TY - JOUR
T1 - Machine learning-driven analysis of heat transfer in chemically reactive fluid flow considering Soret-Dufour effects
AU - Habib, Shazia
AU - Nasir, Saleem
AU - Khan, Zeeshan
AU - Berrouk, Abdallah S.
AU - Waseem,
AU - Islam, Saeed
N1 - Publisher Copyright:
© 2024
PY - 2025/1
Y1 - 2025/1
N2 - Objective: The study investigates tangent hyperbolic nanofluid flow across an extended media, emphasizing magnetohydrodynamic influences, mixed convection, and nanoparticle transport with the help of an innovative and advanced technique. Methodology: It employs a sophisticated Gaussian Neural Network and Hybrid Cuckoo Search to mimic complex fluid dynamics accurately, ensuring efficient computation and solution precision. By transforming the governing system of nonlinear partial differential equations into ordinary differential equations via similarity transformation, the methodology attains computational efficiency and solution precision. Core Findings: Statistical measures confirm the model's resilience, indicating absolute error variations from E−05 to E−12 and mean squared errors continuously between E−02 − E−07, highlighting the reliability of the model, while the Error in Nash-Sutcliffe Efficiency values fall within the interval E−05 − E−15. The Theil's Inequality Coefficient values lie in the range of E−01 − 10−07. Future Direction and Applications: The findings underscore the model's capacity to improve thermal management, energy efficiency, and process dependability in sectors like chemical processing, environmental engineering, and sustainable energy production. This study positions the Gaussian Neural Networks framework as a robust computational instrument, providing a foundation for subsequent investigations into intricate geometries, multi-physics phenomena, and magnetohydrodynamic systems for novel technology applications.
AB - Objective: The study investigates tangent hyperbolic nanofluid flow across an extended media, emphasizing magnetohydrodynamic influences, mixed convection, and nanoparticle transport with the help of an innovative and advanced technique. Methodology: It employs a sophisticated Gaussian Neural Network and Hybrid Cuckoo Search to mimic complex fluid dynamics accurately, ensuring efficient computation and solution precision. By transforming the governing system of nonlinear partial differential equations into ordinary differential equations via similarity transformation, the methodology attains computational efficiency and solution precision. Core Findings: Statistical measures confirm the model's resilience, indicating absolute error variations from E−05 to E−12 and mean squared errors continuously between E−02 − E−07, highlighting the reliability of the model, while the Error in Nash-Sutcliffe Efficiency values fall within the interval E−05 − E−15. The Theil's Inequality Coefficient values lie in the range of E−01 − 10−07. Future Direction and Applications: The findings underscore the model's capacity to improve thermal management, energy efficiency, and process dependability in sectors like chemical processing, environmental engineering, and sustainable energy production. This study positions the Gaussian Neural Networks framework as a robust computational instrument, providing a foundation for subsequent investigations into intricate geometries, multi-physics phenomena, and magnetohydrodynamic systems for novel technology applications.
KW - Chemical reaction
KW - Gaussian Neural Network
KW - MHD
KW - Mixed convection
KW - Porous medium
KW - Triple diffusion
UR - https://www.scopus.com/pages/publications/85211203271
U2 - 10.1016/j.ijft.2024.100982
DO - 10.1016/j.ijft.2024.100982
M3 - Article
AN - SCOPUS:85211203271
SN - 2666-2027
VL - 25
JO - International Journal of Thermofluids
JF - International Journal of Thermofluids
M1 - 100982
ER -