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首页> 外文期刊>Journal of Hydrology >Comparison of random forests and support vector machine for real-time radar-derived rainfall forecasting
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Comparison of random forests and support vector machine for real-time radar-derived rainfall forecasting

机译:随机林和支持向量机的实时雷达衍生降雨预测的比较

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Highlights ? Real-time radar rainfall forecasting models based on RF and SVM are proposed. ? Radar rainfalls for 1- to 3-h ahead are forecasted by the proposed models. ? Single-mode and multiple-mode models based on RF and SVM are compared. ? Single-mode model gives better forecasts than multiple-mode model. ? SVM-based single-mode model performs better than RF-based single-mode model. Abstract This study aims to compare two machine learning techniques, random forests (RF) and support vector machine (SVM), for real-time radar-derived rainfall forecasting. The real-time radar-derived rainfall forecasting models use the present grid-based radar-derived rainfall as the output variable and use antecedent grid-based radar-derived rainfall, grid position (longitude and latitude) and elevation as the input variables to forecast 1- to 3-h ahead rainfalls for all grids in a catchment. Grid-based radar-derived rainfalls of six typhoon events during 2012–2015 in three reservoir catchments of Taiwan are collected for model training and verifying. Two kinds of forecasting models are constructed and compared, which are single-mode forecasting model (SMFM) and multiple-mode forecasting model (MMFM) based on RF and SVM. The SMFM uses the same model for 1- to 3-h ahead rainfall forecasting; the MMFM uses three different models for 1- to 3-h ahead forecasting. According to forecasting performances, it reveals that the SMFMs give better performances than MMFMs and both SVM-based and RF-based SMFMs show satisfactory performances for 1-h ahead forecasting. However, for 2- and 3-h ahead forecasting, it is found that the RF-based SMFM underestimates the observed radar-derived rainfalls in most cases and the SVM-based SMFM can give better performances than RF-based SMFM. ]]>
机译:<![cdata [ 亮点 提出了基于RF和SVM的实时雷达降雨预测模型。 < / ce:list-item> 雷达降雨量为1 - 建议的模型预测了3-H. 基于RF和SVM的单模和多模式模型。 单模模型提供更好的预测比多模式模型。 基于SVM的单模模型比基于RF的单模模型更好地执行。 抽象< / ce:section-title> 本研究旨在比较两种机器学习技术,随机森林(RF)和支持向量机(SVM),用于实时雷达导出的降雨预测。实时雷达导出的降雨预测模型使用当前基于网格的雷达导出的降雨作为输出变量,并使用前一种基于网格的雷达导出的降雨,网格位置(经度和纬度)和提升作为预测的输入变量在集水区内所有网格的降雨量1至3小时。 2012 - 2015年六场台风活动的基于网格雷达导出的降雨在台湾的三个水库集水区中,用于模型培训和验证。构建和比较两种预测模型,基于RF和SVM是单模预测模型(SMFM)和多模式预测模型(MMFM)。 SMFM使用相同的型号为1至3-H未来降雨预测; MMFM使用三种不同的型号1至3-H预测。根据预测性能,它揭示了SMFMS比MMFMS更好的表现,并且基于SVM和基于RF的SMFMS显示出令人满意的表演,以便提前预测。然而,对于2-和3-H未来预测,发现基于RF的SMFM在大多数情况下低估了观察到的雷达衍生的降雨,并且基于SVM的SMFM可以提供比基于RF的SMFM更好的表现。 ]]>

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