3700 O'Hara Street, Pittsburgh, PA 15261

 

Title: Predicting Atomic Structure of Multi-metallic Nanoparticles with Physics-based Machine Learning

 

Abstract: Metal nanoparticles (NPs) find tremendous application in various fields, including catalysis, biomedicine, and electronics, due to their unique physicochemical properties arising from their morphology (i.e., size and shape) and composition.  The chemical ordering of NPs, consisting of more than one metal, is crucial for optimizing their application performance, including stability. Traditionally, Density Functional Theory (DFT) is used to investigate NP stability, but it is computationally expensive, limited to small systems and cannot be applied to multi-metallic NPs where the materials space is enormous. To address this, recent efforts coupled a physics-based model (Bond-Centric Model, BCM) with a developed genetic algorithm (GA) to optimize the chemical ordering of NPs leading to minimum (most exothermic) cohesive energies (CEs). Central to this approach is the calculation of weighting factors that scale the monometallic bond strength to describe that of the bimetallic bond. Herein, we perform a critical analysis and set some rules on how to apply these methods for rapid and accurate nanomaterials predictions. Specifically, we optimized the chemical ordering of 2869-atom cuboctahedron NPs across 15 different bimetallic combinations. In comparison with both experimental and computational results, our findings indicate that the use of small metal dimers for the calculation of the weighting factors leads to accurate and computationally efficient chemical ordering and stability predictions for a wide range of NP compositions. We further extended our investigation to 6 trimetallic NPs with a tremendously large materials space, testing our model’s capability to predict chemical ordering patterns in multi-metallic systems and demonstrating its power as a rapid and accurate computational method. This methodology can facilitate the design of thermodynamically stable multi-metallic NPs and predict the distribution of different metal atoms from the core to the surface, which is central to any nanotechnological application.

 

Chair:

Dr. Giannis Mpourmpakis

Department of Chemical and Petroleum Engineering, University of Pittsburgh

 

Committee Members:

Dr. Götz Veser

Department of Chemical and Petroleum Engineering, University of Pittsburgh

 

Dr. Mohammad Masnadi

Department of Chemical and Petroleum Engineering, University of Pittsburgh       

 

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