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Objective approach for rainstorm based on dual-factor feature extraction and generalized regression neural network

机译:基于双因子特征提取和广义回归神经网络的暴雨客观方法

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摘要

Rainstorm often causes inland flooding and mudslides that threaten lives and properties. In this study, rainstorm is used as a forecasting object, and an interpretation prediction model for rainstorm based on the European Center for medium-range weather forecasting (ECMWF) numerical prediction model is constructed through the generalized regression neural network method. Model inputs are forecasted through principal component analysis, and dual-factor feature extraction is performed on the primary predictors to obtain new irrelevant variables and optimize network structures. The experimental forecast results of the 24 h aging test using an independent sample of large-scale rainstorm in Guangxi, China from 2012 to 2016, the actual forecast results of selected rainstorm cases with great influence on Guangxi, and different influencing systems show that the new prediction scheme is sophisticated. Thus, the scheme has a certain universal applicability. The results of the comparative analysis between the new program and ECMWF show that the forecasting ability of the new method is more accurate than that of the direct numerical forecasting model. The threat score of the new forecast model for 5 years has a 58.4% increase relative to that of the ECMWF. The forecasting skills are positive and good and can thus improve the rainstorm forecasting ability of ECMWF and provide a better guidance for forecasters.
机译:暴雨往往会导致内陆洪水和泥土威胁,威胁生活和性质。在本研究中,暴雨被用作预测对象,通过广义回归神经网络方法构建基于欧洲的中距离预测(ECMWF)数值预测模型的暴雨的解释预测模型。通过主成分分析预测模型输入,对主要预测器进行双因子特征提取,以获得新的无关变量并优化网络结构。 2012年至2016年广西广西大型大规模暴雨的独立样本的24小时老化试验结果实际预测结果对广西的影响巨大影响,不同的影响系统显示新的预测方案复杂。因此,该方案具有一定的普遍适用性。新计划与ECMWF之间的比较分析结果表明,新方法的预测能力比直接数值预测模型更准确。新预测模型的威胁分数5年的威胁分数相对于ECMWF的增加58.4%。预测技能是积极又良好的,因此可以改善ECMWF的暴雨预测能力,为预测者提供更好的指导。

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