Modelling long-term industry energy demand and CO2 emissions in the system context using REMIND (version 3.1.0)

IF 4 3区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Geoscientific Model Development Pub Date : 2024-03-07 DOI:10.5194/gmd-17-2015-2024
M. Pehl, Felix Schreyer, Gunnar Luderer
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引用次数: 1

Abstract

Abstract. This paper presents an extension of industry modelling within the REMIND integrated assessment model to industry subsectors and a projection of future industry subsector activity and energy demand for different baseline scenarios for use with the REMIND model. The industry sector is the largest greenhouse-gas-emitting energy demand sector and is considered a mitigation bottleneck. At the same time, industry subsectors are heterogeneous and face distinct emission mitigation challenges. By extending the multi-region, general equilibrium integrated assessment model REMIND to an explicit representation of four industry subsectors (cement, chemicals, steel, and other industry production), along with subsector-specific carbon capture and sequestration (CCS), we are able to investigate industry emission mitigation strategies in the context of the entire energy–economy–climate system, covering mitigation options ranging from reduced demand for industrial goods, fuel switching, and electrification to endogenous energy efficiency increases and carbon capture. We also present the derivation of both activity and final energy demand trajectories for the industry subsectors for use with the REMIND model in baseline scenarios, based on short-term continuation of historic trends and long-term global convergence. The system allows for selective variation of specific subsector activity and final energy demand across scenarios and regions to create consistent scenarios for a wide range of socioeconomic drivers and scenario story lines, like the Shared Socioeconomic Pathways (SSPs).
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利用 REMIND(3.1.0 版)建立系统背景下的长期工业能源需求和二氧化碳排放模型
摘要本文介绍了将 REMIND 综合评估模型中的工业建模扩展到工业分部门的情况,以及对不同基线情景下未来工业分部门活动和能源需求的预测,供 REMIND 模型使用。工业部门是最大的温室气体排放能源需求部门,被认为是减缓气候变化的瓶颈。同时,工业分部门具有异质性,面临着不同的减排挑战。通过扩展多区域一般均衡综合评估模型 REMIND,明确表示四个工业子部门(水泥、化工、钢铁和其他工业生产)以及特定子部门的碳捕集与封存(CCS),我们能够在整个能源-经济-气候系统的背景下研究工业减排战略,涵盖从减少工业品需求、燃料转换、电气化到内生能效提高和碳捕集等各种减排方案。我们还根据历史趋势的短期延续和长期的全球趋同,推导出工业子行业的活动和最终能源需求轨迹,供 REMIND 模型在基线情景中使用。该系统允许在不同情景和地区有选择地改变特定子行业的活动和最终能源需求,从而为广泛的社会经济驱动因素和情景故事线(如共享社会经济路径)创建一致的情景。
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来源期刊
Geoscientific Model Development
Geoscientific Model Development GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
8.60
自引率
9.80%
发文量
352
审稿时长
6-12 weeks
期刊介绍: Geoscientific Model Development (GMD) is an international scientific journal dedicated to the publication and public discussion of the description, development, and evaluation of numerical models of the Earth system and its components. The following manuscript types can be considered for peer-reviewed publication: * geoscientific model descriptions, from statistical models to box models to GCMs; * development and technical papers, describing developments such as new parameterizations or technical aspects of running models such as the reproducibility of results; * new methods for assessment of models, including work on developing new metrics for assessing model performance and novel ways of comparing model results with observational data; * papers describing new standard experiments for assessing model performance or novel ways of comparing model results with observational data; * model experiment descriptions, including experimental details and project protocols; * full evaluations of previously published models.
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