CHEM-PHLGJun 17, 2021

Physics-informed CoKriging model of a redox flow battery

arXiv:2106.09188v116 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of modeling battery performance for energy storage applications, but it appears incremental as it builds on existing multifidelity and physics-informed methods.

The researchers tackled the need for fast and accurate models of redox flow battery charge-discharge curves by developing a multifidelity model using Physics-informed CoKriging, which showed good agreement with experimental results and significant improvements over existing zero-dimensional models.

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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