Graph neural network framework for energy mapping of hybrid monte-carlo molecular dynamics simulations of Medium Entropy Alloys
Mashaekh Tausif Ehsan, Saifuddin Zafar, Apurba Sarker, Sourav Das, Suvro, Mohammad Nasim Hasan

TL;DR
This paper introduces a graph neural network framework that models medium-entropy alloys using atomic configurations from Monte Carlo molecular dynamics simulations to accurately predict potential energy and understand local chemical order.
Contribution
It presents a novel graph-based modeling approach for medium-entropy alloys that captures local chemical order and predicts material properties using a graph convolutional neural network.
Findings
GCNN accurately predicts potential energy across configurations
Graph representation effectively captures local chemical environment
Model demonstrates strong performance on unseen data
Abstract
Machine learning (ML) methods have drawn significant interest in material design and discovery. Graph neural networks (GNNs), in particular, have demonstrated strong potential for predicting material properties. The present study proposes a graph-based representation for modeling medium-entropy alloys (MEAs). Hybrid Monte-Carlo molecular dynamics (MC/MD) simulations are employed to achieve thermally stable structures across various annealing temperatures in an MEA. These simulations generate dump files and potential energy labels, which are used to construct graph representations of the atomic configurations. Edges are created between each atom and its 12 nearest neighbors without incorporating explicit edge features. These graphs then serve as input for a Graph Convolutional Neural Network (GCNN) based ML model to predict the system's potential energy. The GCNN architecture effectively…
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Taxonomy
TopicsHigh Entropy Alloys Studies · Machine Learning in Materials Science · Advanced Materials Characterization Techniques
