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Combining Stochastic Optimization and Monte Carlo Simulation to Deal with Uncertainties in Climate Policy Assessment

机译:结合随机优化和蒙特卡洛模拟处理气候政策评估中的不确定性

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In this paper, we explore the impact of several sources of uncertainties on the assessment of energy and climate policies when one uses in a harmonized way stochastic programming in a large-scale bottom-up (BU) model and Monte Carlo simulation in a large-scale top-down (TD) model. The BU model we use is the TIMES Integrated Assessment Model, which is run in a stochastic programming version to provide a hedging emission policy to cope with the uncertainty characterizing climate sensitivity. The TD model we use is the computable general equilibrium model GEMINI-E3. Through Monte Carlo simulations of randomly generated uncertain parameter values, one provides a stochastic micro- and macro-economic analysis. Through statistical analysis of the simulation results, we analyse the impact of the uncertainties on the policy assessment.
机译:在本文中,当我们以协调的方式在大规模的自下而上(BU)模型中使用随机规划并在大型的自顶向下(TD)模型。我们使用的BU模型是TIMES综合评估模型,该模型以随机编程版本运行,以提供对冲排放政策,以应对表征气候敏感性的不确定性。我们使用的TD模型是可​​计算的一般均衡模型GEMINI-E3。通过对随机生成的不确定参数值进行的蒙特卡洛模拟,可以提供随机的微观和宏观经济分析。通过对模拟结果的统计分析,我们分析了不确定性对政策评估的影响。

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