气候变化下大型水库政策影响评价

A. Buoro, Eduardo César Figueiredo Coutinho, D. Specht
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引用次数: 0

摘要

我们开发了一种方法来模拟气候变化对水库水位的影响,并评估该模型在政策评估过程中的适用性。本文首先利用分位数映射技术对两个气候变化(CC)环流模式(hagedem和CNRM)进行了基于十年重叠期的偏置校正。该数据被用作两态马尔可夫链模型的输入,以生成随机降雨发生器模型。然后,我们提出了一种替代方法来实现从历史数据到长期气候预报的平滑过渡。这些随机降雨是校准径流模型的输入,该模型是动态模拟系统的一部分,该系统包含用于水库的替代政策。该方法创建了一个现实的决策支持工具,结合了与CC相关的不确定性来评估管理策略。我们将这种方法应用于Cantareira水库,它是世界上最大的饮用水系统之一。得出的结论是,相对于替代方案,“季节性政策”(RAC1)在维持持续较高的储存水平方面更为稳健。气候变化分析表明,随着时间的推移,蓄水量和溢出量稳步增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EVALUATING POLICY IMPACT OF LARGE WATER RESERVOIRS UNDER CLIMATE CHANGE
We developed a methodology for modelling climate change impacts on reservoir levels and to evaluate the applicability of the model into the process of policy evaluation. We start by performing the technique of Quantile Mapping to apply bias correction in two Climate Change (CC) General Circulation Models (GCM) models (HADGEM and CNRM) based on an overlapping period of ten years. This data is used as input into a two state Markov Chain model to generate a stochastic rain generator model. We then suggest an alternative method to perform a smooth transition from the historical data to long term climate forecasting. These stochastic rainfalls are the input to a calibrated runoff model that is part of a dynamic simulation system incorporating the alternative policies used for the reservoir. This method created a realistic decision support tool, incorporating the uncertainty associated with the CC to evaluate management policies. We applied this methodology on the Cantareira reservoir, one of the largest drinking water systems in the world. It was concluded that the “seasonal policy” (RAC1) is more robust to maintain a constantly higher storage level in relation to the alternative. The climate change analysis indicates a steady increase in storage and overflow with time.
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