6
views
0
recommends
+1 Recommend
0 collections
    0
    shares
      • Record: found
      • Abstract: found
      • Article: not found

      Combining SchNet and SHARC: The SchNarc Machine Learning Approach for Excited-State Dynamics

      rapid-communication

      Read this article at

      ScienceOpenPublisherPMC
      Bookmark
          There is no author summary for this article yet. Authors can add summaries to their articles on ScienceOpen to make them more accessible to a non-specialist audience.

          Abstract

          In recent years, deep learning has become a part of our everyday life and is revolutionizing quantum chemistry as well. In this work, we show how deep learning can be used to advance the research field of photochemistry by learning all important properties—multiple energies, forces, and different couplings—for photodynamics simulations. We simplify such simulations substantially by (i) a phase-free training skipping costly preprocessing of raw quantum chemistry data; (ii) rotationally covariant nonadiabatic couplings, which can either be trained or (iii) alternatively be approximated from only ML potentials, their gradients, and Hessians; and (iv) incorporating spin–orbit couplings. As the deep-learning method, we employ SchNet with its automatically determined representation of molecular structures and extend it for multiple electronic states. In combination with the molecular dynamics program SHARC, our approach termed SchNarc is tested on two polyatomic molecules and paves the way toward efficient photodynamics simulations of complex systems.

          Related collections

          Most cited references89

          • Record: found
          • Abstract: found
          • Article: not found

          Dye-sensitized solar cells with 13% efficiency achieved through the molecular engineering of porphyrin sensitizers.

          Dye-sensitized solar cells have gained widespread attention in recent years because of their low production costs, ease of fabrication and tunable optical properties, such as colour and transparency. Here, we report a molecularly engineered porphyrin dye, coded SM315, which features the prototypical structure of a donor-π-bridge-acceptor and both maximizes electrolyte compatibility and improves light-harvesting properties. Linear-response, time-dependent density functional theory was used to investigate the perturbations in the electronic structure that lead to improved light harvesting. Using SM315 with the cobalt(II/III) redox shuttle resulted in dye-sensitized solar cells that exhibit a high open-circuit voltage VOC of 0.91 V, short-circuit current density JSC of 18.1 mA cm(-2), fill factor of 0.78 and a power conversion efficiency of 13%.
            Bookmark
            • Record: found
            • Abstract: not found
            • Article: not found

            SchNet – A deep learning architecture for molecules and materials

              Bookmark
              • Record: found
              • Abstract: found
              • Article: not found

              Inverse molecular design using machine learning: Generative models for matter engineering

              The discovery of new materials can bring enormous societal and technological progress. In this context, exploring completely the large space of potential materials is computationally intractable. Here, we review methods for achieving inverse design, which aims to discover tailored materials from the starting point of a particular desired functionality. Recent advances from the rapidly growing field of artificial intelligence, mostly from the subfield of machine learning, have resulted in a fertile exchange of ideas, where approaches to inverse molecular design are being proposed and employed at a rapid pace. Among these, deep generative models have been applied to numerous classes of materials: rational design of prospective drugs, synthetic routes to organic compounds, and optimization of photovoltaics and redox flow batteries, as well as a variety of other solid-state materials.
                Bookmark

                Author and article information

                Journal
                J Phys Chem Lett
                J Phys Chem Lett
                jz
                jpclcd
                The Journal of Physical Chemistry Letters
                American Chemical Society
                1948-7185
                20 April 2020
                21 May 2020
                : 11
                : 10
                : 3828-3834
                Affiliations
                []Institute of Theoretical Chemistry, Faculty of Chemistry, University of Vienna , Währinger Str. 17, 1090 Vienna, Austria
                []Machine Learning Group, Technical University of Berlin , 10587 Berlin, Germany
                []Vienna Research Platform on Accelerating Photoreaction Discovery, University of Vienna , Währinger Str. 17, 1090 Vienna, Austria
                [§ ]Data Science @ Uni Vienna, University of Vienna , Währinger Str. 29, 1090 Vienna, Austria
                Author notes
                Article
                10.1021/acs.jpclett.0c00527
                7246974
                32311258
                2af2b228-90dd-4872-b606-625749c08368
                Copyright © 2020 American Chemical Society

                This is an open access article published under a Creative Commons Attribution (CC-BY) License, which permits unrestricted use, distribution and reproduction in any medium, provided the author and source are cited.

                History
                : 17 February 2020
                : 20 April 2020
                Categories
                Letter
                Custom metadata
                jz0c00527
                jz0c00527

                Physical chemistry
                Physical chemistry

                Comments

                Comment on this article