Inverse Design of Nanoparticles Using Charge Transfer Properties and Multi-Target Machine Learning

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Li, Sichao
Barnard, Amanda S.

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American Institute of Chemical Engineers

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We present a new approach to inverse design that uses sets of properties to predict a unique nanoparticle structure, and is based on established multi-target regression and reliable forward structure/property prediction. Feature selection is used to focus the model on the most important characteristics before inverting the problem and simultaneously predicting multiple structural features of a single nanoparticle. The workflow is general, as demonstrated on two nanoparticle data sets, and can rapidly predict property/structure relationships to guide further research and development without the need for additional optimisation or high-throughput sampling.

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2021 AIChE Annual Meeting

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