Logistic Model as a Statistical Downscaling Approach for Forecasting a Wet or Dry Day in the Bagmati River Basin

R. Shrestha, S. Shrestha, A. B. Sthapit
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引用次数: 2

Abstract

A binary logistic model is developed for probabilistic prediction of a wet or dry day based upon daily rainfall data from 1981 to 2008 taken from 25 stations of Bagmati River basin. The predictor variables included in the model are daily relative humidity, air surface temperature, sea level pressure, v-wind which are expressed as principal components of 9 grids of the National Centers for Environmental Protection (NCEP)/National Center for Atmospheric Research (NCAR) Reanalysis data with resolution of 2.5 0 ×2.5 0 . Principal component analysis is used to reduce the dimension of the predictors in the presence of spatial correlations between grids and thus reduce their multicollinearity effect. The result depicts that the model has 86.4 percent predictive capability in the analysis period (1981-2000) and 86.1 in the validation period (2001-2008) along with support of receiver operating characteristic (ROC) analysis. The results demonstrate that the first two principal components of relative humidity are the key predictor variables with respective odds ratios (ORs) of 4.18 and 3.61, respectively. The other statistically significant predictors are the second principal component of v-wind with OR 1.43, the second and first principal components of air surface temperature with ORs 1.38 and 0.76, respectively and the first principal component of sea level pressure with OR 0.44. Goodness-of-fit test, ROC analysis and other main diagnostic tests showed that the fitted logistic model is characterized by good fits for analysis as well as validation period.
Logistic模型作为预测巴格玛提河流域干湿日的统计降尺度方法
基于1981 - 2008年巴格马提河流域25个站点的日降雨量数据,建立了一个二元logistic模型,对干湿日进行概率预测。模型的预测变量包括日相对湿度、大气表面温度、海平面压力和v型风,这些变量表示为国家环境保护中心(NCEP)/国家大气研究中心(NCAR)再分析数据的9个网格的主成分,分辨率为2.5 0 ×2.5 0。主成分分析用于在网格之间存在空间相关性的情况下降低预测因子的维数,从而降低它们的多重共线性效应。结果表明,该模型在分析期(1981-2000年)的预测能力为86.4%,在验证期(2001-2008年)的预测能力为86.1,并支持受试者工作特征(ROC)分析。结果表明,相对湿度的前两个主成分是关键的预测变量,比值比分别为4.18和3.61。v风第二主成分的OR值为1.43,地表温度第二主成分的OR值为1.38,地表温度第一主成分的OR值为0.76,海平面压力第一主成分的OR值为0.44。拟合优度检验、ROC分析等主要诊断检验表明,拟合的logistic模型具有较好的分析拟合性和验证期。
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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