Machine learning and robot-assisted synthesis of diverse gold nanorods via seedless approach

Oyawale Adetunji Moses, Mukhtar Lawan Adam, Zijian Chen, Collins Izuchukwu Ezeh, Hao Huang, Zhuo Wang, Zixuan Wang, Boyuan Wang, Wentao Li, Chensu Wang, Zongyou Yin, Yang Lu, Xue-Feng Yu, Haitao Zhao

Research output: Journal PublicationArticlepeer-review

Abstract

The challenge of data-driven synthesis of advanced nanomaterials can be minimized by using machine learning algorithms to optimize synthesis parameters and expedite the innovation process. In this study, a high-throughput robotic platform was employed to synthesize over 1356 gold nanorods with varying aspect ratios via a seedless approach. The developed models guided us in synthesizing gold nanorods with customized morphology, resulting in highly repeatable morphological yield with quantifiable structure-modulating precursor adjustments. The study provides insight into the dynamic relationships between key structure-modulating precursors and the structural morphology of gold nanorods based on the expected aspect ratio. The high-throughput robotic platform-fabricated gold nanorods demonstrated precise aspect ratio control when spectrophotometrically investigated and further validated with the transmission electron microscopy characterization. These findings demonstrate the potential of high-throughput robot-assisted synthesis and machine learning in the synthesis optimization of gold nanorods and aided in the development of models that can aid such synthesis of as-desired gold nanorods.
Original languageEnglish
Article number100028
JournalArtificial Intelligence Chemistry
Volume1
Issue number2
DOIs
Publication statusPublished - 1 Dec 2023

Keywords

  • Machine learning
  • Robotic synthesis
  • Nanomaterial synthesis
  • Data-driven approach

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