Abstract
Accurate thermochemistry computations often require a proper treatment of torsional modes. The one-dimensional hindered rotor model has proven to be a computationally efficient solution, given a sufficiently accurate potential energy surface. Methods that provide potential energies at various compromises of uncertainty and computational time demand can be optimally combined within a multifidelity treatment. In this study, we demonstrate how multifidelity modeling leads to: 1. smooth interpolation along low-fidelity scan points with uncertainty estimates, 2. inclusion of high-fidelity data that change the energetic order of conformations, and 3. predict best next-point calculations to extend an initial coarse grid. Our diverse application set comprises molecules, clusters, and transition states of alcohols, ethers, and rings. We discuss limitations for cases where the low-fidelity computation is highly unreliable. Different features of the potential energy curve affect different quantities. To obtain “optimal” fits, we therefore apply strategies ranging from simple minimization of deviations to developing an acquisition function tailored for statistical thermodynamics. Bayesian prediction of best next calculations can save a substantial amount of computation time for one- and multi-dimensional hindered rotors.
Supplementary materials
Title
Supplementary Material
Description
All examples shown in this paper can be reproduced using the code published in the Supporting
Information and on Github.74 The basis of the code builds on GPy75 and emukit.76
The following file is available free of charge.
• SI.pdf: verbatim listings of codes used in this study; results for other kernel choices in
the π-bonded methanol–2-methylfuran example; tetrahydrofuran pseudorotation modeled
with HiFi data only; ethanol monomer torsion modeled without a high-level HiFi
point; iterations of Bayesian prediction of torsional PES in DMM TS.
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Supplementary weblinks
Title
TAMkinTools release on RWTH’s GitLab
Description
TAMkinTools release on RWTH’s GitLab. https://git.rwth-aachen.de/Wassja.
Kopp/tamkintools/-/releases/1_0PCCP, accessed: 2024-03-08
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Jupyter notebooks for multi-fidelity modeling with TAMkinTools on Github
Description
Jupyter notebooks for multi-fidelity modeling with TAMkinTools on Github. https://
github.com/maxfleck/tamkintools-multi-fidelity-bayesian/, accessed: 2024-
03-08
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