Modeling and Optimization of Gas-Solid Fluidization of Binary Mixtures using Box-Behnken Experimental Design

Abd Ali K.M, Ghanim A.N
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Abstract

The influence of different factors on the fluidization of a binary mixture of red mud and aluminum was investigated. A new model was developed for predicting pressure drop through the solid bed using experimental data of other work. Statistical analysis based on response surface methodology has been used to develop correlations for bed pressure drop with three independent factors, minimum fluidization velocity (Umf), red mud to aluminum ratio (R/A), and static head (Hs). The design of experiments offers a best alternative to study the effect of factors and their response with the minimum number of experiments. The hydrodynamic characteristics of fluidization, bed pressure drop, superficial gas velocity (Umf), red mud to aluminum ratio (R/A), and initial static bed height (Hs) were modeled and optimized. ANOVA has been used to analyze the system parameters on bed pressure drop. A model of bed pressure drop was found to have a correlation coefficient of 0.98. The measured values of bed pressure drop from RSM were found to match the experimental values very well.
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基于Box-Behnken实验设计的二元混合物气固流化建模与优化
研究了不同因素对赤泥-铝二元混合物流化的影响。利用前人的实验数据,建立了一种预测固体床层压降的新模型。基于响应面法的统计分析,建立了床层压降与最小流化速度(Umf)、赤泥铝比(R/A)和静水头(Hs)三个独立因素的相关性。实验设计为以最少的实验次数研究各因素的影响及其响应提供了最好的选择。模拟并优化了流化床流体动力学特性、床层压降、表面气速(Umf)、赤泥铝比(R/A)和初始静态床层高度(Hs)。采用方差分析方法分析了系统参数对床层压降的影响。发现床层压降模型的相关系数为0.98。RSM床层压降的实测值与实验值吻合较好。
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