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Genetic Optimization of Homogeneous Catalysts

Rubén Laplaza, Simone Gallarati, Clémence Corminbœuf

2022Chemistry - Methods57 citationsDOIOpen Access PDF

Abstract

Abstract We present the NaviCatGA package, a versatile genetic algorithm capable of optimizing molecular catalyst structures using well‐suited fitness functions to achieve a set of targeted properties. The flexibility and generality of this tool are validated and demonstrated with two examples: i) Ligand optimization and exploration for Ni‐catalyzed aryl‐ether cleavage manipulating SMILES and using a fitness function derived from molecular volcano plots, ii) multi‐objective (i. e., activity/selectivity) optimization of bipyridine N,N ‐dioxide Lewis basic organocatalysts for the asymmetric propargylation of benzaldehyde from 3D molecular fragments. We show that evolutionary optimization, enabled by NaviCatGA, is an efficient way of accelerating catalyst discovery through bypassing combinatorial scaling issues and incorporating compelling chemical constraints.

Topics & Concepts

GeneralityFitness functionCatalysisCombinatorial chemistryComputer scienceBenzaldehydeFlexibility (engineering)ScalingArylMathematical optimizationGenetic algorithmChemistryMathematicsOrganic chemistryMachine learningPsychologyAlkylStatisticsGeometryPsychotherapistMachine Learning in Materials ScienceAsymmetric Hydrogenation and CatalysisChemical Synthesis and Analysis