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Comparison of genetic algorithms for experimental multi-objective optimization on the example of medium design for cyanobacteria

机译:遗传算法用于实验多目标优化的比较-以蓝细菌培养基设计为例

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摘要

In this work, two different genetic algorithms were applied to improve culture media composition for the autotrophic cyanobacteria Synechococcus PCC 79-42. Biomass yield and conversion of the asymmetric reduction of 2',3',4',5',6'-pentafluoroacetophenone were considered as simultaneous objectives, resulting in a multi-objective optimization problem. Even when similar performances of both algorithms were observed, it could be shown that a novel strength pareto approach was able to achieve remarkable results with a reduced number of experiments (160 instead of 320). Handling a high number of media components (13), their concentrations were adjusted, delivering high improvements in comparison to the standard BG 11 culture media. The quality of the Synechococcus biocatalyst could be increased up to fivefold compared to the initial state of the optimization.
机译:在这项工作中,应用了两种不同的遗传算法来改善自养蓝藻Synechococcus PCC 79-42的培养基组成。生物质收率和2',3',4',5',6'-五氟苯乙酮的不对称还原转化被视为同时目标,从而导致多目标优化问题。即使观察到两种算法的性能相似,也可以证明,一种新颖的强度对等方法能够通过减少实验次数(160代替320)获得显着的结果。处理大量培养基成分(13),调整了它们的浓度,与标准BG 11培养基相比,具有很大的改进。与优化的初始状态相比,Synchococcus生物催化剂的质量可以提高到五倍。

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