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Estimating the Physical Properties of Nanofluids Using a Connectionist Intelligent Model Known as Gaussian Process Regression Approach

Tzu-Chia ChenDepartment of Industrial Engineering and Management, Ming Chi University of Technology, New Taipei 24301, TaiwanAli Thaeer HammidComputer Engineering Techniques Department, Faculty of Information Technology, Imam Ja'afar Al-Sadiq University, Baghdad, IraqAvzal N. AkbarovHead of the Department of Faculty Orthopedic Dentistry, Tashkent State Dental Institute, Makhtumkuli Street 103, Tashkent 100047, UzbekistanKaveh ShariatiDepartment of Chemical Engineering, School of Engineering, University of Tehran, Tehran, IranMina DinariDepartment of Law, Faculty of Economics and Social Sciences, Shahid Chamran University of Ahwaz, Ahwaz, IranMohammed Sardar AliDepartment of Information Technology, College of Engineering and Computer Science, Lebanese French University, Kurdistan Region, Iraq
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Abstract

This work aims to develop a robust machine learning model for the prediction of the relative viscosity of nanoparticles (NPs) including Al 2 O 3 , TiO 2 , SiO 2 , CuO, SiC, and Ag based on the most important input parameters affecting them covering the size, concentration, thickness of the interfacial layer, and intensive properties of NPs. In order to develop a comprehensive artificial intelligence model in this study, sixty‐nine data samples were collected. To this end, the Gaussian process regression approach with four basic function kernels (Matern, squared exponential, exponential, and rational quadratic) was exploited. It was found that Matern outperformed other models with R 2 = 0.987, MARE (%) = 6.048, RMSE = 0.0577, and STD = 0.0574. This precise yet simple model can be a good alternative to the complex thermodynamic, mathematical‐analytical models of the past.

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