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      A new class of reaction path based potential energy surfaces enabling accurate black box chemical rate constant calculations

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      The Journal of Chemical Physics
      AIP Publishing

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          Reaction path Hamiltonian for polyatomic molecules

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            Current Status of Transition-State Theory

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              Perspective: Machine learning potentials for atomistic simulations

              Nowadays, computer simulations have become a standard tool in essentially all fields of chemistry, condensed matter physics, and materials science. In order to keep up with state-of-the-art experiments and the ever growing complexity of the investigated problems, there is a constantly increasing need for simulations of more realistic, i.e., larger, model systems with improved accuracy. In many cases, the availability of sufficiently efficient interatomic potentials providing reliable energies and forces has become a serious bottleneck for performing these simulations. To address this problem, currently a paradigm change is taking place in the development of interatomic potentials. Since the early days of computer simulations simplified potentials have been derived using physical approximations whenever the direct application of electronic structure methods has been too demanding. Recent advances in machine learning (ML) now offer an alternative approach for the representation of potential-energy surfaces by fitting large data sets from electronic structure calculations. In this perspective, the central ideas underlying these ML potentials, solved problems and remaining challenges are reviewed along with a discussion of their current applicability and limitations.
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                Author and article information

                Journal
                The Journal of Chemical Physics
                J. Chem. Phys.
                AIP Publishing
                0021-9606
                1089-7690
                April 21 2019
                April 21 2019
                : 150
                : 15
                : 154105
                Affiliations
                [1 ]Institut für Physikalische Chemie, Christian-Albrechts-Universität, Olshausenstraße 40, D–24098 Kiel, Germany
                Article
                10.1063/1.5092589
                80220961-3772-4137-822f-4cfc5ada49d4
                © 2019
                History

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