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A process optimization strategy of a pulsed-spray fluidized bed granulation process based on predictive three-stage population balance model

机译:一种基于预测三级人口平衡模型的脉冲喷雾流化床造粒过程的过程优化策略

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In this work, a three-stage population balance model (TSPBM) was developed for a pulsed top-spray fluidized bed granulation (FBG) process. The batch top-spray FBG process was divided into three stages based on the analysis of granule properties evolution and different granulation mechanisms were considered in each stage of the TSPBM. In each stage, population balance model (PBM) describes the evolution of granule size distribution (GSD), and partial least square (PLS) regressions describes the relationship between the operating variables and kernel parameters in PBM. By fitting coefficients of PLS regressions using experimental data, the developed TSPBM establishes a predictive relationship between the manipulated binder spray parameters of pulsed frequency, binder flow rate and atomization pressure and granule critical quality attributes (CQAs). A model-based multi-stage optimization strategy was proposed to improve the granule quality of the pulsed-spray FBG. The optimization strategy reduced the process error caused by mismatch between developed model and actual system. In the optimization strategy, volume average granule diameter is only measured online at the end of each stage. Based on the online measurement, the optimization strategy adjusts process operating variables to remedy any drift between measured and predicted GSD. Validation experiments and simulation tests were carried out to validate the effectiveness of the proposed TSPBM and optimization strategy. The developed TSPBM is shown to accurately predict experimental GSD and shows high accuracy comparing to the one-stage PBM. The proposed optimization strategy can improve the prediction capability by 50% compared to an offline optimization. (C) 2018 Elsevier B.V. All rights reserved.
机译:在这项工作中,为脉冲顶喷流化床造粒(FBG)工艺开发了一种三级人口平衡模型(TSPBM)。批量顶喷FBG方法基于颗粒性能的分析分为三个阶段,并且在TSPBM的每个阶段考虑了不同的造粒机制。在每个阶段,人口平衡模型(PBM)描述了颗粒尺寸分布(GSD)的演变,并且部分最小二乘(PLS)回归描述了PBM中的操作变量与内核参数之间的关系。通过使用实验数据拟合PLS回归的系数,开发的TSPBM在脉冲频率,粘合剂流速和雾化压力和颗粒临界质量属性(CQAS)之间建立了预测的关系。提出了一种基于模型的多级优化策略,提高了脉冲喷雾FBG的颗粒质量。优化策略减少了开发模型与实际系统之间不匹配引起的过程误差。在优化策略中,体积平均颗粒直径仅在每个阶段结束时在线测量。基于在线测量,优化策略调整过程操作变量以补救测量和预测的GSD之间的任何漂移。进行了验证实验和仿真测试以验证提出的TSPBM和优化策略的有效性。显示出开发的TSPBM可以准确地预测实验GSD,并显示与单级PBM相比的高精度。所提出的优化策略可以通过与离线优化相比提高预测能力。50%。 (c)2018 Elsevier B.v.保留所有权利。

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