Improving second-order Møller–Plesset perturbation theory for noncovalent interactions with the machine learning-corrected ab initio dispersion potential.
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| Název: | Improving second-order Møller–Plesset perturbation theory for noncovalent interactions with the machine learning-corrected ab initio dispersion potential. |
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| Autoři: | Lao, Ka Un, Villot, Corentin |
| Zdroj: | Journal of Chemical Physics; 5/14/2024, Vol. 160 Issue 18, p1-9, 9p |
| Témata: | PERTURBATION theory, MACHINE learning, DISPERSION (Chemistry), WAVE functions, ELECTRONIC structure |
| Abstrakt: | In this work, we utilize our recently developed machine learning (ML)-corrected ab initio dispersion (aiD) potential, known as D3-ML, which is based on the comprehensive SAPT10K dataset and relies solely on Cartesian coordinates as input, to address the dispersion deficiencies in second-order Møller−Plesset perturbation theory (MP2) by replacing its problematic dispersion and exchange-dispersion terms with D3-ML. This leads to the development of a new dispersion-corrected MP2 method, MP2+aiD(CCD), which outperforms other spin-component-scaled and dispersion-corrected MP2 methods as well as popular ML models for predicting noncovalent interactions across various datasets, including S66 × 8, NAP6 (containing 6 naphthalene dimers), L7, S12L, DNA−ellipticine, the C |
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| Databáze: | Complementary Index |
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