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首页> 外文期刊>Chemistry of Materials: A Publication of the American Chemistry Society >Quantum Chemical Calculations and Machine Learning Predictions Innovate Synthesis for High-Performance Optical Gold Nanorods
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Quantum Chemical Calculations and Machine Learning Predictions Innovate Synthesis for High-Performance Optical Gold Nanorods

机译:Quantum Chemical Calculations and Machine Learning Predictions Innovate Synthesis for High-Performance Optical Gold Nanorods

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摘要

Understanding the optical properties of gold nanorods(GNRs)in the colloidal state is crucial to engineering them for versatile applications in many fields.Concomitant gold nanospheres(GNSs)are easily involved in GNR synthesis,incurring a negative effect on the GNR performance.To unravel the underlying mechanism,we constructed a GNR-GNS heterodimer to imitate their colloidal state and calculated the relevant optical and electronic properties through a quantum chemical approach.The calculations reveal that GNSs prevent certain charge-transfer excitations of adjacent GNRs by affecting the electronic structure and thereby the excitation behavior of the GNR.We synthesized 310 sets of GNR-GNS colloidal solutions with a seed-mediated growth method and then measured their absorption spectra to extract the datasets available for 11 machine learning algorithms.Among them,XGBoost had the best prediction accuracy of over 94%.A direct relevance from the initial synthesis parameters to the final optical properties of GNR-GNS colloids has been successfully identified by the machine learning approach,which could skip the cumbersome step-by-step procedure used for the conventional nanostructure characterization as well as optimize the batch GNR synthesis process with improved GNR performance simultaneously.Methodologically,such a three-in-one approach combining chemical synthesis,quantum chemical calculations,and machine learning predictions can be extended to other chemical synthetic studies,with methodological guidance to chemistry and materials science researchers.

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