The ability to rapidly screen material performance in the vast space of high entropy alloys is of critical importance to efficiently identify optimal hydride candidates for various use cases. Given the prohibitive complexity of first principles simulations and large-scale sampling required to rigorously predict hydrogen equilibrium in these systems, we turn to compositional machine learning models as the most feasible approach to screen on the order of tens of thousands of candidate equimolar high entropy alloys (HEAs). Critically, we show that machine learning models can predict hydride thermodynamics and capacities with reasonable accuracy (e.g. a mean absolute error in desorption enthalpy prediction of ∼5 kJ molH2−1) and that explainabil...
This work aims to address the challenge of developing interpretable ML-based models when access to l...
Crystal structures of the materials for which critical temperatures were calculated in the paper "Pr...
High-entropy alloy (HEA) catalysts have recently attracted worldwide research interest due to their ...
Solid-state hydrogen storage materials that are optimized for specific use cases could be a crucial ...
Recently, a new class of alloys, namely, high-entropy alloys (HEAs), started to be investigated for ...
An open question in the metal hydride community is whether there are simple, physics-based design ru...
The high entropy alloys have become the most intensely researched materials in recent times. They of...
Metal hydrides have many uses when switching the energy system from fossil fuels to renewable source...
Multi-principal-component alloys have attracted great interest as a novel paradigm in alloy design, ...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
High-entropy alloys are solid solutions of multiple principal elements, capable of reaching composit...
PING Junior 2021 is organized with the support of funds for specific university researc...
High-entropy alloys are solid solutions of multiple principal elements that are capable of reaching ...
Database for machine learning of hydrogen storage materials properties Matthew Witmana, Mark Allend...
The development of multicomponent alloys with target properties poses a significant challenge, owing...
This work aims to address the challenge of developing interpretable ML-based models when access to l...
Crystal structures of the materials for which critical temperatures were calculated in the paper "Pr...
High-entropy alloy (HEA) catalysts have recently attracted worldwide research interest due to their ...
Solid-state hydrogen storage materials that are optimized for specific use cases could be a crucial ...
Recently, a new class of alloys, namely, high-entropy alloys (HEAs), started to be investigated for ...
An open question in the metal hydride community is whether there are simple, physics-based design ru...
The high entropy alloys have become the most intensely researched materials in recent times. They of...
Metal hydrides have many uses when switching the energy system from fossil fuels to renewable source...
Multi-principal-component alloys have attracted great interest as a novel paradigm in alloy design, ...
We formulate a materials design strategy combining a machine learning (ML) surrogate model with expe...
High-entropy alloys are solid solutions of multiple principal elements, capable of reaching composit...
PING Junior 2021 is organized with the support of funds for specific university researc...
High-entropy alloys are solid solutions of multiple principal elements that are capable of reaching ...
Database for machine learning of hydrogen storage materials properties Matthew Witmana, Mark Allend...
The development of multicomponent alloys with target properties poses a significant challenge, owing...
This work aims to address the challenge of developing interpretable ML-based models when access to l...
Crystal structures of the materials for which critical temperatures were calculated in the paper "Pr...
High-entropy alloy (HEA) catalysts have recently attracted worldwide research interest due to their ...