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      Physics-informed CoKriging model of a redox flow battery

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          Abstract

          Redox flow batteries (RFBs) offer the capability to store large amounts of energy cheaply and efficiently, however, there is a need for fast and accurate models of the charge-discharge curve of a RFB to potentially improve the battery capacity and performance. We develop a multifidelity model for predicting the charge-discharge curve of a RFB. In the multifidelity model, we use the Physics-informed CoKriging (CoPhIK) machine learning method that is trained on experimental data and constrained by the so-called "zero-dimensional" physics-based model. Here we demonstrate that the model shows good agreement with experimental results and significant improvements over existing zero-dimensional models. We show that the proposed model is robust as it is not sensitive to the input parameters in the zero-dimensional model. We also show that only a small amount of high-fidelity experimental datasets are needed for accurate predictions for the range of considered input parameters, which include current density, flow rate, and initial concentrations.

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          Author and article information

          Journal
          16 June 2021
          Article
          2106.09188
          6108e596-7e82-4b04-91f4-0d5fc45a0d03

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          physics.chem-ph cs.LG

          Physical chemistry,Artificial intelligence
          Physical chemistry, Artificial intelligence

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