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The Use of Statistical Weather Generator, Hybrid Data Driven and System Dynamics Models for Water Resources Management under Climate Change

机译:统计天气生成器,混合数据驱动和系统动力学模型在气候变化下水资源管理中的应用

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Nowadays, the assumption of stationary patterns in hydrologic time series is being challenged, mainly because of climate change and the uncertainty brought about by it. In this paper, climate change and impacts on water resources of Zolachay in Urmia Lake basin in northwestern Iran have been studied comprehensively. Expected precipitation and temperature changes are obtained from the results of general circulation models (GCMs) approved by IPCC AR4 in three emission scenarios of A1B, A2, and B1. To simulate climate change conditions for horizon 2020, LARS-WG, as a stochastic weather generator, has been employed. Analyzing results by a Kernel density estimator indicates a decrease in annual precipitation and a tendency to a warmer climate. Then different data-driven models such as artificial neural network and M5 model tree, in conjunction with wavelet transform, have been used to develop a rainfall runoff model of the basin on a monthly time scale. Results show that a warmer and drier climate in the future will cause the hydrograph to have temporal and quantitative changes. Operation of the multipurpose Zola Reservoir (located on the main stream) is simulated using the system dynamics approach. In addition to changes in the runoff of the basin, development scenario is also considered. Results demonstrate considerable changes in the reliability and deficiency measures in the operation of Zola Reservoir under climate change condition and development scenario. These results indicate that a revision in the rule curve of the reservoir is needed. Finally, this study predicts that more groundwater could be extracted to supply demands in the basin.
机译:如今,水文时间序列平稳模式的假设正受到挑战,这主要是由于气候变化及其带来的不确定性。本文对伊朗西北部乌尔米亚湖流域的Zolachay气候变化及其对水资源的影响进行了综合研究。预期的降水和温度变化是从IPCC AR4批准的A1B,A2和B1三种排放情景的通用循环模型(GCM)的结果中获得的。为了模拟2020年地平线的气候变化条件,已使用LARS-WG作为随机天气生成器。核密度估算器对结果的分析表明,年降水量减少,并且气候趋向暖化。然后,将不同的数据驱动模型(例如人工神经网络和M5模型树)与小波变换相结合,用于开发流域每月时间尺度上的降雨径流模型。结果表明,未来更温暖,更干燥的气候将导致水文仪发生时间和数量变化。使用系统动力学方法模拟多功能Zola水库(位于主流上)的​​运行。除了流域径流的变化外,还考虑了开发方案。结果表明,在气候变化条件和发展情景下,佐拉水库的可靠性和不足性措施有很大的变化。这些结果表明需要对储层规则曲线进行修正。最后,这项研究预测可以提取更多的地下水来满足流域的需求。

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