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Statistical Simulation to Estimate Uncertain Behavioral Parameters of Hybrid Energy-Economy Models

机译:估计混合能源经济模型不确定行为参数的统计模拟

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In energy-economy modeling, new hybrid models attempt to combine the technological explicitness of bottom-up models with the macroeconomic feedbacks and statistically estimated behavioral parameters of top-down models. However, statistical estimation of behavioral parameters (portraying firm and household technology choices) with such models is challenged by the number of uncertain variables and the lack of historical data on technologies in terms of capital costs, operating costs, and market shares. Multiple combinations of parameter values might equally explain past technology choices. This paper reports on the application of a Bayesian statistical simulation approach for estimating the most likely values for these key behavioral parameters in order to best explain past technology choices and then simulate policies to influence future technology choices. The method included (1) data collection of key technology market shares, capital costs, and operating costs over the past; (2) backcasting a hybrid energy-economy model over a historical time period; and (3) the application of Markov chain Monte Carlo statistical simulation using the Metropolis-Hastings algorithm as a tool for estimating distributions for key parameters in the model. The results provide a means of indicating the uncertainty bounds around key behavioral parameters when generating forecasts of the effect of certain policies. However, the results also indicate that this approach may have limited applicability, given that future available technologies may differ substantially from past technologies and that it is difficult to separate the effects of parameter uncertainty from model structure uncertainty.
机译:在能源经济建模中,新的混合模型试图将自下而上模型的技术明确性与宏观经济反馈和自上而下模型的统计估计的行为参数相结合。然而,用这种模型对行为参数(描述公司和家庭技术选择的行为)进行统计估计受到了不确定变量的数量以及缺乏有关资本成本,运营成本和市场份额的技术历史数据的挑战。参数值的多种组合可能同样解释了过去的技术选择。本文报告了贝叶斯统计模拟方法在估计这些关键行为参数的最可能值方面的应用,以便最好地解释过去的技术选择,然后模拟影响未来技术选择的政策。该方法包括:(1)收集过去关键技术市场份额,资本成本和运营成本的数据; (2)在一个历史时期内对混合能源经济模型进行回溯; (3)使用Metropolis-Hastings算法作为马尔可夫链蒙特卡罗统计模拟方法在模型中估算关键参数分布的工具。结果提供了一种方法,可以在生成某些政策效果的预测时,指示关键行为参数周围的不确定性范围。但是,结果还表明,鉴于未来可用的技术可能与过去的技术大不相同,并且很难将参数不确定性的影响与模型结构的不确定性区分开来,因此该方法的适用性可能有限。

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