Exploring machine learning applications in chemical production through valorization of biomass, plastics, and petroleum resources: A comprehensive review

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Date

2024

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Elsevier B.V.

Abstract

Machine learning (ML) is a subtype of artificial intelligence that uses a computer's ability to learn from a given set of accessible data. ML is becoming prominent in almost every business, including the domain of chemical engineering, where there have been numerous researches and investigations. This article provides a detailed overview of the use of ML in the production and characterization study of biomass, polymers, and petroleum products. Categories of ML, including classification, regression, and clustering, are also investigated to get a deeper understanding of ML. From this review, it can be concluded that ML has aided in numerous domains, such as the prediction of biomass energy, the stability of crude oil based on NMR spectroscopy, the calculation of gasoline's octane number, the estimation of fuel oil's kinematic viscosity, the classification of waste plastics, and the estimation of drilling efficiency in petroleum reservoirs, among others. Apart from this, ML has also been playing a significant role in the microwave-assisted pyrolysis of biomass, polymers, and petroleum resources. ML substantially influences chemical engineering and is especially useful for enhancing system efficiency and monitoring processes that are difficult to understand manually. Although several obstacles are associated with ML, such as black box behavior, the need for a large amount of data, and the difficulty of understanding the predictions, deploying the model in the future is uncomplicated once the learning program has been trained. © 2024 Elsevier B.V.

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Keywords

Biomass, Elastomers, Gasoline, Nuclear magnetic resonance spectroscopy, Petroleum reservoir engineering, Plastics, Biomass plastics, Biomass resources, Characterization studies, Chemical production, Classification/clustering, Learn+, Machine learning applications, Machine-learning, Petroleum resources, Valorisation, Machine learning

Citation

Journal of Analytical and Applied Pyrolysis, 2024, 180, , pp. -

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