MRS Meetings and Events

 

MT01.09.23 2024 MRS Spring Meeting

N-Body Fourier-Sampled Kernel for Machine Learning Potential

When and Where

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

Flex Hall C, Level 2, Summit

Presenter

Co-Author(s)

Alexandre Dézaphie1,2,Anruo Zhong1,Clovis Lapointe1,Alexandra Goryaeva1,Jerome Creuze2,Mihai-Cosmin Marinica1

CEA1,ICMMO2

Abstract

Alexandre Dézaphie1,2,Anruo Zhong1,Clovis Lapointe1,Alexandra Goryaeva1,Jerome Creuze2,Mihai-Cosmin Marinica1

CEA1,ICMMO2
Irradiation induces the formation of vacancy and interstitial defects in crystalline materials, which can aggregate into larger clusters. The structure and mobility of self-interstitial clusters remain a largely unresolved issue. For the past 60 years, the scientific community has regarded the formation of interstitial clusters in metallic materials as an accumulation of mono-interstitials that, through diffusion, can aggregate into 2D dislocation loops with a well-defined Burgers vector, progressively growing to observable nanoscale sizes. Recently, we have shown that interstitial clusters in face centered cubic (FCC) metals can aggregate into 3D objects with a well-defined underlying crystallographic structure that ultimately dissociates into dislocation loops [1]. This results complete the puzzle of compact phase accumulation under irradiation, previously emphasized in body centered cubic metals (BCC) [2] and seems to be a general phenomenon.<br/>Further understanding the aging of these newly discovered nano-phases requires precise, large-scale molecular dynamics simulations. Studying the recombination mechanism of atomic scale defects into dislocations, as well as dislocation maturation, necessitates the development of new interatomic potentials. Machine learning potentials offer a compelling solution for atomistic simulations due to their unique ability to balance precision with computational efficiency. Therefore, we have embarked on the development of an innovative machine learning potential within the framework of kernel regression. The strength of our method is derived from: (i) introducing a novel descriptor that captures the many-body aspects of the metallic interatomic force fields, up to 5-body terms. To maintain invariance within the description of this local atomic environment, we employ and reformulate the permutation-invariant polynomials [3]. And (ii) solving the kernel regression in the descriptor space through the kernel-sampled Fourier transform method, avoiding the need for large matrix inversion. This force field was implemented in the Machine Learning Dynamics framework [4]. The intriguing aspect here is that while each of these approaches has previously existed independently, their integration marks a potential watershed moment, ushering in a new horizon of opportunities for atomistic simulations.<br/>To investigate the mechanism governing the formation of compact clusters within FCC and BCC crystals, we conducted a series of simulations based on the newly developed interatomic potential. The kinetics of these processes were delineated through extensive molecular dynamics simulations at finite temperatures in Fe, Ni, and Al. Furthermore, we assessed the relative stability of these clusters through free energy calculations [5]. Lastly, we are actively engaged in the pursuit of intermediate states within the recombination mechanism of these nanophases. To achieve this, we will systematically explore the complex energetic landscape of these clusters at 0 K.<br/>[1] A. M. Goryaeva, C. Domain, A. Chartier, A. Dézaphie, T. D. Swinburne, K. Ma, M. Loyer-Prost, J. Creuze, M.-C. Marinica, Nat Commun 14, 3003 (2023).<br/>[2] M.-C. Marinica, F. Willaime, and J.-P. Crocombette, Phys. Rev. Lett. 108, 025501 (2012)<br/>[3] C. van der Oord, G. Dusson, G. Csányi, and C. Ortner, Mach. Learn.: Sci. Technol. 1 015004 (2020)<br/>[4] M.-C. Marinica, A. M. Goryaeva, T. D. Swinburne <i>et al</i>, MiLaDy - Machine Learning Dynamics, CEA Saclay, 2015-2023: <u>https://ai-atoms.github.io/milady/</u> ;<br/>[5] A. Zhong, C. Lapointe, A. M. Goryaeva, J. Baima, M. Athènes, and M.-C. Marinica,, Phys. Rev. Mater. <b>7</b>, 023802 (2023)

Keywords

elastic properties

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

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MRS publishes with Springer Nature