持续性
生命周期评估
碳足迹
环境科学
产量(工程)
生物量(生态学)
环境影响评价
生态足迹
生产(经济)
农业工程
制浆造纸工业
温室气体
农学
工程类
生态学
生物
材料科学
经济
冶金
宏观经济学
作者
Genmao Guo,Yuan He,Fangming Jin,Ondřej Mašek,Qing Huang
标识
DOI:10.1016/j.biortech.2023.129027
摘要
The hydrothermal bio-oil (HBO) production from biomass conversion can achieve sustainable and low-carbon development. It is always time-consuming and labor-intensive to quantitative relationship between influential variables and bio-oil yield and environmental sustainability impact in the hydrothermal conditions. Machine learning was used to predict bio-oil yield. Life cycle assessment (LCA) is further conducted to assess its environmental sustainability effect. The results demonstrated that gradient boosting decision tree regression (GBDT) have the most optimal prediction performance for the HBO yield (Training R2 = 0.97, Testing R2 = 0.92, RMSE = 0.05, MAE = 0.03). Lipid content is the most significant influential factor for HBO yield. LCA result further suggested that 1 kg of bio-oil production can cause 0.02 kg ep of SO2, 2.05 kg ep of CO2, and 0.01 kg ep of NOx emission, and environmental sustainability assessment of HBO is exhibited. This study provides meaningful insights to ML model prediction performance improvement and carbon footprint of HBO.
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