| Literature DB >> 33418349 |
Sanphawat Phromphithak1, Thossaporn Onsree2, Nakorn Tippayawong3.
Abstract
Ionic liquid solvents (ILSs) have been effectively utilized in biomass pretreatment to produce cellulose-rich materials (CRMs). Predicting CRM properties and evaluating multi-dimensional relationships in this system are necessary but complicated. In this work, machine learning algorithms were applied to predict CRM properties in terms of cellulose enrichment factor (CEF) and solid recovery (SR), using 23-feature datasets from biomass characteristics, operating conditions, ILSs identities, and catalyst. Random forest algorithm was found to have the highest prediction accuracy with RMSE and R2 of 0.22 and 0.94 for CEF, as well as 0.07 and 0.84 for SR, respectively. Highly influential features on making predictions were mainly from biomass characteristics andILS treatment'soperating conditions, totally contributed 80% on CEF and 60% on SR. One- and two-way partial dependence plots were used to explain/interpret the multi-dimensional relationships of the most important features. Our findings could be applied in designing new ILSs and optimizing the process conditions.Keywords: AI; Biomass bioenergy; Chemical conversion; Deep eutectic solvents; Lignin extraction
Mesh:
Substances:
Year: 2021 PMID: 33418349 DOI: 10.1016/j.biortech.2020.124642
Source DB: PubMed Journal: Bioresour Technol ISSN: 0960-8524 Impact factor: 9.642