4.8 Article

Ni coarsening and performance attenuation prediction of biomass syngas fueled SOFC by combining multi-physics field modeling and artificial neural network

Journal

APPLIED ENERGY
Volume 322, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.apenergy.2022.119508

Keywords

Solid oxide fuel cell; Ni coarsening; Multi -physics field; Artificial neural network; Performance attenuation prediction

Funding

  1. National Natural Science Foundation of China [52176203, 52050027]
  2. Natural Science Foundation Project of Shaanxi Province, China [2021JQ- 890]
  3. Young Talent Fund for Science and Technology in Xi ? [095920211329]
  4. City, China [2020B1212060075]
  5. Guangdong Provincial Key Laboratory of Distributed Energy Systems

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This research investigates the influence of Ni particle coarsening on the performance of solid oxide fuel cell (SOFC) using a transient multi-physical field model. The study finds that high operating temperature and an increase in the ratio of steam to carbon accelerate Ni particle growth and deterioration of SOFC performance. Increasing the diameter of yttria-stabilized zirconia (YSZ) particles and improving the Ni phase fraction can slow down the growth rate of Ni particles and the attenuation of current density. By combining artificial neural network (ANN) and genetic algorithm (GA), the study provides a framework for fast prediction and optimization of SOFC performance.
Ni particle coarsening is an important factor in deteriorating the durability of solid oxide fuel cell (SOFC) operations. In order to investigate the influence of Ni coarsening on SOFC performance, the transient multi-physical field model of SOFC was developed in this paper. The high operating temperature accelerates Ni particle growth and increases the attenuation rate of SOFC current density from 0.23%/kh at 650 degrees C to 2.6%/kh at 800 degrees C. The increase in the ratio of steam to carbon also intensifies the Ni particle coarsening process and deteriorates the transient performance of SOFC. Increasing YSZ particle diameter could hinder the growth of Ni particles and slowing down the increase rate of Ni particle diameter. Within the range of preset YSZ diameter dYSZ, increasing dYSZ reduces the attenuation rate and increases the average current density. Improving Ni phase fraction helps to reduce the attenuation rate of current density. Since multi-physical field (MPF) simulation needs long calculation time and it is difficult to achieve fast prediction, artificial neural network (ANN) is trained by the database generated by MPF. The mapping relationship between operating parameters, structural parameters and attenuation indexes is obtained. Finally, the attenuation performance of SOFC is optimized by genetic algorithm (GA) through data-driven method. The absolute average relative errors of all parameters in predicting attenuation rate and average current density are as low as 0.767% and 0.248%, which indicates the reliability of the ANN prediction. After optimization, the maximum current density is 5848 A.m(-2) under operating voltage at 0.6 V when the attenuation rate requirement not exceeding 1% is satisfied. The combination of MPF simulation, ANN and GA provides a framework for fast performance prediction and optimization of strong nonlinear system.

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