捕捉碳社会成本估算中不确定性的替代方法

IF 5.4 3区 工程技术 Q2 ENERGY & FUELS Wiley Interdisciplinary Reviews-Energy and Environment Pub Date : 2023-04-18 DOI:10.1002/wene.475
Desy Caesary, Hana Kim, M. Nam
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引用次数: 0

摘要

由人为活动导致的大气二氧化碳浓度增加引发的全球地表温度的持续升高,不仅在短期内,而且在长期内都会造成损害。这种损害被称为碳的社会成本(SCC),已经使用综合评估模型(IAM)进行了广泛的估计。由于IAM参数的不确定性,已经观察到了大范围的SCC估计值。本研究将IAM模块分为四类后,对这些不确定性进行了全面审查:气候敏感性、损害函数、贴现率和区域-部门验证。该审查是通过比较各种IAM考虑的关键思想进行的:与预计二氧化碳排放量有关的社会经济条件、二氧化碳大气浓度的估计、总辐射强迫的估计、温度函数的参数、损害函数的参数和贴现率值。此外,本研究提出了一种使用机器学习方法来捕捉SCC估计中嵌入的不确定性的替代方法。这使得能够对特定水平的SCC进行概率评估,并提高我们对使用IAM计算的SCC含义的理解。这种替代方法为SCC的进一步研究提供了基础。
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An alternative approach to capture uncertainties embedded in the estimation of social cost of carbon
The continuous increase in global surface temperature, which has been triggered by the increase in atmospheric CO2 concentration from anthropogenic activity, results in damage not only in the short term but also in the long term. This damage, called the social cost of carbon (SCC), has been widely estimated using integrated assessment models (IAMs). A large range of estimated SCC values have been observed because of uncertainties in IAMs' parameters. This study provides a comprehensive review of these uncertainties after dividing IAM modules into four categories: climate sensitivity, damage function, discount rate, and regional–sectoral validation. The review was conducted by comparing key ideas considered by various IAMs: socioeconomic conditions in relation to projected CO2 emissions, estimation of the atmospheric concentration of CO2, estimation of total radiative forcing, parameters of the temperature function, parameters of the damage function, and discount rate value. In addition, this study presents an alternative approach to capture the uncertainties embedded in the SCC estimation, using a machine learning approach. This enables a probabilistic evaluation of a specific level of SCC and improves our comprehension of the implication of the calculated SCC using IAMs. This alternative approach provides a basis for further study of SCC.
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来源期刊
CiteScore
11.70
自引率
3.30%
发文量
42
期刊介绍: Wiley Interdisciplinary Reviews: Energy and Environmentis a new type of review journal covering all aspects of energy technology, security and environmental impact. Energy is one of the most critical resources for the welfare and prosperity of society. It also causes adverse environmental and societal effects, notably climate change which is the severest global problem in the modern age. Finding satisfactory solutions to the challenges ahead will need a linking of energy technology innovations, security, energy poverty, and environmental and climate impacts. The broad scope of energy issues demands collaboration between different disciplines of science and technology, and strong interaction between engineering, physical and life scientists, economists, sociologists and policy-makers.
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