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Comparative Analysis of Rainfall Prediction Using Statistical Neural Network and Classical Linear Regression Model

机译:统计神经网络与经典线性回归模型对降雨预报的比较分析

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摘要

Different types of models have been used in modeling rainfall. Since 1990s however, interest has shifted from traditional models to ANN in rainfall modeling. Many researchers found out that the ANN performed better than such traditional models. In this study, we compared a traditional linear model and ANN in the modeling of rainfall in Ibadan, Nigeria. Ibadan is a city in West Africa, located in the tropical rainforest zone, using the data obtained from the Nigeria Meteorological (NIMET) station. Three variables were considered in this study rainfall, temperature and humidity. In selecting between the two models, we concentrated on the choice of adjusted , Akaike Information Criterion (AIC) and Schwarz Information Criterion (SIC). Though, the MSE and R2 were also used, it was concluded from results that MSE is not a good choice for model selection. This is due to the nature of the rainfall data (which has wide variations). It was found that the Statistical Neural Network (SNN), generally performed better than the traditional (OLS).
机译:在降雨模型中已使用了不同类型的模型。但是,自1990年代以来,降雨建模的兴趣已从传统模型转向人工神经网络。许多研究人员发现,人工神经网络的性能优于传统模型。在这项研究中,我们在尼日利亚伊巴丹的降雨建模中比较了传统的线性模型和人工神经网络。伊巴丹(Ibadan)是西非的一个城市,使用从尼日利亚气象(NIMET)站获得的数据,位于热带雨林地区。本研究考虑了三个变量:降雨,温度和湿度。在这两种模型之间进行选择时,我们集中于调整后的Akaike信息标准(AIC)和Schwarz信息标准(SIC)的选择。尽管也使用了MSE和R2,但从结果得出结论,MSE不是模型选择的好选择。这是由于降雨数据的性质(变化很大)所致。结果发现,统计神经网络(SNN)的性能通常优于传统的神经网络(OLS)。

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