2024
DOI: 10.3390/en17215254
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A Review on Machine Learning-Aided Hydrothermal Liquefaction Based on Bibliometric Analysis

Lili Qian,
Xu Zhang,
Xianguang Ma
et al.

Abstract: Hydrothermal liquefaction (HTL) is an effective biomass thermochemical conversion technology that can convert organic waste into energy products. However, the HTL process is influenced by various complex factors such as operating conditions, feedstock properties, and reaction pathways. Machine learning (ML) methods can utilize existing HTL data to develop accurate models for predicting product yields and properties, which can be used to optimize HTL operation conditions. This paper presents a bibliometric revi… Show more

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