A comparative study of machine learning methods for bio-oil yield prediction - A genetic algorithm-based features selection.

Bioresour Technol

Institute of Environmental Sciences, Nguyen Tat Thanh University, Ho Chi Minh City 755414, Viet Nam; College of Medical and Health Science, Asia University, Taichung, Taiwan.

Published: September 2021


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Article Abstract

A novel genetic algorithm-based feature selection approach is incorporated and based on these features, four different ML methods were investigated. According to the findings, ML models could reliably predict bio-oil yield. The results showed that Random forest (RF) is preferred for bio-oil yield prediction (R2 ~ 0.98) and highly recommended when dealing with the complex correlation between variables and target. Multi-Linear regression model showed relatively poor generalization performance (R2 ~ 0.75). The partial dependence analysis was done for ML models to show the influence of each input variable on the target variable. Lastly, an easy-to-use software package was developed based on the RF model for the prediction of bio-oil yield. The current study offered new insights into the pyrolysis process of biomass and to improve bio-oil yield. It is an attempt to reduce the time-consuming and expensive experimental work for estimating the bio-oil yield of biomass during pyrolysis.

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http://dx.doi.org/10.1016/j.biortech.2021.125292DOI Listing

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