Advanced search
2 files | 14.76 MB Add to list

Machine learning based prediction of biomass pyrolysis with detailed reaction kinetics for thermally-thick particles : from 1D to 0D

Author
Organization
Abstract
In reactor-scale CFD modeling of biomass pyrolysis with thermally-thick particles, zero-dimensional (0D) models coupled with lumped kinetics are commonly used, as they are simple and computationally efficient. However, intra-particle heat transfer, which cannot be directly implemented in 0D models, has significant effects on pyrolysis behaviors of thermally-thick biomass particles. Additionality, lumped kinetics usually fails to predict detailed composition of pyrolysis products. To overcome these issues, a widely-used one-dimensional (1D) model that can directly incorporate intra-particle heat transfer was employed with a detailed pyrolysis kinetics in this work to develop a corrected 0D (Cor-0D) model for accurate CFD modeling of biomass pyrolysis inside thermallythick particles. Correction coefficients of external heat transfer, particle diameter, and pyrolysis reactions were introduced by comparing predictions of the 1D model with those of the 0D model quantitatively to reflect the effects of respective factors. The comparison demonstrates that if correction coefficients are properly determined, predictions of the developed Cor-0D model are in good agreement with experimental data as well as those of the employed 1D model under various conditions, while the 0D model overestimates mass loss rate and particle heating rate for thermally-thick biomass particles. Considering that correction coefficients are case dependent and determination of their values are tedious, artificial neural network (ANN) was used to correlate correction coefficients as functions of convective heat transfer coefficient, particle size, gas temperature, moisture content, and particle's dimensionless temperature to derive an ANN-Cor-0D model. Results show that the ANN-Cor-0D model has the same performance as the Cor-0D model.
Keywords
Biomass pyrolysis, Thermally-thick particle, Intra-particle heat transfer, Detailed pyrolysis kinetics, Artificial neural network, Zero-dimensional model, WOOD PARTICLES, DEVOLATILIZATION, COMBUSTION, SIMULATION, CONVERSION, TRANSPORT, SHRINKAGE, IMPACT, MODEL, SHAPE

Downloads

  • (...).pdf
    • full text (Published version)
    • |
    • UGent only
    • |
    • PDF
    • |
    • 7.87 MB
  • AAM - Machine learning based prediction of biomass pyrolysis with detailed reaction kinetics for thermally-thick particles from 1D to 0D.pdf
    • full text (Accepted manuscript)
    • |
    • open access
    • |
    • PDF
    • |
    • 6.90 MB

Citation

Please use this url to cite or link to this publication:

MLA
Luo, Hao, et al. “Machine Learning Based Prediction of Biomass Pyrolysis with Detailed Reaction Kinetics for Thermally-Thick Particles : From 1D to 0D.” CHEMICAL ENGINEERING SCIENCE, vol. 280, 2023, doi:10.1016/j.ces.2023.119060.
APA
Luo, H., Wang, X., Liu, X., Yi, L., Wu, X., Yu, X., … Xiong, Q. (2023). Machine learning based prediction of biomass pyrolysis with detailed reaction kinetics for thermally-thick particles : from 1D to 0D. CHEMICAL ENGINEERING SCIENCE, 280. https://doi.org/10.1016/j.ces.2023.119060
Chicago author-date
Luo, Hao, Xiaobao Wang, Xinyan Liu, Lan Yi, Xiaoqin Wu, Xi Yu, Yi Ouyang, Weifeng Liu, and Qingang Xiong. 2023. “Machine Learning Based Prediction of Biomass Pyrolysis with Detailed Reaction Kinetics for Thermally-Thick Particles : From 1D to 0D.” CHEMICAL ENGINEERING SCIENCE 280. https://doi.org/10.1016/j.ces.2023.119060.
Chicago author-date (all authors)
Luo, Hao, Xiaobao Wang, Xinyan Liu, Lan Yi, Xiaoqin Wu, Xi Yu, Yi Ouyang, Weifeng Liu, and Qingang Xiong. 2023. “Machine Learning Based Prediction of Biomass Pyrolysis with Detailed Reaction Kinetics for Thermally-Thick Particles : From 1D to 0D.” CHEMICAL ENGINEERING SCIENCE 280. doi:10.1016/j.ces.2023.119060.
Vancouver
1.
Luo H, Wang X, Liu X, Yi L, Wu X, Yu X, et al. Machine learning based prediction of biomass pyrolysis with detailed reaction kinetics for thermally-thick particles : from 1D to 0D. CHEMICAL ENGINEERING SCIENCE. 2023;280.
IEEE
[1]
H. Luo et al., “Machine learning based prediction of biomass pyrolysis with detailed reaction kinetics for thermally-thick particles : from 1D to 0D,” CHEMICAL ENGINEERING SCIENCE, vol. 280, 2023.
@article{01HNG24TY5GTSHRQQPVY0T3QPQ,
  abstract     = {{In reactor-scale CFD modeling of biomass pyrolysis with thermally-thick particles, zero-dimensional (0D) models coupled with lumped kinetics are commonly used, as they are simple and computationally efficient. However, intra-particle heat transfer, which cannot be directly implemented in 0D models, has significant effects on pyrolysis behaviors of thermally-thick biomass particles. Additionality, lumped kinetics usually fails to predict detailed composition of pyrolysis products. To overcome these issues, a widely-used one-dimensional (1D) model that can directly incorporate intra-particle heat transfer was employed with a detailed pyrolysis kinetics in this work to develop a corrected 0D (Cor-0D) model for accurate CFD modeling of biomass pyrolysis inside thermallythick particles. Correction coefficients of external heat transfer, particle diameter, and pyrolysis reactions were introduced by comparing predictions of the 1D model with those of the 0D model quantitatively to reflect the effects of respective factors. The comparison demonstrates that if correction coefficients are properly determined, predictions of the developed Cor-0D model are in good agreement with experimental data as well as those of the employed 1D model under various conditions, while the 0D model overestimates mass loss rate and particle heating rate for thermally-thick biomass particles. Considering that correction coefficients are case dependent and determination of their values are tedious, artificial neural network (ANN) was used to correlate correction coefficients as functions of convective heat transfer coefficient, particle size, gas temperature, moisture content, and particle's dimensionless temperature to derive an ANN-Cor-0D model. Results show that the ANN-Cor-0D model has the same performance as the Cor-0D model.}},
  articleno    = {{119060}},
  author       = {{Luo, Hao and Wang, Xiaobao and Liu, Xinyan and Yi, Lan and Wu, Xiaoqin and Yu, Xi and Ouyang, Yi and Liu, Weifeng and Xiong, Qingang}},
  issn         = {{0009-2509}},
  journal      = {{CHEMICAL ENGINEERING SCIENCE}},
  keywords     = {{Biomass pyrolysis,Thermally-thick particle,Intra-particle heat transfer,Detailed pyrolysis kinetics,Artificial neural network,Zero-dimensional model,WOOD PARTICLES,DEVOLATILIZATION,COMBUSTION,SIMULATION,CONVERSION,TRANSPORT,SHRINKAGE,IMPACT,MODEL,SHAPE}},
  language     = {{eng}},
  pages        = {{18}},
  title        = {{Machine learning based prediction of biomass pyrolysis with detailed reaction kinetics for thermally-thick particles : from 1D to 0D}},
  url          = {{http://doi.org/10.1016/j.ces.2023.119060}},
  volume       = {{280}},
  year         = {{2023}},
}

Altmetric
View in Altmetric
Web of Science
Times cited: