Tsui To-Hung, van Loosdrecht Mark C M, Dai Yanjun, Tong Yen Wah
Environmental Research Institute, National University of Singapore, 1 Create Way, 138602, Singapore; Energy and Environmental Sustainability for Megacities (E2S2) Phase II, Campus for Research Excellence and Technological Enterprise (CREATE), 1 Create Way, Singapore, 138602, Singapore.
Department of Biotechnology, Delft University of Technology, the Netherlands.
Bioresour Technol. 2023 Feb;369:128445. doi: 10.1016/j.biortech.2022.128445. Epub 2022 Dec 5.
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.
生物精炼系统在循环生物经济资源效率的技术支持中发挥着关键作用。同时,人工智能在处理高维复杂的科学任务方面具有巨大潜力。本文综述审视了机器学习(ML)在四个关键生物精炼系统(即堆肥、发酵、厌氧消化和热化学转化)中的应用现状,以及它们相对于传统机理方法建模技术的进展。内容涵盖算法选择、建模挑战和预期改进。勾勒了相关观点,以进一步为关键方面的集体努力提供信息。建模知识的多学科交流将使支持可持续发展目标的可持续性努力实现更进步的数字转型。