Meta optimization based on real-time benchmarking of multiple surrogate models for autonomous flow synthesis
Optimizing a wide range of reaction parameters, steps, and pathways is currently considered one of the most complex and challenging problems in microflow-based organic synthesis. As a novel solution, Bayesian optimization (BO) has been utilized to efficiently guide the optimized conditions of flow r...
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Veröffentlicht in: | Lab on a chip 2023-03, Vol.23 (6), p.1613-1621 |
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description | Optimizing a wide range of reaction parameters, steps, and pathways is currently considered one of the most complex and challenging problems in microflow-based organic synthesis. As a novel solution, Bayesian optimization (BO) has been utilized to efficiently guide the optimized conditions of flow reactors; however, the benchmarking process for selecting the optimal model among various surrogate models remains inefficient. In this work, we report meta optimization (MO) by benchmarking multiple surrogate models in real-time without any pre-work, which is realized by evaluating the expected values obtained by the regressor used to build each surrogate model, enabling efficient optimization of reaction conditions. By the comparison of the performance of MO with that of various BOs on four datasets of different flow syntheses, it was verified that MO consistently performs the best-in-class for all emulators developed through machine learning, while the conventional BOs based on surrogate models such as the Gaussian process, random forest, neural network ensemble, and gradient boosting demonstrated varying performances from each emulator, which implies that benchmarking is required.
Introducing meta-optimizer as a new multi-model Bayesian optimization algorithm, consisting of multiple surrogate models addressing the challenge of model selection for autonomous chemical experimentation. |
doi_str_mv | 10.1039/d2lc00938b |
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source | Royal Society Of Chemistry Journals 2008-; Alma/SFX Local Collection |
subjects | Benchmarks Emulators Gaussian process Machine learning Neural networks Optimization Real time |
title | Meta optimization based on real-time benchmarking of multiple surrogate models for autonomous flow synthesis |
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