounds that exhibit substantial relative changes in lattice thermal conductivity (20-70%) across a phase transition, highlighting them as promising thermal switching materials. Validation against experimental observations and first-principles calculations supports the robustness and predictive power of our approach. Overall, this work establishes a scalable route to discover functional phase-change materials under realistic thermal conditions, and lays the foundation for future high-throughput studies leveraging generative models and expanding open-access materials databases.

Keywords

Cite

@article{arxiv.2506.01449,
  title  = {Machine Learning-Guided Discovery of Temperature-Induced Solid-Solid Phase Transitions in Inorganic Materials},
  author = {Cibrán López and Joshua Ojih and Ming Hu and Josep Lluis Tamarit and Edgardo Saucedo and Claudio Cazorla},
  journal= {arXiv preprint arXiv:2506.01449},
  year   = {2025}
}

Comments

20 pages, 7 figures

R2 v1 2026-07-01T02:53:59.291Z