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      Optimizing Chemical Reactions with Deep Reinforcement Learning

      research-article
      , , ,
      ACS Central Science
      American Chemical Society

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          Abstract

          Deep reinforcement learning was employed to optimize chemical reactions. Our model iteratively records the results of a chemical reaction and chooses new experimental conditions to improve the reaction outcome. This model outperformed a state-of-the-art blackbox optimization algorithm by using 71% fewer steps on both simulations and real reactions. Furthermore, we introduced an efficient exploration strategy by drawing the reaction conditions from certain probability distributions, which resulted in an improvement on regret from 0.062 to 0.039 compared with a deterministic policy. Combining the efficient exploration policy with accelerated microdroplet reactions, optimal reaction conditions were determined in 30 min for the four reactions considered, and a better understanding of the factors that control microdroplet reactions was reached. Moreover, our model showed a better performance after training on reactions with similar or even dissimilar underlying mechanisms, which demonstrates its learning ability.

          Abstract

          Chemical reactions were optimized through deep reinforcement learning. By iteratively analyzing reaction results and choosing new conditions for improvement, optimal conditions were found in 30 min.

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          Most cited references29

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          The Hitchhiker's Guide to Flow Chemistry ∥.

          Flow chemistry involves the use of channels or tubing to conduct a reaction in a continuous stream rather than in a flask. Flow equipment provides chemists with unique control over reaction parameters enhancing reactivity or in some cases enabling new reactions. This relatively young technology has received a remarkable amount of attention in the past decade with many reports on what can be done in flow. Until recently, however, the question, "Should we do this in flow?" has merely been an afterthought. This review introduces readers to the basic principles and fundamentals of flow chemistry and critically discusses recent flow chemistry accounts.
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            Deep learning

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              Intelligent routes to the controlled synthesis of nanoparticles.

              We describe an autonomous 'black-box' system for the controlled synthesis of fluorescent nanoparticles. The system uses a microfluidic reactor to carry out the synthesis and an in-line spectrometer to monitor the emission spectra of the emergent particles. The acquired data is fed into a control algorithm which reduces each spectrum to a scalar 'dissatisfaction coefficient' and then intelligently updates the reaction conditions in an effort to minimise this coefficient and so drive the system towards a desired goal. In the tests reported here, CdSe nanoparticles were prepared by separately injecting solutions of CdO and Se into the two inlets of a heated y-shaped microfluidic reactor. A noise-tolerant global search algorithm was then used to efficiently identify-without any human intervention-the injection rates and temperature that yielded the optimum intensity for a chosen emission wavelength.
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                Author and article information

                Journal
                ACS Cent Sci
                ACS Cent Sci
                oc
                acscii
                ACS Central Science
                American Chemical Society
                2374-7943
                2374-7951
                15 December 2017
                27 December 2017
                : 3
                : 12
                : 1337-1344
                Affiliations
                []Department of Chemistry, Stanford University , Stanford, California 94305, United States
                []Department of Management Science and Engineering, Stanford University , Stanford, California 94305, United States
                Author notes
                Article
                10.1021/acscentsci.7b00492
                5746857
                29296675
                4bd14033-57f3-4f1f-9f1c-c29036d52a4c
                Copyright © 2017 American Chemical Society

                This is an open access article published under an ACS AuthorChoice License, which permits copying and redistribution of the article or any adaptations for non-commercial purposes.

                History
                : 12 October 2017
                Categories
                Research Article
                Custom metadata
                oc7b00492
                oc-2017-004924

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