Adsorbate-Dependent Electronic Structure Descriptors for Machine Learning-Driven Binding Energy Predictions in Diverse Single Atom Alloys: A Reductionist Approach

A long-standing challenge in the design of single atom alloys (SAAs), for catalytic applications, is the determination of a feature space that maximally correlates to molecular binding energies per the Sabatier principle. The more representative a feature space is of the underlying binding properties, the greater the predictive capability of a given machine learning (ML) algorithm. Moreover, the greater the diversity and range of SAA impurities/sites examined, the greater the difficulty in arriving at such a predictive feature. In this work, we undertake to examine the degree to which adsorbat... Mehr ...

Verfasser: Javad Shirani
Julio J. Valdes
Alain B. Tchagang
Kirk H. Bevan
Dokumenttyp: Text
Erscheinungsdatum: 2024
Schlagwörter: Biochemistry / Space Science / Biological Sciences not elsewhere classified / Chemical Sciences not elsewhere classified / Information Systems not elsewhere classified / uniform manifold approximation / underlying binding properties / single atom alloys / semicore level properties / provide significant improvements / predict binding energies / orbital projected density / unrelaxed chemical datasets / catalytic binding energies / employing ml methods / based ml methods / given machine learning / intrinsic feature space / entire pdos distribution / predictive feature space / feature space / machine learning / predictive feature / pdos distribution / intrinsic dimensionality / chemical intuition / catalytic applications / predictive capacity / predictive capability / predictive benefit / predictive accuracy / vicinal cuts / two parts / transferability characteristics / sites examined / sabatier principle / saa substrates / saa impurities / reductionist approach / projection visualization / powerful tools / physical property / model system / maximally correlates / maximally correlate / impurity embeddings / either relaxed / distinct departure / dimension equal / dependent vector
Sprache: unknown
Permalink: https://search.fid-benelux.de/Record/base-29243896
Datenquelle: BASE; Originalkatalog
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Link(s) : https://doi.org/10.1021/acs.jpcc.3c07398.s001

A long-standing challenge in the design of single atom alloys (SAAs), for catalytic applications, is the determination of a feature space that maximally correlates to molecular binding energies per the Sabatier principle. The more representative a feature space is of the underlying binding properties, the greater the predictive capability of a given machine learning (ML) algorithm. Moreover, the greater the diversity and range of SAA impurities/sites examined, the greater the difficulty in arriving at such a predictive feature. In this work, we undertake to examine the degree to which adsorbate electronic structure properties might address this challenge, in a distinct departure from the traditional substrate electronic structure feature construction found in the catalysis literature. Specifically, as a model system, we explore the predictive capacity of the p-orbital projected density of states (PDOS) pertaining to the adsorption of CO molecules on a wide range of SAA substrates, impurity embeddings, and vicinal cuts. This analysis is executed in two parts. First, we explore the degree to which the entire PDOS distribution, in the form of an energy-dependent vector, can predict binding energies. Subsequently, guided by a rigorous intrinsic dimensionality analysis, uniform manifold approximation and projection visualization, and chemical intuition, we are able to reduce the predictive feature space to just three physical quantities based on semicore level properties and charge filling of the adsorbate–as embedded with the PDOS distribution. This near-intrinsic feature space and the PDOS distribution are both shown to provide significant improvements in predictive accuracy when coupled with regression-based ML methods, even when tackling highly diverse chemical datasets. The results of this analysis both further substantiate the transferability characteristics of SAAs and indicate that adsorbate-based electronic structure features (from either relaxed or unrelaxed chemical datasets) are powerful tools in the ...