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Real options analysis of climate-change adaptation: investment flexibility and extreme weather events

机译:气候变化适应的真实选择分析:投资灵活性和极端天气事件

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Investments in climate-change adaptation will have to be made while the extent of climate change is uncertain. However, some important sources of uncertainty will fall over time as more climate data become available. This paper investigates the effect on optimal investment decision-making of learning that reduces uncertainty. It develops a simple real options method to value options that are found in many climate-change adaptation contexts. This method modifies a binomial tree model frequently applied to climate-change adaptation problems, incorporating gradual learning using a Bayesian updating process driven by new observations of extreme events. It is used to investigate the timing, scale, or upgradable design of an adaptation project. Recognition that we might have more or different information in the future makes flexibility valuable. The amount of value added by flexibility and the ways in which flexibility should be exploited depend on how fast we learn about climate change. When learning will occur quickly, the value of the option to delay investment is high. When learning will occur slowly, the value of the option to build a small low-risk project instead of a large high-risk one is high. For intermediate cases, the option to build a small project that can be expanded in the future is high. The approach in this paper can support efficient decision-making on adaptation projects by anticipating that we gradually learn about climate change by the recurrence of extreme events.
机译:在气候变化程度不确定的情况下,必须制定对气候变化适应的投资。然而,随着更多气候数据可用的,一些重要的不确定性来源将随着时间的推移而下降。本文调查了对降低不确定性的最佳投资决策的影响。它开发了一个简单的真实选项方法,以重视在许多气候变化适应上下文中找到的值。该方法修改经常应用于气候变化适应问题的二项树模型,使用由极端事件的新观察驱动的贝叶斯更新过程逐渐学习。它用于调查适应项目的时序,规模或可升级的设计。认识到我们可能有更多或不同的信息,使得灵活性有价值。通过灵活性添加的价值数量以及应利用灵活性的方式取决于我们了解气候变化的速度。当学习快速发生时,延迟投资的选项的值很高。学习将缓慢发生,建立一个小型低风险项目而不是大型高风险的选项的值很高。对于中间案例,建立一个可以在未来扩展的小项目的选项很高。本文的方法可以通过预期通过极端事件的复发来逐步了解气候变化来支持适应项目的有效决策。

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