论文标题

不确定性在控制气候变化中的作用

The Role of Uncertainty in Controlling Climate Change

论文作者

Cai, Yongyang

论文摘要

气候和经济的综合评估模型(IAMS)旨在分析旨在控制气候变化(例如碳税和补贴)的政策的影响和功效。 IAM的主要特征是它们的地球物理部门决定了工业前水平的平均表面温度升高,这反过来决定了损伤功能。假设我们知道所有未来的信息,那么大多数现有的IAM是完美的前瞻性模型。但是,气候和经济体系中存在重大不确定性,包括参数不确定性,模型不确定性,气候倾斜风险,经济风险和歧义。例如,气候损害不确定:一些研究人员认为气候损害与瞬时产量成正比,而其他研究人员则认为气候损害对经济增长有更持续的影响。气候小费的风险代表了(几乎)不可逆的气候事件,可能导致气候系统发生重大变化,例如格陵兰冰片崩溃,而条件,倾倒,持续时间和相关损害的可能性也不确定。碳捕获和存储,适应性,可再生能源和能源效率的技术进步也不确定。面对这些不确定性,决策者必须提供一个决定,以考虑重要因素,例如风险规避,不平等厌恶和经济和生态系统的可持续性。解决此问题可能需要比标准IAM和高级计算方法更丰富,更现实的模型。最近的文献表明,这些不确定性可以纳入IAM,并可能会大大改变最佳的气候政策。

Integrated Assessment Models (IAMs) of the climate and economy aim to analyze the impact and efficacy of policies that aim to control climate change, such as carbon taxes and subsidies. A major characteristic of IAMs is that their geophysical sector determines the mean surface temperature increase over the preindustrial level, which in turn determines the damage function. Most of the existing IAMs are perfect-foresight forward-looking models, assuming that we know all of the future information. However, there are significant uncertainties in the climate and economic system, including parameter uncertainty, model uncertainty, climate tipping risks, economic risks, and ambiguity. For example, climate damages are uncertain: some researchers assume that climate damages are proportional to instantaneous output, while others assume that climate damages have a more persistent impact on economic growth. Climate tipping risks represent (nearly) irreversible climate events that may lead to significant changes in the climate system, such as the Greenland ice sheet collapse, while the conditions, probability of tipping, duration, and associated damage are also uncertain. Technological progress in carbon capture and storage, adaptation, renewable energy, and energy efficiency are uncertain too. In the face of these uncertainties, policymakers have to provide a decision that considers important factors such as risk aversion, inequality aversion, and sustainability of the economy and ecosystem. Solving this problem may require richer and more realistic models than standard IAMs, and advanced computational methods. The recent literature has shown that these uncertainties can be incorporated into IAMs and may change optimal climate policies significantly.

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