生物炭
厌氧消化
甲烷
制浆造纸工业
沼气
生物能源
化学
环境科学
数学
生物系统
废物管理
生物燃料
工程类
生物
热解
有机化学
作者
Yi Zhang,Yijing Feng,Zhonghao Ren,Runguo Zuo,Tianhui Zhang,Yeqing Li,Y. Wang,Zhiyang Liu,Ziyan Sun,Yongming Han,Lu Feng,Mortaza Aghbashlo,Meisam Tabatabaei,Junting Pan
标识
DOI:10.1016/j.biortech.2023.128746
摘要
The ideal conditions for anaerobic digestion experiments with biochar addition are challenging to thoroughly study due to different experimental purposes. Therefore, three tree-based machine learning models were developed to depict the intricate connection between biochar properties and anaerobic digestion. For the methane yield and maximum methane production rate, the gradient boosting decision tree produced R2 values of 0.84 and 0.69, respectively. According to feature analysis, digestion time and particle size had a substantial impact on the methane yield and production rate, respectively. When particle sizes were in the range of 0.3-0.5 mm and the specific surface area was approximately 290 m2/g, corresponding to a range of O content (>31%) and biochar addition (>20 g/L), the maximum promotion of methane yield and maximum methane production rate were attained. Therefore, this study presents new insights into the effects of biochar on anaerobic digestion through tree-based machine learning.
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