生物炼制
循环经济
持续性
工业共生体系
资源(消歧)
资源效率
多学科方法
厌氧消化
工业生态学
计算机科学
可持续发展
资源回收
生化工程
工程类
废物管理
生态学
计算机网络
甲烷
社会学
生物燃料
社会科学
生物
废水
作者
To‐Hung Tsui,Mark C.M. van Loosdrecht,Yanjun Dai,Yen Wah Tong
标识
DOI:10.1016/j.biortech.2022.128445
摘要
Biorefinery systems are playing pivotal roles in the technological support of resource efficiency for circular bioeconomy. Meanwhile, artificial intelligence presents great potential in handling scientific tasks of high-dimensional complexity. This review article scrutinizes the status of machine learning (ML) applications in four critical biorefinery systems (i.e. composting, fermentation, anaerobic digestion, and thermochemical conversions) as well as their advancements against traditional modeling techniques of mechanistic approach. The contents cover their algorithm selections, modeling challenges, and prospective improvements. Perspectives are sketched to further inform collective efforts on crucial aspects. The multidisciplinary interchange of modeling knowledge will enable a more progressive digital transformation of sustainability efforts in supporting sustainable development goals.
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