机器学习预测生物质热解产生的生物油、沼气和生物炭:综述

IF 15 2区 环境科学与生态学 Q1 CHEMISTRY, MULTIDISCIPLINARY Environmental Chemistry Letters Pub Date : 2024-09-05 DOI:10.1007/s10311-024-01767-7
Kapil Khandelwal, Sonil Nanda, Ajay K. Dalai
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引用次数: 0

摘要

自 1970 年以来,世界能源消耗增加了 195%,其中 80% 以上的能源来自化石燃料,从而导致了污染和全球变暖。另外,现代生物质热解被认为是碳中性的,并能产生高附加值的沼气、生物油和生物炭,但实际热解过程并未完全优化。在此,我们回顾了利用机器学习改进木质纤维素生物质热解的情况,重点是机器学习算法和产品特性预测。算法包括回归分析、人工神经网络、决策树和支持向量机。机器学习可以预测沼气、生物油和生物炭的产量、质量、表面积、反应动力学、技术经济学和生命周期评估。讨论了机器学习技术的稳健性和工程应用。
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Machine learning to predict the production of bio-oil, biogas, and biochar by pyrolysis of biomass: a review

The world energy consumption has increased by + 195% since 1970 with more than 80% of the energy mix originating from fossil fuels, thus leading to pollution and global warming. Alternatively, pyrolysis of modern biomass is considered carbon neutral and produces value-added biogas, bio-oils, and biochar, yet actual pyrolysis processes are not fully optimized. Here, we review the use of machine learning to improve the pyrolysis of lignocellulosic biomass, with emphasis on machine learning algorithms and prediction of product characteristics. Algorithms comprise regression analysis, artificial neural networks, decision trees, and the support vector machine. Machine learning allows for the prediction of yield, quality, surface area, reaction kinetics, techno-economics, and lifecycle assessment of biogas, bio-oil, and biochar. The robustness of machine learning techniques and engineering applications are discussed.

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来源期刊
Environmental Chemistry Letters
Environmental Chemistry Letters 环境科学-工程:环境
CiteScore
32.00
自引率
7.00%
发文量
175
审稿时长
2 months
期刊介绍: Environmental Chemistry Letters explores the intersections of geology, chemistry, physics, and biology. Published articles are of paramount importance to the examination of both natural and engineered environments. The journal features original and review articles of exceptional significance, encompassing topics such as the characterization of natural and impacted environments, the behavior, prevention, treatment, and control of mineral, organic, and radioactive pollutants. It also delves into interfacial studies involving diverse media like soil, sediment, water, air, organisms, and food. Additionally, the journal covers green chemistry, environmentally friendly synthetic pathways, alternative fuels, ecotoxicology, risk assessment, environmental processes and modeling, environmental technologies, remediation and control, and environmental analytical chemistry using biomolecular tools and tracers.
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