2023
DOI: 10.33889/ijmems.2023.8.5.047
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Modelling of Viscosity and Thermal Conductivity of Water-Based Nanofluids using Machine-Learning Techniques

Sai Ganga,
Ziya Uddin,
Rishi Asthana
et al.

Abstract: In this study, a variety of machine-learning algorithms are used to predict the viscosity and thermal conductivity of several water-based nanofluids. Machine learning algorithms, namely decision tree, random forest, extra tree, KNN, and polynomial regression, have been used, and their performances have been compared. The input parameters for the prediction of the thermal conductivity of nanofluids include temperature, concentration, and the thermal conductivity of nanoparticles. A three-input and a two-input m… Show more

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Cited by 3 publications
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“…The study of droplet dynamics will generate a large number of valuable but complex droplet datasets. In the field of microfluid generation, engineers can optimise the composition and concentration of micro-fluid by accurately predicting the viscosity of the micro-fluid to maximise the accuracy of droplet generation [9]. Analyzing these complex data is beneficial for detecting and quantifying droplet generation, and machine learning tools have successfully demonstrated their capabilities in automating the most complex systems [10].…”
Section: Introductionmentioning
confidence: 99%
“…The study of droplet dynamics will generate a large number of valuable but complex droplet datasets. In the field of microfluid generation, engineers can optimise the composition and concentration of micro-fluid by accurately predicting the viscosity of the micro-fluid to maximise the accuracy of droplet generation [9]. Analyzing these complex data is beneficial for detecting and quantifying droplet generation, and machine learning tools have successfully demonstrated their capabilities in automating the most complex systems [10].…”
Section: Introductionmentioning
confidence: 99%