Reduced-order hybrid modelling for powder compaction: Predicting density and classifying diametrical hardness

被引:2
|
作者
Trower, Maia [1 ]
Emerson, Joe [2 ]
Yu, Mingzhe [2 ]
Vivacqua, Vincenzino [2 ]
Johnson, Timothy [3 ]
Stitt, Hugh [2 ]
dos Reis, Goncalo [1 ,4 ]
机构
[1] Univ Edinburgh, Sch Math, Kings Bldg, Edinburgh EH9 3JF, Scotland
[2] Johnson Matthey, POB 1 Belasis Ave, Billingham TS23 1LB, England
[3] Heriot Watt Univ, Dept Actuarial Math & Stat, Edinburgh EH14 4AS, Scotland
[4] Fac Ciencias & Tecnol, Ctr Matemat & Aplicacoes CMA, Campus Caparica, P-2829516 Caparica, Portugal
关键词
Powder compaction; Machine learning; Density modelling; Hardness modelling; Drucker-Prager Cap model; MECHANICAL STRENGTH; WEIBULL PARAMETERS; TABLET COMPACTION; DIE; SPECIMENS;
D O I
10.1016/j.powtec.2023.118745
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Drawing on machine learning (ML) techniques and physics-based modelling, two feature-based reduced-order models are presented: one for the quantitative prediction of density and another for the classification of the diametrical hardness of pellets from a powder compaction process (pelleting). For interpretabilit y , the models use as input only the parameters from a modified Drucker-Prager Cap (DPC) model calculated from process data monitoring and the applied maximal compression force. For quantitative density prediction, 8 features linked to first-principles models of powder compaction are generated, and the final model uses only 2. A critical part of the modelling, and also one of the main contributions, is a data augmentation step for the primary data set of this study by leveraging much smaller supplementa r y data sets that have measurements not present in the primary data set.The final results imply a significant reduction in the quantity of data needed for model input and cut down the cost of data acquisition, storage, and computational time. Additionally provided is a detailed analysis of the impact and relevance of the generated features on the model performance.The density prediction model , using only 2 features ,reaches a mean absolute scaled error (MASE) of 12.9% and a mean absolute error (MAE) of 0.10 (where r2 =0.975). The scaled (diametrical) hardness classifier has an F1 score of 0.915 using 4 features.
引用
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页数:16
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