Insights into the Estimation of the Enhanced Thermal Conductivity of Phase Change Material-Containing Oxide Nanoparticles using Gaussian Process Regression Method

Author:

Chen Tzu-Chia1ORCID,Majdi Hasan Sh.2ORCID,Ismael Aras Masood3ORCID,Pouresmi Jamshid4ORCID,Ahangari Danial5ORCID,Noori Saja Mohammed6ORCID

Affiliation:

1. Department of Industrial Engineering and Management, Ming Chi University of Technology, New Taipei City 24301, Taiwan

2. Al- Mustaqbal University College, Department of Chemical Engineering and Petroleum Industries, Hilla, Iraq

3. Information Technology Department, Technical College of Informatics, Sulaimani Polytechnic University, Sulaymaniyah, Iraq

4. Department of Instrumentation and Industrial Automation, Ahwaz Faculty of Petroleum Engineering, Petroleum University of Technology, Ahwaz, Iran

5. Department of Geology, Faculty of Earth Sciences, S. Chamran University of Ahwaz, Ahwaz, Iran

6. Department of Computer Network, College of Engineering and Computer Science, Lebanese French University, Kurdistan Region, Erbil, Iraq

Abstract

Thermal conductivity (TC) of a phase change material (PCM) may be enhanced by distributing nanostructured materials (NSMs) termed nano-PCM. It is critical to accurately estimate the TC of nano-PCM to assess heat transfer during phase transition processes, namely, solidification and melting. Here, we propose Gaussian process regression (GPR) strategies involving four various kernel functions (KFs) (including exponential (E), squared exponential (SE), rational quadratic (RQ), and matern (M)) to predict TC of n-octadecane as a PCM. The accessible computational techniques indicate the accuracy of our proposed GPR model compared to the previously proposed methods. In this research, the foremost forecasting strategy has been considered as a GPR method. This model consists of the matern KF whose R2 values of training and testing phases are 1 and 1, respectively. In the following, a sensitivity analysis (SA) is used to explore the effectiveness of variables in terms of outputs and shows that the temperature (T) of nanofluid (NF) is the most efficient input parameter. The work describes the physical properties of NFs and the parameters that should be determined to optimize their efficiency.

Publisher

Hindawi Limited

Subject

General Chemical Engineering

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