Rainfall Variability under Present and Future Climate Scenarios Using the Rossby Center Bias-Corrected Regional Climate Model

Jane W. Mugo, F. Opijah, J. Ngaina, F. Karanja, M. Mburu
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引用次数: 3

Abstract

This study sought to determine the spatial and temporal variability of rainfall under past and future climate scenarios. The data used comprised station-based monthly gridded rainfall data sourced from the Climate Research Unit (CRU) and monthly model outputs from the Fourth Edition of the Rossby Centre (RCA4) Regional Climate Model (RCM), which has scaled-down nine GCMs for Africa. Although the 9 Global Climate Models (GCMs) downscaled by the RCA4 model was not very good at simulating rainfall in Kenya, the ensemble of the 9 models performed better and could be used for further studies. The ensemble of the models was thus bias-corrected using the scaling method to reduce the error; lower values of bias and Normalized Root Mean Square Error (NRMSE) were recorded when compared to the uncorrected models. The bias-corrected ensemble was used to study the spatial and temporal behaviour of rainfall under baseline (1971 to 2000) and future RCP 4.5 and 8.5 scenarios (2021 to 2050). An insignificant trend was noted under the baseline condition during the March-May (MAM) and October-December (OND) rainfall seasons. A positive significant trend at 5% level was noted under RCP 4.5 and 8.5 scenarios in some stations during both MAM and OND seasons. The increase in rainfall was attributed to global warming due to increased anthropogenic emissions of greenhouse gases. Results on the spatial variability of rainfall indicate the spatial extent of rainfall will increase under both RCP 4.5 and RCP 8.5 scenario when compared to the baseline; the increase is higher under the RCP 8.5 scenario. Overall rainfall was found to be highly variable in space and time, there is a need to invest in the early dissemination of weather forecasts to help farmers adequately prepare in case of unfavorable weather. Concerning the expected increase in rainfall in the future, policymakers need to consider the results of this study while preparing mitigation strategies against the effects of changing rainfall patterns.
基于rosby中心偏差校正区域气候模式的当前和未来气候情景下的降雨变率
本研究旨在确定过去和未来气候情景下降雨的时空变异。所使用的数据包括来自气候研究中心(CRU)的基于站点的月度网格化降雨数据,以及罗斯比中心(RCA4)区域气候模型(RCM)第四版的月度模型输出,该模型已将非洲的9个gcm按比例缩小。虽然RCA4模式缩小后的9个全球气候模式(GCMs)对肯尼亚降雨的模拟效果不太好,但9个模式的集合表现较好,可以用于进一步的研究。因此,使用标度法对模型的集合进行了偏差校正,以减小误差;与未校正的模型相比,偏差和标准化均方根误差(NRMSE)值更低。利用偏差校正后的集合研究了基线(1971 - 2000年)和未来RCP 4.5和8.5情景(2021 - 2050年)下降雨的时空行为。在基线条件下,3 - 5月(MAM)和10 - 12月(OND)降水季节的趋势不显著。在RCP 4.5和8.5情景下,部分站点在MAM和OND季节均呈现5%水平的显著正趋势。降雨量的增加归因于人为温室气体排放增加造成的全球变暖。降水空间变异性结果表明,在RCP 4.5和RCP 8.5情景下,降水空间范围均比基线增大;在RCP 8.5情景下,增幅更高。总体降雨量在空间和时间上变化很大,因此有必要投资于天气预报的早期传播,以帮助农民在不利天气的情况下做好充分准备。关于未来预期的降雨量增加,决策者在制定针对降雨模式变化影响的缓解战略时,需要考虑这项研究的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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