TY - JOUR
T1 - Characteristics of dissipative forces on thermal and solutal transport in boger fluid with thermophoretic particle deposition
T2 - An intelligent neuro-computing paradigm
AU - Abbas, Munawar
AU - Darem, Abdulbasit A.
AU - Alhashmi, Asma A.
AU - Othman, Nashwan Adnan
AU - Abduvalieva, Dilsora
AU - El Khatib, Youssef
AU - Akgül, Ali
AU - Shafique, Muhammad
N1 - Publisher Copyright:
© 2025 The Author(s)
PY - 2025/9
Y1 - 2025/9
N2 - The goal of this examination is to evaluate the Marangoni convection influences on gyrotactic microbes in Boger fluid flow across a sheet with porous medium and thermophoretic particle deposition. The thermophoretic particle deposition is a basic method in electrical and aero-solution engineering for transporting small particles across a temperature gradient. Our model combines the Levenberg–Marquardt method with AI-based neural networks for higher accuracy than traditional methods. It supports industrial fluid dynamics, biomedical engineering, and environmental research. AI-based forecasts also enhance nanofluid heat transfer and advanced biotechnology applications. The proposed paradigm has significant applications in bioengineering, environmental sciences, and industrial operations. Enhancing microbial mobility in bioreactors can enhance the production of biofuel and wastewater treatment. In the medical sciences, targeted medication delivery is aided by an understanding of microbe dynamics in non-Newtonian fluids. The model also advances nanotechnology by improving particle deposition techniques in microfluidic devices. By assessing how microorganisms react to external stimuli, it promotes ecological balance and water quality regulation in marine environments. In a range of engineering and scientific domains, the intelligent neuro-computing approach enhances prediction accuracy even more, making it a practical instrument for real-time monitoring and optimization.
AB - The goal of this examination is to evaluate the Marangoni convection influences on gyrotactic microbes in Boger fluid flow across a sheet with porous medium and thermophoretic particle deposition. The thermophoretic particle deposition is a basic method in electrical and aero-solution engineering for transporting small particles across a temperature gradient. Our model combines the Levenberg–Marquardt method with AI-based neural networks for higher accuracy than traditional methods. It supports industrial fluid dynamics, biomedical engineering, and environmental research. AI-based forecasts also enhance nanofluid heat transfer and advanced biotechnology applications. The proposed paradigm has significant applications in bioengineering, environmental sciences, and industrial operations. Enhancing microbial mobility in bioreactors can enhance the production of biofuel and wastewater treatment. In the medical sciences, targeted medication delivery is aided by an understanding of microbe dynamics in non-Newtonian fluids. The model also advances nanotechnology by improving particle deposition techniques in microfluidic devices. By assessing how microorganisms react to external stimuli, it promotes ecological balance and water quality regulation in marine environments. In a range of engineering and scientific domains, the intelligent neuro-computing approach enhances prediction accuracy even more, making it a practical instrument for real-time monitoring and optimization.
KW - Boger fluid
KW - Gyrotactic microbes
KW - Levenberg–Marquardt method
KW - Marangoni convection
KW - thermophoretic particle deposition
UR - https://www.scopus.com/pages/publications/105014183666
UR - https://www.scopus.com/pages/publications/105014183666#tab=citedBy
U2 - 10.1016/j.ijft.2025.101382
DO - 10.1016/j.ijft.2025.101382
M3 - Article
AN - SCOPUS:105014183666
SN - 2666-2027
VL - 29
JO - International Journal of Thermofluids
JF - International Journal of Thermofluids
M1 - 101382
ER -