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: Dataset
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-29243897
Datenquelle: BASE; Originalkatalog
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Link(s) : https://doi.org/10.1021/acs.jpcc.3c07398.s002