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      Machine learning in catalysis

      Nature Catalysis
      Springer Nature America, Inc

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          To address surface reaction network complexity using scaling relations machine learning and DFT calculations

          Surface reaction networks involving hydrocarbons exhibit enormous complexity with thousands of species and reactions for all but the very simplest of chemistries. We present a framework for optimization under uncertainty for heterogeneous catalysis reaction networks using surrogate models that are trained on the fly. The surrogate model is constructed by teaching a Gaussian process adsorption energies based on group additivity fingerprints, combined with transition-state scaling relations and a simple classifier for determining the rate-limiting step. The surrogate model is iteratively used to predict the most important reaction step to be calculated explicitly with computationally demanding electronic structure theory. Applying these methods to the reaction of syngas on rhodium(111), we identify the most likely reaction mechanism. Propagating uncertainty throughout this process yields the likelihood that the final mechanism is complete given measurements on only a subset of the entire network and uncertainty in the underlying density functional theory calculations.
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            An implementation of artificial neural-network potentials for atomistic materials simulations: Performance for TiO 2

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              Amp : A modular approach to machine learning in atomistic simulations

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                Author and article information

                Journal
                Nature Catalysis
                Nat Catal
                Springer Nature America, Inc
                2520-1158
                April 2018
                April 16 2018
                April 2018
                : 1
                : 4
                : 230-232
                Article
                10.1038/s41929-018-0056-y
                985e4297-428e-4cec-9820-a0e37b45e1c7
                © 2018

                http://www.springer.com/tdm

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