AINeutralarXiv – CS AI · 8h ago5/10
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Crystal Fractional Graph Neural Network for Energy Prediction of High-Entropy Alloys
Researchers have developed a crystal fractional graph neural network that combines graph neural networks with compositional embeddings to predict the energy of high-entropy alloys, achieving accuracy comparable to first-principles calculations on a dataset of over 1,000 crystal structures. The hybrid architecture addresses a key challenge in materials science by integrating local atomic interactions and global elemental composition, though scalability limitations for larger crystal systems remain.