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      Autonomous Discovery of Unknown Reaction Pathways from Data by Chemical Reaction Neural Network.

      1 , 1
      The journal of physical chemistry. A
      American Chemical Society (ACS)

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          Abstract

          Chemical reactions occur in energy, environmental, biological, and many other natural systems, and the inference of the reaction networks is essential to understand and design the chemical processes in engineering and life sciences. Yet, revealing the reaction pathways for complex systems and processes is still challenging because of the lack of knowledge of the involved species and reactions. Here, we present a neural network approach that autonomously discovers reaction pathways from the time-resolved species concentration data. The proposed chemical reaction neural network (CRNN), by design, satisfies the fundamental physics laws, including the law of mass action and the Arrhenius law. Consequently, the CRNN is physically interpretable such that the reaction pathways can be interpreted, and the kinetic parameters can be quantified simultaneously from the weights of the neural network. The inference of the chemical pathways is accomplished by training the CRNN with species concentration data via stochastic gradient descent. We demonstrate the successful implementations and the robustness of the approach in elucidating the chemical reaction pathways of several chemical engineering and biochemical systems. The autonomous inference by the CRNN approach precludes the need for expert knowledge in proposing candidate networks and addresses the curse of dimensionality in complex systems. The physical interpretability also makes the CRNN capable of not only fitting the data for a given system but also developing knowledge of unknown pathways that could be generalized to similar chemical systems.

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          Author and article information

          Journal
          J Phys Chem A
          The journal of physical chemistry. A
          American Chemical Society (ACS)
          1520-5215
          1089-5639
          Feb 04 2021
          : 125
          : 4
          Affiliations
          [1 ] Department of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.
          Article
          10.1021/acs.jpca.0c09316
          33471526
          f7a05e61-dec1-4795-a0b5-3cfaeeff4b09
          History

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