Predictive modeling of die filling of the pharmaceutical granules using the flexible neural tree
Varun Kumar Ojha, Serena Schiano, Chuan-Yu Wu, V\'aclav Sn\'a\v{s}el,, Ajith Abraham

TL;DR
This study develops a flexible neural tree model optimized with differential evolution to accurately predict pharmaceutical die filling performance, outperforming other computational intelligence techniques and highlighting key process variables.
Contribution
Introduces a novel FNT-based predictive model for die filling, optimized with differential evolution, and compares its performance with existing CI methods in pharmaceutical processes.
Findings
FNT model outperforms other CI techniques in accuracy.
Granule size and shoe speed significantly influence die filling.
Coarse granules are predicted more accurately than fine granules.
Abstract
In this work, a computational intelligence (CI) technique named flexible neural tree (FNT) was developed to predict die filling performance of pharmaceutical granules and to identify significant die filling process variables. FNT resembles feedforward neural network, which creates a tree-like structure by using genetic programming. To improve accuracy, FNT parameters were optimized by using differential evolution algorithm. The performance of the FNT-based CI model was evaluated and compared with other CI techniques: multilayer perceptron, Gaussian process regression, and reduced error pruning tree. The accuracy of the CI model was evaluated experimentally using die filling as a case study. The die filling experiments were performed using a model shoe system and three different grades of microcrystalline cellulose (MCC) powders (MCC PH 101, MCC PH 102, and MCC DG). The feed powders were…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · Gaussian Process
