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Estimation of fast pyrolysis <scp>bio‐oil</scp> properties from feedstock characteristics using <scp>rough‐set</scp> ‐based machine learning

Jia Wen Chong, Suchithra Thangalazhy‐Gopakumar, Raymond R. Tan, Kathleen B. Aviso, Nishanth G. Chemmangattuvalappil

2022International Journal of Energy Research23 citationsDOI

Abstract

In this work, a data-driven rough-set-based machine learning model has been proposed as a pre-processing and predictive modelling tool to predict the pyrolysis bio-oil properties based on pyrolysis temperature and feedstock characteristics. A database consisting of feedstock proximate and ultimate analyses, pyrolysis temperature, bio-oil's pH value, and bio-oil's higher heating value was compiled and used to train the rough-set-based machine learning model. The resulting rule-based rough-set-based machine learning model demonstrated promising strength, certainty, and coverage factor. Furthermore, the emergent patterns and mechanistic plausibility of the rough-set-based machine learning models were analysed. The generated rules illustrated reasonable predictive capability in estimating the higher heating value and pH value of bio-oil based on the feedstock characterisation and pyrolysis temperature. Rough-set-based machine learning model is thus demonstrated to be a simple and straightforward approach for feedstock composition and pyrolysis temperature selection in pyrolysis/co-pyrolysis bio-oil production.

Topics & Concepts

Raw materialPyrolysis oilChemistryPyrolysisComputer scienceOrganic chemistryPetroleum Processing and AnalysisThermochemical Biomass Conversion ProcessesHeat transfer and supercritical fluids
Estimation of fast pyrolysis <scp>bio‐oil</scp> properties from feedstock characteristics using <scp>rough‐set</scp> ‐based machine learning | Litcius