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Electric sector investments under technological and policy-related uncertainties: a stochastic programming approach

机译:技术和政策相关不确定性下的电力行业投资:一种随机规划方法

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Although emerging technologies like carbon capture and storage and advanced nuclear are expected to play leading roles in greenhouse gas mitigation efforts, many engineering and policy-related uncertainties will influence their deployment. Capital-intensive infrastructure decisions depend on understanding the likelihoods and impacts of uncertainties such as the timing and stringency of climate policy as well as the technological availability of carbon capture systems. This paper demonstrates the utility of stochastic programming approaches to uncertainty analysis within a practical policy setting, using uncertainties in the US electric sector as motivating examples. We describe the potential utility of this framework for energy-environmental decision making and use a modeling example to reinforce these points and to stress the need for new tools to better exploit the full range of benefits the stochastic programming approach can provide. Model results illustrate how this framework can give important insights about hedging strategies to reduce risks associated with high compliance costs for tight CO caps and low CCS availability. Metrics for evaluating uncertainties like the expected value of perfect information and the value of the stochastic solution quantify the importance of including uncertainties in capacity planning, of making precautionary low-carbon investments, and of conducting research and gathering information to reduce risk.
机译:尽管预计碳捕集与封存和先进核能等新兴技术将在温室气体减排工作中发挥主导作用,但许多与工程和政策相关的不确定因素将影响其部署。资本密集型基础设施决策取决于对不确定性的可能性和影响的了解,例如气候政策的时机和严格性以及碳捕集系统的技术可用性。本文以美国电力行业中的不确定性为例,说明了在实际政策环境下随机规划方法在不确定性分析中的实用性。我们描述了此框架在能源环境决策中的潜在效用,并使用一个建模示例来强化这些观点,并强调需要新工具来更好地利用随机编程方法可以提供的全部好处。模型结果说明了此框架如何能够提供有关对冲策略的重要见解,以减少与严格的CO上限和低CCS可用性所需的高合规成本相关的风险。评估不确定性(如完美信息的期望值和随机解决方案的价值)的度量标准量化了将不确定性纳入容量规划,进行预防性低碳投资以及进行研究和收集信息以降低风险的重要性。

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