A hybrid SVR-PSO model to predict a CFD-based optimised bubbling fluidised bed pyrolysis reactor

Comprehensive scrutiny is necessary to achieve an optimised set of operating conditions for a pyrolysis reactor to attain the maximum amount of the desired product. To reach this goal, a computational fluid dynamic (CFD) model is developed for biomass fast pyrolysis process and then validated using...

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Bibliographic Details
Published inEnergy (Oxford) Vol. 191; p. 116414
Main Authors Jalalifar, Salman, Masoudi, Mojtaba, Abbassi, Rouzbeh, Garaniya, Vikram, Ghiji, Mohammadmahdi, Salehi, Fatemeh
Format Journal Article
LanguageEnglish
Published Oxford Elsevier Ltd 15.01.2020
Elsevier BV
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Online AccessGet full text
ISSN0360-5442
1873-6785
1873-6785
DOI10.1016/j.energy.2019.116414

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Summary:Comprehensive scrutiny is necessary to achieve an optimised set of operating conditions for a pyrolysis reactor to attain the maximum amount of the desired product. To reach this goal, a computational fluid dynamic (CFD) model is developed for biomass fast pyrolysis process and then validated using the experiment of a standard lab-scale bubbling fluidised bed reactor. This is followed by a detailed CFD parametric study. Key influencing parameters investigated are operating temperature, biomass flow rate, biomass and sand particle sizes, carrier gas velocity, biomass injector location, and pre-treatment temperature. Machine learning algorithms (MLAs) are then employed to predict the optimised conditions that lead to the maximum bio-oil yield. For this purpose, support vector regression with particle swarm optimisation algorithm (SVR-PSO) is developed and applied to the CFD datasets to predict the optimum values of parameters. The maximum bio-oil yield is then computed using the optimum values of the parameters. The CFD simulation is also performed using the optimum parameters obtained by the SVR-PSO. The CFD results and the values predicted by the MLA for the product yields are finally compared where a good agreement is achieved. •Outlines a detailed CFD model validated with experimental data in a fast pyrolysis reactor.•Details development of a new model by integrating machine learning tools and CFD simulations.•Predicts the performance of a fast pyrolysis reactor in different operational conditions.•Optimizes the bio-oil yield in a fact pyrolysis reactor considering the variability in effective parameters.
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ISSN:0360-5442
1873-6785
1873-6785
DOI:10.1016/j.energy.2019.116414