Inverse molecular design and parameter optimization with Hückel theory using automatic differentiation

Author:

Vargas–Hernández Rodrigo A.12ORCID,Jorner Kjell134ORCID,Pollice Robert13ORCID,Aspuru–Guzik Alán123567

Affiliation:

1. Chemical Physics Theory Group, Department of Chemistry, University of Toronto 1 , Toronto, Ontario M5S 3H6, Canada

2. Vector Institute for Artificial Intelligence 2 , 661 University Ave. Suite 710, Toronto, Ontario M5G 1M1, Canada

3. Department of Computer Science, University of Toronto 3 , 40 St. George St., Toronto, Ontario M5S 2E4, Canada

4. Department of Chemistry and Chemical Engineering, Chalmers University of Technology 4 , Kemigården 4, SE-41258 Gothenburg, Sweden

5. Department of Chemical Engineering and Applied Chemistry, University of Toronto 5 , 200 College St., Toronto, Ontario M5S 3E5, Canada

6. Department of Materials Science and Engineering, University of Toronto 6 , 184 College St., Toronto, Ontario M5S 3E4, Canada

7. Lebovic Fellow, Canadian Institute for Advanced Research (CIFAR) 7 , 661 University Ave., Toronto, Ontario M5G 1M1, Canada

Abstract

Semiempirical quantum chemistry has recently seen a renaissance with applications in high-throughput virtual screening and machine learning. The simplest semiempirical model still in widespread use in chemistry is Hückel’s π-electron molecular orbital theory. In this work, we implemented a Hückel program using differentiable programming with the JAX framework based on limited modifications of a pre-existing NumPy version. The auto-differentiable Hückel code enabled efficient gradient-based optimization of model parameters tuned for excitation energies and molecular polarizabilities, respectively, based on as few as 100 data points from density functional theory simulations. In particular, the facile computation of the polarizability, a second-order derivative, via auto-differentiation shows the potential of differentiable programming to bypass the need for numeric differentiation or derivation of analytical expressions. Finally, we employ gradient-based optimization of atom identity for inverse design of organic electronic materials with targeted orbital energy gaps and polarizabilities. Optimized structures are obtained after as little as 15 iterations using standard gradient-based optimization algorithms.

Funder

Swiss National Science Foundation

Publisher

AIP Publishing

Subject

Physical and Theoretical Chemistry,General Physics and Astronomy

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Modern semiempirical electronic structure methods;The Journal of Chemical Physics;2024-01-24

2. Synergy of semiempirical models and machine learning in computational chemistry;The Journal of Chemical Physics;2023-09-15

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