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Design of a Genetic Algorithm for the Simulated Evolution of a Library of Asymmetric Transfer Hydrogenation Catalysts

机译:不对称转移加氢催化剂库模拟演化的遗传算法设计

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摘要

A library of catalysts was designed for asymmetric-hydrogen transfer to acetophenone. At first, the whole library was submitted to evaluation using high-throughput experiments (HTE). The catalysts were listed in ascending order, with respect to their performance, and best catalysts were identified. In the second step, various simulated evolution experiments, based oil a genetic algorithm, were applied to this library. A small part of the library, called the mother generation (G0), thus evolved from generation to generation. The goal Was to use our collection of HTE data to adjust the parameters of the genetic algorithm, in order to obtain a maximum of the best catalysts within a minimal number of generations. It Was namely found that Simulated evolution's results depended oil the selection of G0 and that a random G0 should be preferred. We also demonstrated that it was possible to get 5 to 6 of the tell best catalysts while investigating only 10% of the library. Moreover, we developed a double algorithm making this result still achievable if the evolution started with one of the worst G0.
机译:设计了用于不对称氢转移到苯乙酮的催化剂库。首先,使用高通量实验(HTE)将整个库提交给评估。就其性能而言,按升序列出了催化剂,并确定了最佳催化剂。第二步,将基于遗传算法的各种模拟进化实验应用于该库。库的一小部分称为母代(G0),因此一代又一代。目的是使用我们收集的HTE数据来调整遗传算法的参数,以便在最少的几代内获得最大的最佳催化剂。即发现模拟进化的结果取决于对G0的选择,并且应该优先选择随机G0。我们还证明,仅研究10%的谱库,就有可能获得5到6种最佳的催化剂。此外,我们开发了一种双重算法,使得即使从最差的G0之一开始演化,这个结果仍然可以实现。

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