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Improving probabilistic hydroclimatic projections through high-resolution convection-permitting climate modeling and Markov chain Monte Carlo simulations

机译:通过高分辨率对流允许气候模拟和马尔可夫链蒙特卡洛模拟,改善概率性水文气候预测

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Understanding future changes in hydroclimatic variables plays a crucial role in improving resilience and adaptation to extreme weather events such as floods and droughts. In this study, we develop high-resolution climate projections over Texas by using the convection-permitting Weather Research and Forecasting (WRF) model with 4km horizontal grid spacing, and then produce the Markov chain Monte Carlo (MCMC)-based hydrologic forecasts in the Guadalupe River basin which is the primary concern of the Texas Water Development Board and the Guadalupe-Blanco River Authority. The Parameter-elevation Regressions on Independent Slopes Model (PRISM) dataset is used to verify the WRF climate simulations. The Model Parameter Estimation Experiment (MOPEX) dataset is used to validate probabilistic hydrologic predictions. Projected changes in precipitation, potential evapotranspiration (PET) and streamflow at different temporal scales are examined by dynamically downscaling climate projections derived from 15 Coupled Model Intercomparison Project Phase 5 (CMIP5) general circulation models (GCMs). Our findings reveal that the Upper Coast Climate Division of Texas is projected to experience the most remarkable wetting caused by precipitation and PET changes, whereas the most significant drying is expected to occur for the North Central Texas Climate Division. The dry Guadalupe River basin is projected to become drier with a substantial increase in future drought risks, especially for the summer season. And the extreme precipitation events are projected to increase in frequency and intensity with a reduction in overall precipitation frequency, which may result in more frequent occurrences of flash floods and drought episodes in the Guadalupe River basin.
机译:了解未来水文气候变量的变化在提高抵御能力和适应洪水和干旱等极端天气事件中起着至关重要的作用。在这项研究中,我们通过使用水平网格间隔为4 km的对流允许天气研究和预报(WRF)模型来开发德克萨斯州的高分辨率气候预测,然后在蒙特卡洛(MCMC)的基础上生成基于马尔可夫链蒙特卡罗(MCMC)的水文预报瓜达卢佩河流域,这是德克萨斯州水务发展委员会和瓜达卢佩-布兰科河管理局的首要任务。使用独立坡度模型的参数高程回归(PRISM)数据集来验证WRF气候模拟。模型参数估计实验(MOPEX)数据集用于验证概率水文预测。通过动态缩小由15个耦合模型比较项目阶段5(CMIP5)的一般循环模型(GCM)得出的气候预测,可以检查不同时间尺度上的降水,潜在蒸散量(PET)和水流的预测变化。我们的发现表明,预计得克萨斯州上海岸气候区将经历由降水和PET变化引起的最显着的润湿,而预计得克萨斯州中北部气候区将发生最显着的干燥。干旱的瓜达卢佩河流域预计将变得更干燥,未来干旱的风险将大大增加,尤其是在夏季。预计极端降水事件的频率和强度将增加,而总降水频率将降低,这可能导致瓜达卢佩河流域的山洪暴发和干旱事件更为频繁。

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