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Prediction and optimization of syngas production from steam gasification: Numerical study of operating conditions and biomass composition

机译:蒸汽气化合成气产量的预测与优化:运行条件与生物质组成的数值研究

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Prior information regarding the effects of the operating conditions and biomass composition on the syngas production is critical to predict and optimize the syngas production. Therefore, this paper proposes an effective method to predict and optimize the syngas production by combining a process model and data analysis techniques. Three agricultural waste types from Northeast China and 56 biomasses with different compositions were used as the gasification feedstock to investigate the effects of the operating conditions and biomass composition on the syngas production. A validated Aspen Plus process model was implemented to realize the biomass gasification process and techno-economic analysis. The sensitivity analysis results indicated that a lower temperature (approximately 600 ?) and lower steam-to-biomass ratio (S/B) (approximately 0.1) were the optimal operating conditions to achieve a higher lower heating value (LHV) of syngas. The introduction of steam changed the relationship between the temperature and LHV of syngas from inverse to direct. Furthermore, the performance comparison of the three agricultural waste based gasification processes indicated that a higher temperature and higher S/B could weaken the effect of the C, H, and O contents on the syngas composition. More importantly, the partial correlation analysis of the 56 sets of simulation results highlighted that a higher content of C and H, C/O and C/H helped enhance the LHV of syngas. The C/O value and C content exhibited the most significant correlations with the LHV of syngas, with correlation coefficients of 0.945 and 0.840, respectively. Correspondingly, these parameters exhibited a reasonable linear response with the LHV of syngas, with R2 values of 0.864 and 0.533, respectively. Finally, the techno-economic analysis indicated that SS is the optimal feedstock for syngas production.
机译:关于操作条件和生物质组成对合成气生产的效果的现有信息对于预测和优化合成气生产至关重要。因此,本文提出了一种通过组合过程模型和数据分析技术来预测和优化合成气生产的有效方法。三种来自东北的农业废物类型和56种具有不同组成的生物量被用作气化原料,以研究操作条件和生物质组成对合成气生产的影响。实施了验证的Aspen Plus过程模型以实现生物质气化过程和技术经济分析。敏感性分析结果表明,较低的温度(约600〜)和较低的蒸汽 - 生物质比(S / B)(约0.1)是实现合成气的较高加热值(LHV)的最佳操作条件。蒸汽引入改变了合成气的温度和LHV之间的关系,从反向直接。此外,三种农业废物基础气化过程的性能比较表明,较高的温度和更高的S / B可以削弱C,H和O内容物对合成气组成的影响。更重要的是,56套模拟结果的部分相关性分析强调,C和H的含量较高,C / O和C / H有助于增强合成气的LHV。 C / O值和C含量表现出与合成气的LHV最显着的相关性,分别具有0.945和0.840的相关系数。相应地,这些参数表现出与合成气的LHV的合理线性响应,R2值分别为0.864和0.533。最后,技术经济分析表明SS是合成气生产的最佳原料。

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