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WILBY, R. L., HAY, L. E. and LEAVESLEY, G. H. A comparison of downscaled and raw GCM output: Implications for climate change scenarios in the SanJuan River basin, Colorado. Journal of Hydrology, 1999, 225(1-2): 67-91.
http://dx.doi.org/10.1016/S0022-1694(99)00136-5

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  • 标题: 长江流域参照蒸发量时空变化趋势分析Trends Analysis on Spatiotemporal Characteristics of Reference Evaporation in the Yangtze River Basin

    作者: 李子硕, 陶新娥, 陈华

    关键字: 气候变化, 长江流域, 统计降尺度, 参照蒸发蒸腾量Climate Change, Yangtze River Basin, Statistical Down-Scaling Model, Reference Evaporation

    期刊名称: 《Journal of Water Resources Research》, Vol.4 No.6, 2015-12-10

    摘要: 根据长江流域134个气象站1961-2010年逐日气象资料,基于Penman-Monteith法计算参照蒸发量,选取NECP再分析数据,采用SDSM (the Statistical Down-Scaling Model)方法,进行长江流域未来参照蒸发量的降尺度研究。研究表明:1) SDSM方法对参照蒸发量能较准确的模拟,检验期的确定性系数可达93%以上;2) 1961~2010年长江流域的蒸发蒸腾量呈下降趋势,显著下降的站点集中在长江中下游区域、长江流域北部的区域;3) Rcp45与Rcp85气候情景下,长江流域未来2011~2099年的参照蒸发量呈上升趋势,且Rcp85情景下的参照蒸发量增加的幅度大于Rcp45。 Based on 134 hydro-meteorological gauges in the Yangtze River basin 1961-2010 daily meteorological data, the reference evaporation was calculated by using the Penman-Monteith method. To predict the future change of the reference evaporation, SDSM (the Statistical Down-Scaling Model) method was used to downscale the outputs of GCMs, which was firstly trained by utilizing the NECP reanalysis data. Results show that: 1) SDSM reference evaporation method performed better in simulating the reference evapo-ration as to the high simulation deterministic coefficient (0.93) in the testing period; 2) 1961-2010 annual reference evaporation in the Yangtze River basin decreased significantly; decreasing sites concentrated in the lower reaches, the middle stream and the north of the Yangtze River basin; 3) under Rcp45 and Rcp85 climate scenarios, reference evaporation of the Yangtze River basin will increase in 2011 - 2099 years, and the rate of increase of reference evaporation under Rcp85 scenarios is greater than Rcp45.

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