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首页> 外文期刊>Powder Technology: An International Journal on the Science and Technology of Wet and Dry Particulate Systems >Developing ANN-Kriging hybrid model based on process parameters for prediction of mean residence time distribution in twin-screw updates wet granulation
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Developing ANN-Kriging hybrid model based on process parameters for prediction of mean residence time distribution in twin-screw updates wet granulation

机译:基于过程参数的开发Ann-Kriging混合模型,用于预测双螺杆更新湿造粒中的平均停留时间分布

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摘要

Artificial neural network (ANN) modelling is applied to predict the mean residence time of pharmaceutical formulation in a twin-screw granulator. Process parameters including feed flow rate, screw speed, and liquid to solid ratio are correlated with the obtained values of mean residence time to build a predictive tool. In order to improve the ANN predictive capability, a kriging interpolation approach is utilised and both ANN models (before and after kriging) are compared. Experimental data is obtained for wet granulation of microcrystalline cellulose using a bench-scale 12 mm twin-screw granulator. In addition, the effect of screw configurations on mean residence time is investigated by the developed ANN. The ANN model is made of two hidden layers with 2 linear nodes in each layer, and the linear system of equations is derived for the improved ANN model. The results revealed that the developed model was capable of predicting the mean residence time in the granulator more accurately after applying kriging interpolation, with an R-2 value of about 0.92 for both training and validation. ANN model after kriging shows a dramatic improvement of R-2 by 4% and 22% in training and validating phases, respectively. Also, the RMSE was improved by 40% and 61.5% in training and validating phases, respectively. Furthermore, this improvement was reflected in the contour profiles of the ANN models before and after kriging interpolation, where the model that uses the interpolated data points shows a smoother contour profiles and wider prediction areas. Screw configuration has the most significant effect on the residence time of granules inside the granulator where adding more kneading zones results in a substantial increase in the mean residence time compared to other process parameters. (C) 2018 Elsevier B.V. All rights reserved.
机译:应用人工神经网络(ANN)建模以预测双螺杆造粒机中药物制剂的平均停留时间。包括进料流量,螺杆速度和液体与实心比的工艺参数与所获得的平均停留时间值相关,以构建预测工具。为了提高ANN预测能力,利用Kriging插值方法,并比较ANN模型(在克里格之前和后期)。使用台级12mm双螺杆造粒机获得微晶纤维素的湿颗粒的实验数据。此外,由发达的ANN研究了螺杆配置对平均停留时间的影响。 ANN模型由两个隐藏层组成,每个层中有2个线性节点,并且导出了改进的ANN模型的线性系统。结果表明,在施加Kriging插值后,开发模型能够更准确地预测造粒机中的平均停留时间,用于训练和验证,R-2值为约0.92。 Kriging后的Ann模型显示出训练和验证阶段的R-2急剧改善4%和22%。此外,RMSE分别在训练和验证阶段提高了40%和61.5%。此外,这种改进反映在Kriging插值之前和之后的ANN模型的轮廓配置文件中,其中使用内插数据点的模型显示了更平滑的轮廓配置文件和更广泛的预测区域。螺杆配置对造粒机内的颗粒内的停留时间具有最大的影响,其中添加更多捏合区域导致平均停留时间的大幅增加与其他工艺参数相比。 (c)2018 Elsevier B.v.保留所有权利。

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