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Meeting 2024 TMS Annual Meeting & Exhibition
Symposium Frontiers of Materials Award Symposium: Physics-Informed Machine Learning for Modeling and Design of Materials and Manufacturing Processes
Presentation Title A Machine-learning Based Hierarchical Framework to Discover Novel Functional Materials
Author(s) Anjana Anu Talapatra
On-Site Speaker (Planned) Anjana Anu Talapatra
Abstract Scope The compositional and structural variety inherent to oxide perovskites and their fascinating properties spawn wide-ranging applications. The band gap in these materials can be optimally controlled by varying the composition. Here, we use a novel hierarchical screening process, wherein we build four machine learning (ML) models, designed to be applied sequentially to a very large chemical space, to yield novel double oxide perovskite chemistries that are predicted to be experimentally formable, thermodynamically stable and are insulator materials with a significant band gap. We identify a tractable set of promising candidates with high confidence and computationally verify their stability and band gaps. Our multi-step hierarchical screening approach, which may be generalized to investigate other classes of materials in addition to those examined here, provides further impetus to the application of physics-based ML models to the discovery of novel functional materials. We also apply this approach to the case of binary selenides.
Proceedings Inclusion? Planned: None Selected

OTHER PAPERS PLANNED FOR THIS SYMPOSIUM

A Machine-learning Based Hierarchical Framework to Discover Novel Functional Materials
Adaptive Surrogate Models Using Unbalanced Data for Material Design
Interpretability and Generalizability of Constitutive Models using Symbolic Regression
Inverse Design for Crystal Plasticity Model Identification via Physics-informed Neural Networks
Physics-Aware Recurrent Convolutional Neural Networks for Modeling Hotspot Formation and Growth in Energetic Materials
Physics-Informed Machine Learning for Scan Path Optimization

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