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首页> 外文期刊>Advances in Meteorology >Downscaling and Projection of Multi-CMIP5 Precipitation Using Machine Learning Methods in the Upper Han River Basin
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Downscaling and Projection of Multi-CMIP5 Precipitation Using Machine Learning Methods in the Upper Han River Basin

机译:汉江流域机学习方法使用机器学习方法的多CMIP5降水的缩小和投影

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Downscaling considerably alleviates the drawbacks of regional climate simulation by general circulation models (GCMs). However, little information is available regarding the downscaling using machine learning methods, specifically at hydrological basin scale. This study developed multiple machine learning (ML) downscaling models, based on a Bayesian model average (BMA), to downscale the precipitation simulation of 8 Coupled Model Intercomparison Project Phase 5 (CMIP5) models using model output statistics (MOS) for the years 1961–2005 in the upper Han River basin. A series of statistical metrics, including Pearson’s correlation coefficient (PCC), root mean squared error (RMSE), and relative bias (Rbias), were used for evaluation and comparative analyses. Moreover, the BMA and the best ML downscaling model were used to downscale precipitation in the 21st century under Representative Concentration Pathway 4.5 (RCP4.5) and RCP8.5 scenarios. The results show the following: (1) The performance of the BMA ensemble simulation is clearly better than that of the individual models and the simple mean model ensemble (MME). The PCC reaches 0.74, and the RMSE is reduced by 28%–60% for all the GCMs and 33% compared to the MME. (2) The downscaled models greatly improved station simulation performance. Support vector machine for regression (SVR) was superior to multilayer perceptron (MLP) and random forest (RF). The downscaling results based on the BMA ensemble simulation and SVR models were regarded as the best performing overall (PCC, RMSE, and Rbias were 0.82, 35.07,?mm and ?5.45%, respectively). (3) Based on BMA and SVR models, the projected precipitations show a weak increasing trend on the whole under RCP4.5 and RCP8.5. Specifically, the average rainfall during the mid- (2040–2069) and late (2070–2099) 21st century increased by 3.23% and 1.02%, respectively, compared to the base year (1971–2000) under RCP4.5, while they increased by 4.25% and 8.30% under RCP8.5. Additionally, the magnitude of changes during winter and spring was higher than that during summer and autumn. Furthermore, future work is recommended to study the improvement of downscaling models and the effect of local climate.
机译:令人倾向的是,通过一般循环模型(GCMS),减轻了区域气候模拟的缺点。但是,使用机器学习方法的次要信息,特别是在水文盆地规模的较少信息。本研究开发了多台机器学习(ML)缩小模型,基于贝叶斯型号平均(BMA),使8耦合模型的降水模拟的降水仿真使用模型输出统计(MOS)1961年使用模型输出统计(MOS) -2005在上汉河流域。一系列统计指标,包括Pearson的相关系数(PCC),根均方误差(RMSE)和相对偏压(RBIAS)用于评估和比较分析。此外,BMA和最佳的ML俯卧位模型用于21世纪下的代表浓度途径4.5(RCP4.5)和RCP8.5场景下的21世纪下降沉淀。结果显示如下:(1)BMA集合模拟的性能明显优于各个模型和简单均值集合(MME)的性能。 PCC达到0.74,所有GCMS的RMSE减少了28%-60%,与MME相比,33%。 (2)缩小模型大大提高了站模拟性能。回归的支持向量机(SVR)优于多层的感知(MLP)和随机林(RF)。基于BMA集合仿真和SVR模型的缩小结果被认为是总体上表现最佳(PCC,RMSE和RBIAS为0.82,35.07,?mm和?5.45%)。 (3)基于BMA和SVR模型,在RCP4.5和RCP8.5下,预计的沉淀显示整体趋势较弱。具体而言,与RCP4.5下的基准年(1971-2000)相比,21世纪(2070-2069)和(2070-2069)和第21世纪晚期的平均降雨量分别增加了3.23%和1.02% RCP8.5下增加了4.25%和8.30%。此外,冬季和春季期间的变化的大小高于夏季和秋季。此外,建议未来的工作来研究缩小模型的改进和当地气候的影响。

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