Prediction of syngas properties of biomass steam gasification in fluidized bed based on machine learning method

Peixuan Xue, Tianlang Chen, Xiehan Huang,Qiang Hu,Junhao Hu, Han Zhang,Haiping Yang,Hanping Chen

INTERNATIONAL JOURNAL OF HYDROGEN ENERGY(2024)

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摘要
Steam gasification of biomass is a promising technology to produce hydrogen-rich syngas. While the complex correlation between gasification process and syngas properties has not been effectively explained. In this study, 222 relevant experimental data from peer-reviewed publications was collected to predict the syngas properties in fluidized bed reactors by machine learning (ML) method. Five algorithms were adopted and the Extreme Gradient Boosting regression (XGBoost) showed the most consistent predictive performance with the testing R-2 of 0.89-0.92. The equivalent ratio (ER) and steam to biomass ratio (S/B) were the most significant determinants of H-2 concentration. Optimal H-2 production (around 45%) was achieved by favorably choosing operating conditions characterized by the range of ER < 0.08 and 1 < S/B < 2.5. The valuable insights provided by ML models may contribute to the better understanding of biomass steam gasification process for the H-2-rich syngas production.(c) 2023 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
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关键词
Biomass gasification,Machine learning,Syngas properties,Feedstock compositions,Gasification conditions
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