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Quantitatively Determining Surface–Adsorbate Properties from Vibrational Spectroscopy with Interpretable Machine Learning

Xijun Wang, Shuang Jiang, Wei Hu, Sheng Ye, Tairan Wang, Fan Wu, Yang Li, Xiyu Li, Guozhen Zhang, Xin Chen, Jun Jiang, Yi Luo

2022Journal of the American Chemical Society98 citationsDOI

Abstract

Learning microscopic properties of a material from its macroscopic measurables is a grand and challenging goal in physical science. Conventional wisdom is to first identify material structures exploiting characterization tools, such as spectroscopy, and then to infer properties of interest, often with assistance of theory and simulations. This indirect approach has limitations due to the accumulation of errors from retrieving structures from spectral signals and the lack of quantitative structure-property relationship. A new pathway directly from spectral signals to microscopic properties is highly desirable, as it would offer valuable guidance toward materials evaluation and design via spectroscopic measurements. Herein, we exploit machine-learned vibrational spectroscopy to establish quantitative spectrum-property relationships. Key interaction properties of substrate-adsorbate systems, including adsorption energy and charge transfer, are quantitatively determined directly from Infrared and Raman spectroscopic signals of the adsorbates. The machine-learned spectrum-property relationships are presented as mathematical formulas, which are physically interpretable and therefore transferrable to a series of metal/alloy surfaces. The demonstrated ability of quantitative determination of hard-to-measure microscopic properties using machine-learned spectroscopy will significantly broaden the applicability of conventional spectroscopic techniques for materials design and high throughput screening under operando conditions.

Topics & Concepts

ChemistrySpectroscopyRaman spectroscopyCharacterization (materials science)Property (philosophy)Measure (data warehouse)Infrared spectroscopySubstrate (aquarium)Biological systemSurface-enhanced Raman spectroscopyChemical physicsStatistical physicsArtificial intelligenceNanotechnologyComputer scienceRaman scatteringMaterials scienceOpticsPhysicsData miningOrganic chemistryOceanographyPhilosophyEpistemologyQuantum mechanicsGeologyBiologyMachine Learning in Materials ScienceElectronic and Structural Properties of OxidesAdvanced Memory and Neural Computing
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