TY - JOUR AU - Lauren Way AU - Veronique Charbonnier AU - Julien O Fadonougbo AU - Rebecca Clulow AU - Lei Lei AU - Sanliang Ling AU - David Grant AU - Martin Dornheim AU - Tanumoy Banerjee AU - Hanna Breunig AU - Claudia Zlotea AU - Andrew J. E Rowberg AU - Pin-Wen Guan AU - Vitalie Stavila AU - Mark D Allendorf AU - Martin Sahlberg AU - Kouji Sakaki AU - Norman C Bartelt AU - Matthew D Witman AB -
Quantitatively accurate computational predictions of metal hydride thermodynamics are challenging but critical for alloy performance optimization across a multitude of technological domains, including hydrogen storage, compression, purification, and getters. Recent machine learning approaches have demonstrated great success in this area, but can potentially suffer from several shortcomings since they rely on imbalanced experimental training data and can have poor out-of-distribution (ood) test performance. Here we circumvent such pitfalls by developing a computationally efficient, first principles-based workflow for direct prediction of metal hydride phase equilibrium, i.e., the pressure-composition-temperature (PCT) diagram. We then demonstrate its utility on predicting low stability hydrides derived from compositionally complex C14 Laves phase AB2 alloys. Specifically, we computationally predict and then experimentally validate an AB2 alloy series (z < 0.6 for Ti2−zZrzCrMnFeNi) with ideal hydriding thermodynamics for a two-stage metal hydride-based compressor for pressurizing boil off from liquefied hydrogen. Importantly, this study lays the groundwork for accurate and efficient discovery/optimization of ood, low-stability hydrides for which purely data-driven approaches lack sufficient accuracy.
BT - Journal of Materials Chemistry A DA - 08/12/2025 DO - 10.1039/d5ta06645j IS - 5 N2 -Quantitatively accurate computational predictions of metal hydride thermodynamics are challenging but critical for alloy performance optimization across a multitude of technological domains, including hydrogen storage, compression, purification, and getters. Recent machine learning approaches have demonstrated great success in this area, but can potentially suffer from several shortcomings since they rely on imbalanced experimental training data and can have poor out-of-distribution (ood) test performance. Here we circumvent such pitfalls by developing a computationally efficient, first principles-based workflow for direct prediction of metal hydride phase equilibrium, i.e., the pressure-composition-temperature (PCT) diagram. We then demonstrate its utility on predicting low stability hydrides derived from compositionally complex C14 Laves phase AB2 alloys. Specifically, we computationally predict and then experimentally validate an AB2 alloy series (z < 0.6 for Ti2−zZrzCrMnFeNi) with ideal hydriding thermodynamics for a two-stage metal hydride-based compressor for pressurizing boil off from liquefied hydrogen. Importantly, this study lays the groundwork for accurate and efficient discovery/optimization of ood, low-stability hydrides for which purely data-driven approaches lack sufficient accuracy.
PB - Royal Society of Chemistry (RSC) PY - 2026 SP - 2967 EP - 2976 T2 - Journal of Materials Chemistry A TI - Efficiently predicting pressure-composition-temperature diagrams to discover low-stability metal hydrides UR - https://doi.org/10.1039/d5ta06645j VL - 14 SN - 2050-7488, 2050-7496 ER -