4.7 Article

Backpropagation of Levenberg Marquardt artificial neural networks for wire coating analysis in the bath of Sisko fluid

期刊

AIN SHAMS ENGINEERING JOURNAL
卷 12, 期 4, 页码 4133-4143

出版社

ELSEVIER
DOI: 10.1016/j.asej.2021.03.007

关键词

Wire coating; Sisko fluid; Levenberg Marquardt; Intelligent computing; Artificial neural network

资金

  1. Deanship of Scientific Research (DSR) , King Abdulaziz University [KEP-Msc-16-130-41]
  2. DSR

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In the artificial neural networks domain, the Levenberg-Marquardt technique is utilized to generate a numerical solution of the wire coating system for Sisko fluid flow (WCS-SFF). The analysis of fluid flow problem based on WCS-SFF is studied with a new application of intelligent computing system via supervised learning mechanism using the efficacy of neural networks trained by Levenberg-Marquardt algorithm (NN-TLMA). The proposed NN-TLMA for solving the WCS-SFF is effectively confirmed through various measures, achieving high accuracy.
In the artificial neural networks domain, the Levenberg-Marquardt technique is novel with convergent stability and generates a numerical solution of the wire coating system for Sisko fluid flow (WCS-SFF) through regression plots, histogram representations, state transition measures, and means squared errors. In this paper, the analysis of fluid flow problem based on WCS-SFF is studied with a new application of intelligent computing system via supervised learning mechanism using the efficacy of neural networks trained by Levenberg-Marquardt algorithm (NN-TLMA). The original mathematical formulation in terms of PDEs for WCS-SFF is converted into dimensionless nonlinear ODEs. The data collection for the projected NN-TLMA is produced for parameters associated with the system model WCS-SFF influencing the velocity using the explicit Runge-Kutta technique. The training, validation, and testing processes of NN-TLMA are utilized to evaluate the obtained results of WCS-SFF for various cases, and a comparison of the obtained results is performed with reference data set to check the accuracy and effectiveness of the proposed algorithm NN-TLMA for the analysis of non-Newtonian fluid problem-related WCS-SFF. The proposed NN-TLMA for solving the WCS-SFF is effectively confirmed through state transition dynamics, mean square error, regression analyses, and error histogram studies. The powerful consistency of suggested outcomes with reference solutions indicates the validity of the framework, and the accuracy of 10(-8) to 10(-6) is also achieved. (C) 2021 THE AUTHORS. Published by Elsevier BV on behalf of Faculty of Engineering, Ain Shams University.

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