Modeling of Triphenyl Phosphate Surfactant Enhanced Drying of Polystyrene/p-Xylene Coatings Using Artificial Neural Network

Author:

Thapliyal Devyani1,Shrivastava Rahul2,Verros George D.3ORCID,Verma Sarojini1,Arya Raj Kumar1ORCID,Sen Pramita4ORCID,Prajapati Shiv Charan5ORCID,Chahat 6,Gupta Ajay7

Affiliation:

1. Department of Chemical Engineering, Dr. B.R. Ambedkar National Institute of Technology, Jalandhar 144011, India

2. Department of Chemical Engineering, Jaypee University of Engineering & Technology, Guna 473226, India

3. Laboratory of Chemistry and Technology of Polymers and Dyes, Department of Chemistry, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece

4. Department of Chemical Engineering, Heritage Institute of Technology, Kolkata 700107, India

5. Department of Paint Technology, Government Polytechnic Bindki, Fatehpur 212635, India

6. Computing Studies & Information Systems, Douglas College, New Westminster, BC V3L 5B2, Canada

7. Department of Industrial and Production Engineering, Dr. B.R. Ambedkar National Institute of Technology, Jalandhar 144011, India

Abstract

The drying process of polymeric coatings, particularly in the presence of surfactants, poses a complex challenge due to its intricate dynamics involving simultaneous heat and mass transfer. This study addresses the inherent complexity by employing Artificial Neural Networks (ANNs) to model the surfactant-enhanced drying of poly(styrene)-p-xylene coatings. A substantial dataset of 16,258 experimentally obtained samples forms the basis for training the ANN model, showcasing the suitability of this approach when ample training data is available. The chosen single-layer feed-forward network with backpropagation adeptly captures the non-linear relationships within the drying data, providing a predictive tool with exceptional accuracy. Our results demonstrate that the developed ANN model achieves a precision level exceeding 99% in predicting coating weight loss for specified input values of time, surfactant amount, and initial coating thickness. The model’s robust generalization capability eliminates the need for additional experiments, offering reliable predictions for both familiar and novel conditions. Comparative analysis reveals the superiority of the ANN over the regression tree, emphasizing its efficacy in handling the intricate dynamics of polymeric coating drying processes. In conclusion, this study contributes a valuable tool for optimizing polymeric coating processes, reducing production defects, and enhancing overall manufacturing quality and cost-effectiveness.

Publisher

MDPI AG

Subject

Process Chemistry and Technology,Chemical Engineering (miscellaneous),Bioengineering

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