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A reduced order PBM-ANN model of a multi-scale PBM-DEM description of a wet granulation process

机译:湿法制粒过程的多尺度PBM-DEM描述的降阶PBM-ANN模型

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摘要

Wet granulation is a particle design process, often used in the pharmaceutical, consumer product, food, and fertilizer industries. A better process understanding is needed to improve process design, control, and optimization. Predominantly, two modeling frameworks are implemented to simulate granulation processes:population balance modeling (PBM) and discrete element methods (DEM). While PBM simulates changes in the number of particles in each size class due to rate processes such as aggregation, DEM tracks each particle individually, with the abilities to simulate spatial variations and collect mechanistic data. In this bi-directional coupled approach, the computational expenditure of the full model is overwhelmed by the high-fidelity DEM algorithm that needs to solve a set of ODEs for each and every particle being handled in the system for very small time intervals. To mitigate this computational inefficiency, reduced order modeling (ROM) is used to replace the computationally expensive DEM step. An artificial neural network (ANN) was trained using DEM results to relate particle size, size distribution, and impeller speed to the collision frequency. Results showed a high correlation between the trained ANN predictions and DEM-generated data. The ANN was coupled with a PBM as a key component of the aggregation rate kernel. The coupled model showed a different development of average particle size and size distribution over time from that of a constant aggregation rate kernel. In addition, the coupled model demonstrated sensitivity to the impeller speed via the ANN rate kernel. When compared with the fully coupled PBM-DEM model for accuracy and computation time savings, the hybrid PBM-ANN model demonstrated excellent agreement with DEM simulations at fractions of the original computational time.
机译:湿法制粒是颗粒设计过程,通常用于制药,消费品,食品和化肥行业。需要更好的过程理解来改进过程设计,控制和优化。主要地,实现了两个建模框架来模拟制粒过程:种群平衡建模(PBM)和离散元素方法(DEM)。 PBM模拟由于速率过程(例如聚集)而导致的每个尺寸类别中粒子数量的变化,而DEM可以单独跟踪每个粒子,并具有模拟空间变化和收集机械数据的能力。在这种双向耦合方法中,完整模型的计算费用被高保真DEM算法所淹没,该算法需要在非常小的时间间隔内为系统中处理的每个粒子求解一组ODE。为了减轻这种计算效率低下的问题,可使用降阶建模(ROM)代替计算上昂贵的DEM步骤。使用DEM结果对人工神经网络(ANN)进行了训练,以将粒度,粒度分布和叶轮速度与碰撞频率相关联。结果表明,经过训练的ANN预测与DEM生成的数据之间具有高度相关性。人工神经网络与PBM结合在一起,作为聚集率内核的关键组成部分。耦合模型显示出平均粒径和粒径分布随时间的变化与恒定聚集速率内核不同。此外,耦合模型还通过ANN速率内核展示了对叶轮速度的敏感性。当与完全耦合的PBM-DEM模型进行比较以节省准确性和节省计算时间时,混合PBM-ANN模型与DEM仿真在原始计算时间的一小部分方面表现出极好的一致性。

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