Probabilistic seasonal forecasts of droughts with a simplified coupled hydrologic-atmospheric model for water resources planning

被引:0
|
作者
M. L. Anderson
M. D. Mierzwa
M. L. Kavvas
机构
[1] Department of Civil and Environmental Engineering,
[2] 116 Everson Hall,undefined
[3] University of California Davis,undefined
[4] One Shields Avenue,undefined
[5] Davis,undefined
[6] CA 95616,undefined
[7] USA,undefined
[8] California Department of Water Resources,undefined
[9] 1419 Ninth Street,undefined
[10] Sacramento,undefined
[11] CA 94236,undefined
[12] USA,undefined
关键词
Probability Distribution; Model State; Northern Hemisphere; System Response; Nonlinear Process;
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摘要
 Because of the nonlinear processes and interactions of the hydroclimatic system, a given hydroclimatic event has an associated probability distribution of possible hydrologic response that changes in space and time. An initial approach in quantifying these evolving probability distributions for use in water resources planning utilizes a simplified climate model. The simplified climate model incorporates the salient physics of the hydroclimatic system for the midlatitudes of the Northern Hemisphere. Using a Monte Carlo format with random initial conditions for the model state variables, hydrologic system response associated with a selected hydroclimatic event is quantified. A case study is presented that utilizes results from the simplified climate model to provide probabilistic seasonal forecasts for water resources planning.
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页码:263 / 274
页数:11
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