国家一级温室气体去除技术部署的机器学习方法

IF 4.6 3区 工程技术 Q2 ENERGY & FUELS
Jude O. Asibor, Peter T. Clough, Seyed Ali Nabavi, Vasilije Manovic
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引用次数: 0

摘要

使用分层聚类机器学习对各国部署五种温室气体去除技术的适宜性进行了调查。这些技术包括植树造林、增强风化、直接空气碳捕获和储存、具有碳捕获和存储的生物能源以及生物炭。这种无监督机器学习模型的使用极大地降低了在评估GGR技术部署潜力时出现人为偏见的可能性,而是基于应用数据采取了更全面的观点。建模利用了182个国家的生物地球物理和技术经济因素的输入,模型输出突出了这些GGR方法的潜在性能。美国、加拿大、巴西、中国、俄罗斯、澳大利亚以及欧盟和撒哈拉以南非洲国家被确定为适合部署这些GGR技术的关键地区。所获得的部署适宜性分类的确定性水平在65%至98%之间。虽然研究结果表明了国家之间进行区域合作的必要性,但也强调了各国在修订后的国家自主贡献中优先考虑和整合GGR技术的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A machine learning approach for country-level deployment of greenhouse gas removal technologies

The suitability of countries to deploy five greenhouse gas removal technologies was investigated using hierarchical clustering machine learning. These technologies include forestation, enhanced weathering, direct air carbon capture and storage, bioenergy with carbon capture and storage and biochar. The use of this unsupervised machine learning model greatly minimises the likelihood of human bias in the assessment of GGR technology deployment potentials and instead takes a more holistic view based on the applied data. The modelling utilised inputs of bio-geophysical and techno-economic factors of 182 countries, with the model outputs highlighting the potential performance of these GGR methods. Countries such as USA, Canada, Brazil, China, Russia, Australia as well as those within the EU and Sub-Saharan Africa were identified as key areas suitable to deploy these GGR technologies. The level of certainty of the obtained deployment suitability categorisation ranged from 65 to 98 %. While the results show the need for regional collaboration between nations, they also highlight the necessity for nations to prioritise and integrate GGR technologies in their revised nationally determined contributions.

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来源期刊
CiteScore
9.20
自引率
10.30%
发文量
199
审稿时长
4.8 months
期刊介绍: The International Journal of Greenhouse Gas Control is a peer reviewed journal focusing on scientific and engineering developments in greenhouse gas control through capture and storage at large stationary emitters in the power sector and in other major resource, manufacturing and production industries. The Journal covers all greenhouse gas emissions within the power and industrial sectors, and comprises both technical and non-technical related literature in one volume. Original research, review and comments papers are included.
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