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Recent Advances in Machine Learning Research for Nanofluid-Based Heat Transfer in Renewable Energy System

Journal

ENERGY & FUELS
Volume 36, Issue 13, Pages 6626-6658

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.energyfuels.2c01006

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Nanofluids play a crucial role in sustainable and renewable energy systems, and the challenges faced in this field include contradictory research results and the complexity of influencing factors. Machine learning techniques offer valuable tools for predicting and evaluating the thermophysical properties and heat transfer efficiency of nanofluids, with new advancements continuously emerging. By examining modern machine learning algorithms, we can gain a better understanding of their advantages and disadvantages, as well as explore the applications of new ensemble machine learning techniques.
Nanofluids have gained significant popularity in the field of sustainable and renewable energy systems. The heat transfer capacity of the working fluid has a huge impact on the efficiency of the renewable energy system. The addition of a small amount of high thermal conductivity solid nanoparticles to a base fluid improves heat transfer. Even though a large amount of research data is available in the literature, some results are contradictory. Many influencing factors, as well as nonlinearity and refutations, make nanofluid research highly challenging and obstruct its potentially valuable uses. On the other hand, data-driven machine learning techniques would be very useful in nanofluid research for forecasting thermophysical features and heat transfer rate, identifying the most influential factors, and assessing the efficiencies of different renewable energy systems. The primary aim of this review study is to look at the features and applications of different machine learning techniques employed in the nanofluid-based renewable energy system, as well as to reveal new developments in machine learning research. A variety of modern machine learning algorithms for nanofluid-based heat transfer studies in renewable and sustainable energy systems are examined, along with their advantages and disadvantages. Artificial neural networks-based model prediction using contemporary commercial software is simple to develop and the most popular. The prognostic capacity may be further improved by combining a marine predator algorithm, genetic algorithm, swarm intelligence optimization, and other intelligent optimization approaches. In addition to the well-known neural networks and fuzzy- and gene-based machine learning techniques, newer ensemble machine learning techniques such as Boosted regression techniques, K-means, K-nearest neighbor (KNN), CatBoost, and XGBoost are gaining popularity due to their improved architectures and adaptabilities to diverse data types. The regularly used neural networks and fuzzy-based algorithms are mostly black-box methods, with the user having little or no understanding of how they function. This is the reason for concern, and ethical artificial intelligence is required.

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