Abstract
The primary goal of this research is to present a novel computational intelligence approach of the AI-based Levenberg–Marquardt scheme under the influence of backpropagated neural network (LMS-BPNN) for optimizing MHD ternary hybrid nanofluid using Casson fluid over a porous shrinking sheet in the existence of thermal radiation ((Formula presented.)) effects. The governing partial differential equations (PDEs) showing the Casson ternary hybrid nanofluid are converted into a system of ordinary differential equations (ODEs) with suitable transformations. The numerical data is constructed as a reference with bvp4c (MATLAB built-in function used to solve a system of ODEs) by varying Casson fluid parameters ((Formula presented.)), magnetic field ((Formula presented.)), porosity ((Formula presented.)), nanoparticle concentrations ((Formula presented.)), and thermal radiation ((Formula presented.)) effects across all LMS-BPNN scenarios. The numerical data-sheet is divided into 80% of training, 10% of testing, and 10% of validation for LMS-BPNN are used to analyze the estimated solution and its assessment with a numerical solution using bvp4c is discussed. The efficiency and consistency of LMS-BPNN are confirmed via mean squared error (MSE) based fitness curves, regression analysis, correlation index ((Formula presented.)) and error histogram. The results show that velocity decreases as (Formula presented.) grows, whereas velocity increase as (Formula presented.) increases. The concentrations of nanoparticles and thermal radiations have increasing effects on (Formula presented.). To comprehend the dependability and correctness of the data gained from numerical simulations, error analysis is a key stage in every scientific inquiry. Error analysis is presented in terms of absolute error and it is noticed that the error between the numerical values and predicted values with AI is approximately (Formula presented.). The error analysis reveals that the developed AI algorithm is consistent and reliable.
Author supplied keywords
Cite
CITATION STYLE
Zeeshan, A., Khan, M. I., Ellahi, R., & Marin, M. (2023). Computational Intelligence Approach for Optimising MHD Casson Ternary Hybrid Nanofluid over the Shrinking Sheet with the Effects of Radiation. Applied Sciences (Switzerland), 13(17). https://doi.org/10.3390/app13179510
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.