Machine learning accelerated discovery of corrosion-resistant high-entropy alloys
Cheng Zeng, Andrew Neils, Jack Lesko, Nathan Post

TL;DR
This paper introduces a physics-informed machine learning framework that accelerates the discovery of corrosion-resistant high-entropy alloys by predicting key properties and identifying optimal compositions efficiently.
Contribution
It develops a novel combination of machine learning models and first-principles data to relate alloy composition to corrosion resistance, enabling high-throughput materials design.
Findings
Successfully predicted corrosion resistance metrics for high-entropy alloys.
Identified composition regions with high corrosion resistance in AlCrFeCoNi alloys.
Predicted properties are consistent with experimental and first-principles data.
Abstract
Corrosion has a wide impact on society, causing catastrophic damage to structurally engineered components. An emerging class of corrosion-resistant materials are high-entropy alloys. However, high-entropy alloys live in high-dimensional composition and configuration space, making materials designs via experimental trial-and-error or brute-force ab initio calculations almost impossible. Here we develop a physics-informed machine-learning framework to identify corrosion-resistant high-entropy alloys. Three metrics are used to evaluate the corrosion resistance, including single-phase formability, surface energy and Pilling-Bedworth ratios. We used random forest models to predict the single-phase formability, trained on an experimental dataset. Machine learning inter-atomic potentials were employed to calculate surface energies and Pilling-Bedworth ratios, which are trained on…
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Taxonomy
TopicsMachine Learning in Materials Science · High Entropy Alloys Studies · Nuclear Materials and Properties
