MRS Meetings and Events

 

MT01.09.05 2024 MRS Spring Meeting

High-Accurate and -Efficient Potential for BCC Iron based on The Physically Informed Artificial Neural Networks

When and Where

Apr 25, 2024
5:00pm - 7:00pm

Flex Hall C, Level 2, Summit

Presenter

Co-Author(s)

Meng Zhang1,Koki Hibi1,Junya Inoue1

The University of Tokyo1

Abstract

Meng Zhang1,Koki Hibi1,Junya Inoue1

The University of Tokyo1
Atomic forces and energies, calculated by interatomic potential, are fundamental components of molecular dynamics (MD) and Monte Carlo (MC) simulations. Compared with traditional potential, machine learning (ML) potentials trained on extensive DFT databases offer enhanced accuracy in predicting physical and chemical properties of materials, but their transferability often faces constraints. To address this limitation, physically informed neural network (PINN) potentials have emerged. These models synergistically combine the strengths of ML with physics-based bond-order interatomic potentials, aiming for both improved accuracy and broader applicability. However, a major hurdle remains: the low performance of PINN potentials, hindering large-scale simulations. This work introduces a novel approach that significantly improves the performance of PINN potentials. The developed PINN potential for body-centered cubic (BCC) iron demonstrates exceptional accuracy in property predictions while boasting remarkable computational efficiency. Its performance overcomes both 12-MPI CPU-only ML potentials and GPU-accelerated ML potentials by achieving speedups of 168x and 22x, respectively. The proposed approach has a potential to provide a powerful way to develop high-performance and high-accuracy potentials even in the other systems.

Symposium Organizers

Raymundo Arroyave, Texas A&M Univ
Elif Ertekin, University of Illinois at Urbana-Champaign
Rodrigo Freitas, Massachusetts Institute of Technology
Aditi Krishnapriyan, UC Berkeley

Session Chairs

Chris Bartel
Rodrigo Freitas
Sara Kadkhodaei
Wenhao Sun

In this Session

MT01.09.01
Rapid Discovery of Lightweight Cellular Crashworthy Solids for Battery Electric Vehicles using Artificial Intelligence and Finite Element Modeling

MT01.09.02
Chemical Environment Modeling Theory: Revolutionizing Machine Learning Force Field with Flexible Reference Points

MT01.09.03
A Self-Improvable Generative AI Platform for the Discovery of Solid Polymer Electrolytes with High Conductivity

MT01.09.04
Adaptive Loss Weighting for Machine Learning Interatomic Potentials

MT01.09.05
High-Accurate and -Efficient Potential for BCC Iron based on The Physically Informed Artificial Neural Networks

MT01.09.06
Molecular Dynamics Simulation of HF Etching of Amorphous Si3N4 Using Neural Network Potential

MT01.09.07
Deep Potential Model for Analyzing Enhancement of Lithium Dynamics at Ionic Liquid and Perovskite (BaTiO3) Interface

MT01.09.08
Autonomous AI generator for Machine Learning Interatomic Potentials

MT01.09.09
Capturing The Lone Pair Interactions in BaSnF4 Using Machine Learning Potential

MT01.09.10
Benchmarking, Visualization and Hyperparameter Optimization of UF3 to Enhance Molecular Dynamics Simulations

View More »

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