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A coupled machine learning and genetic algorithm approach to the design of porous electrodes for redox flow batteries

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  • Wan, Shuaibin
  • Liang, Xiongwei
  • Jiang, Haoran
  • Sun, Jing
  • Djilali, Ned
  • Zhao, Tianshou

Abstract

The design of porous electrodes with large specific surface area and high hydraulic permeability is a longstanding target for the development of redox flow batteries (RFBs), but traditional trial-and-error strategies are hindered by the heavy cost of collecting large amounts of data and the limitation of human intuition when multiple trade-offs are at play. In this work, a novel framework coupling machine learning and genetic algorithm is developed to identify the optimal electrode structures for RFBs. A custom-made dataset containing 2275 fibrous structures is first generated by adopting a combination of stochastic reconstruction method, morphological algorithm, and lattice Boltzmann method. Based on the dataset, our best machine learning models allow to achieve test errors of 1.91% and 11.48% for predicting specific surface area and hydraulic permeability, respectively. Combined with well-trained prediction models, the genetic algorithm is developed to screen more than 700 promising candidates with up to 80% larger specific surface area and up to 50% higher hydraulic permeability than the commercial graphite felt electrodes. Results show that the fiber diameter and electrode porosity of these promising candidates exhibit a triangle-like joint distribution, with a preference for fiber diameters of around 5 μm with aligned arrangements.

Suggested Citation

  • Wan, Shuaibin & Liang, Xiongwei & Jiang, Haoran & Sun, Jing & Djilali, Ned & Zhao, Tianshou, 2021. "A coupled machine learning and genetic algorithm approach to the design of porous electrodes for redox flow batteries," Applied Energy, Elsevier, vol. 298(C).
  • Handle: RePEc:eee:appene:v:298:y:2021:i:c:s0306261921006073
    DOI: 10.1016/j.apenergy.2021.117177
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    2. Himanshi Agrawal & Akash Talwariya & Amandeep Gill & Aman Singh & Hashem Alyami & Wael Alosaimi & Arturo Ortega-Mansilla, 2022. "A Fuzzy-Genetic-Based Integration of Renewable Energy Sources and E-Vehicles," Energies, MDPI, vol. 15(9), pages 1-15, April.

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