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在气候影响研究中引入随机天气发生器的方法和不确定性
作者姓名:Wu Jindong  Wang Shili
作者单位:Wu Jindong and Wang Shili Chinese Academy of Meteorological Sciences,Beijing 100081
基金项目:This study was supported by the third sub-project of the national key research project in the 9th Five-Year Plan: Study on the
摘    要:通过采用不同的随机天气发生器生成一定气候背景下各种气候变率情景,许多学者在最近的研究中已经认识到气候变率对农作物生长发育影响的重要性。传统的气候影响评估方法直接以大气环流模式的模拟试验结果作为未来气候情景,这样不可能理解如上的重要性。本文着重评述将随机天气发生器应用于气候变化影响研究的一般方法框架,以及作者的具体个例研究方法。文中最后分析了目前该领域研究中还存在的一些不确定性。 在当前的气候变化影响研究中,有不同的方法用来研制一种称为WGEN的典型随机天气发生器的参数化方案及其随机试验方法。不同的研究者也有不同的参数调控方法。通常的思路是通过气候控制试验和2×CO2试验之间的气候变量平均值和方差的变化来扰动随机天气发生器的参数,以生成未来逐日气候变化情景。本文作者根据短期气候预测模式的输出产品建立了一套WGEN的参数化方案及其随机试验方法,并且在时间和空间两个尺度上检验和评估了此参数化方案下WGEN的模拟能力。另外,作者由未来降水的变化,调试随机天气发生器参数,生成了气候变率变化情景。这些参数调节可以产生各种不同类型和定性大小的气候变率变化,用于气候影响评估的敏感性分析。通过如上方法,作为一个个例,文中评估了未来气候变率变化

关 键 词:随机天气发生器  气候影响  气候变率

Incorporating Stochastic Weather Generators into Studies on Climate Impacts: Methods and Uncertainties
Wu Jindong,Wang Shili.Incorporating Stochastic Weather Generators into Studies on Climate Impacts: Methods and Uncertainties[J].Advances in Atmospheric Sciences,2001,18(5):937-949.
Authors:Wu Jindong and Wang Shili
Institution:Chinese Academy of Meteorological Sciences, Beijing 100081,Chinese Academy of Meteorological Sciences, Beijing 100081
Abstract:By adopting various stochastic weather generators, different research groups in their recent studies have realized the importance of the effects of climatic variability on crop growth and development. The conventional assessments derived climate change scenarios from General Circulation Models (GCMs) ex periments, however, are incapable of helping to understand this importance. The particular interest here is to review the general methodological scheme to incorporate stochastic weather generator into climate im pact studies and the specific approaches in our studies, and put forward uncertainties that still exist. A variety of approaches have been taken to develop the parameterization program and stochastic ex periment, and adjust the parameters of a typical stochastic weather generator called WGEN. Usually, the changes in monthly means and variances of weather variables between controlled and changed climate are used to perturb the parameters to generate the intended daily climate scenarios. We establish a parameterization program and methods for stochastic experiment of WGEN in the light of outputs of short-term climate prediction models, and evaluate its simulations on both temporal and spatial scales. Also, we manipulated parameters in relation to the changes in precipitation to produce the intended types and qualitative magnitudes of climatic variability. These adjustments yield various changes in climatic vari ability for sensitivity analyses. The impacts of changes in climatic variability on maize growth, final yield, and agro-climatic resources in Northeast China are assessed and presented as the case studies through the above methods. However, this corporation is still equivocal due to deficiencies of the generator and unsophisticated manipulation of parameters. To detect and simulate the changes in climatic variability is one of the indis pensable ways to reduce the uncertainties in this aspect.
Keywords:Stochastic weather generator  Climate impacts  Climatic variability
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