部署负排放技术的优化和决策支持模型

M. V. Migo-Sumagang, K. Aviso, D. Foo, M. Short, P. N. S. B. Nair, Raymond R. Tan
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引用次数: 1

摘要

到本世纪中叶,将需要负排放技术(net)来实现净零排放。然而,net可以对土地和水资源供应、粮食生产和生物多样性产生广泛的影响。网络的部署也将取决于区域和国家的情况、技术的可用性和脱碳战略。过程集成(PI)可以作为选择、规划和优化大规模net实施的决策支持模型的基础。本文回顾了文献并描绘了PI在net部署中的作用。数学规划、夹点分析(PA)、过程图(p -graph)等技术是在资源或占用限制下规划。NET系统的强大方法。其他方法,如多标准决策分析(MCDA),边际消减成本曲线,因果关系图和机器学习(ML)也进行了讨论。目前的文献主要集中在具有碳捕获和储存(BECCS)和造林/再造林(AR)的生物能源,但其他网络需要整合到未来的大规模脱碳模型中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization and decision support models for deploying negative emissions technologies
Negative emissions technologies (NETs) will be needed to reach net-zero emissions by mid-century. However, NETs can have wide-ranging effects on land and water availability, food production, and biodiversity. The deployment of NETs will also depend on regional and national circumstances, technology availability, and decarbonization strategies. Process integration (PI) can be the basis for decision support models for the selection, planning, and optimization of the large-scale implementation of NETs. This paper reviews the literature and maps the role of PI in NETs deployment. Techniques such as mathematical programming, pinch analysis (PA), process graphs (P-graphs), are powerful methods for planning NET systems under resource or footprint constraints. Other methods such as multi-criteria decision analysis (MCDA), marginal abatement cost curves, causality maps, and machine learning (ML) are also discussed. Current literature focuses mainly on bioenergy with carbon capture and storage (BECCS) and afforestation/reforestation (AR), but other NETs need to be integrated into future models for large-scale decarbonization.
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