Abstract
Frustrated Lewis pairs (FLPs), composed of reactive combinations of Lewis acids (LAs) and bases
(LBs) offer a metal-free platform for catalyzing a wide range of chemical transformations. Designing
the optimal FLP active site for a particular chemical reaction is a challenging task due to the lack
of rigorous principles and countless chemical possibilities. We recently designed principles, which
outline the relative disposition (i.e., distance and angle) and chemical composition of the LA and
LB centers that maximize activity in B- and N-based FLPs. These criteria were already used to
screen 25,000 FLP active sites built on N-containing linkers extracted from the CoRE MOF dataset,
but in such an enormous multifunctional catalyst space, inverse design approaches provide a more
efficient mean to explore all possible combinations. Here, we use the NaviCatGA genetic algorithm
to simultaneously optimize the chemical and geometrical characteristics of intramolecular FLPs while
considering synthetic complexity and catalyst quenching constraints. By integrating activity maps
and non-linear regression models, our workflow explores a vast chemical space of 1.7 billion FLP
candidates built from organic fragments curated from the literature — released as the open-source
FragFLP25 dataset— to identify optimal compositions suitable for catalytic CO2 hydrogenation.
Analyzing the top candidates extracted from various Pareto fronts in the catalyst space, we not only
uncover active FLP motifs for hydrogenation that have not been previously reported but also refine
and extend the design principles previously established from our high-throughput screening study.
Supplementary materials
Title
Electronic Supplementary Information for Inverse Design of Frustrated Lewis Pairs for Direct Catalytic CO2 Hydrogenation: Refining and Expanding Design Rules
Description
Supplementary information containing the computational details, details for the genetic optimization runs, results from the additional genetic optimization runs, and details for the construction of the machine learning models for quenching index predictions.
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