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Entropy Optimized Second Grade Fluid with MHD and Marangoni Convection Impacts: An Intelligent Neuro-Computing Paradigm

  • Muhammad Shoaib
  • , Rafia Tabassum
  • , Kottakkaran Sooppy Nisar
  • , Muhammad Asif Zahoor Raja
  • , Ayesha Rafiq
  • , Muhammad Ijaz Khan
  • , Wasim Jamshed
  • , Abdel Haleem Abdel-Aty
  • , I. S. Yahia
  • , Emad E. Mahmoud
  • COMSATS University Islamabad
  • Prince Sattam Bin Abdulaziz University
  • National Yunlin University of Science and Technology
  • Institute of Space Technology
  • Riphah International University
  • Capital University of Science & Technology
  • University of Bisha
  • Al-Azhar University
  • King Khalid University
  • Ain Shams University
  • Taif University

Research output: Contribution to journalArticlepeer-review

25 Scopus citations

Abstract

Artificial intelligence applications based on soft computing and machine learning algo-rithms have recently become the focus of researchers’ attention due to their robustness, precise modeling, simulation, and efficient assessment. The presented work aims to provide an innovative application of Levenberg Marquardt Technique with Artificial Back Propagated Neural Networks (LMT-ABPNN) to examine the entropy generation in Marangoni convection Magnetohydrodynamic Second Grade Fluidic flow model (MHD-SGFM) with Joule heating and dissipation impact. The PDEs describing MHD-SGFM are reduced into ODEs by appropriate transformation. The dataset is determined through Homotopy Analysis Method by the variation of physical parameters for all scenarios of proposed LMT-ABPNN. The reference data samples for training/validation/testing processes are utilized as targets to determine the approximated solution of proposed LMT-ABPNN. The performance of LMT-ABPNN is validated by MSE based fitness, error histogram scrutiny, and regression analysis. Furthermore, the influence of pertinent parameters on temperature, concentration, velocity, entropy generation, and Bejan number is also deliberated. The study reveals that the larger β and Ma, the higher f (η) while M has the reverse influence on f (η). For higher values of β, M, Ma, and Ec, θ(η) boosts. The concentration φ(η) drops as Ma and Sc grow. An augmentation is noticed for NG for higher estimations of β, M, and Br. Larger β, M and Br decays the Bejan number.

Original languageEnglish
Article number1492
JournalCoatings
Volume11
Issue number12
DOIs
StatePublished - Dec 2021
Externally publishedYes

Keywords

  • Entropy optimization
  • Homo-topy analysis method
  • Levenberg Marquardt technique with artificial back propagated neural networks
  • Magnetohydrodynamic
  • Second grade fluid

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