首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Downscaling precipitation to river basin in India for IPCCSRES scenarios using support vector machine
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Downscaling precipitation to river basin in India for IPCCSRES scenarios using support vector machine

机译:使用支持向量机将IPCCSRES情景的降水降级到印度的流域

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This paper presents a methodology to downscale monthly precipitation to river basin scale in Indian context for special report of emission scenarios (SRES) using Support Vector Machine (SVM). In the methodology presented, probable predictor variables are extracted from (1) the National Center for Environmental Prediction (NCEP) reanalysis data set for the period 1971-2000 and (2) the simulations from the third generation Canadian general circulation model (CGCM3) for SRES emission scenarios A1B, A2, B1 and COMMIT for the period 1971-2100. These variables include both the thermodynamic and dynamic parameters and those which have a physically meaningful relationship with the precipitation. The NCEP variables which are realistically simulated by CGCM3 are chosen as potential predictors for seasonal stratification. The seasonal stratification involves identification of (1) the past wet and dry seasons through classification of the NCEP data on potential predictors into two clusters by the use of K-means clustering algorithm and (2) the future wet and dry seasons through classification of the CGCM3 data on potential predictors into two clusters by the use of nearest neighbour rule. Subsequently, a separate downscaling model is developed for each season to capture the relationship between the predictor variables and the predictand. For downscaling precipitation, the predictand is chosen as monthly Thiessen weighted precipitation for the river basin, whereas potential predictors are chosen as the NCEP variables which are correlated to the precipitation and are also realistically simulated by CGCM3. Implementation of the methodology presented is demonstrated by application to Malaprabha reservoir catchment in India which is considered to be a climatically sensitive region. The CGCM3 simulations are run through the calibrated and validated SVM downscaling model to obtain future projections of predictand for each of the four emission scenarios considered. The results show that the precipitation is projected to increase in future for almost all the scenarios considered. The projected increase in precipitation is high for A2 scenario, whereas it is least for COMMIT scenario. Copyright (c) 2007 Royal Meteorological Society.
机译:本文介绍了一种使用支持​​向量机(SVM)在印度背景下将月降水量缩减至流域规模的方法,以用于排放情景(SRES)的特殊报告。在提出的方法中,可能的预测变量是从(1)1971-2000年期间的国家环境预测中心(NCEP)再分析数据集和(2)第三代加拿大普通循环模型(CGCM3)的模拟中提取的1971-2100年期间的SRES排放情景A1B,A2,B1和COMMIT。这些变量包括热力学和动力学参数,以及与降水有物理意义的关系的参数。选择由CGCM3实际模拟的NCEP变量作为季节分层的潜在预测因子。季节性分层涉及(1)通过使用K-means聚类算法将潜在预测因子的NCEP数据分类为两个聚类来识别过去的湿季和干季,以及(2)通过对分类的分类来确定未来的湿季和干季。 CGCM3通过使用最近邻居规则将有关潜在预测变量的数据分为两个聚类。随后,为每个季节开发一个单独的降尺度模型,以捕获预测变量与预测变量之间的关系。对于降尺度降水,选择预测因子作为流域的每月蒂森加权降水,而选择潜在的预测因子作为与降水相关的NCEP变量,并通过CGCM3进行实际模拟。所提出方法的实施已通过应用于印度的马拉帕拉(Maraprabha)水库集水区而得到证明,该地区被认为是气候敏感地区。 CGCM3模拟通过经过校准和验证的SVM缩减模型进行,以获得针对所考虑的四种排放情景中的每一种的预测和未来的预测。结果表明,在几乎所有考虑的情况下,预计降雨都会增加。对于A2情景,预计的降水增加量很高,而对于COMMIT情景,降水量的增加最少。版权所有(c)2007皇家气象学会。

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