MODELLING INDIAN OCEAN AIR TEMPERATURE USING ADDITIVE MODEL

Miftahuddin, Ananda Pratama Sitanggang, N. Mohamed, Maharani A. Bakar
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Abstract

In this study, we used the fluctuating air temperature dataset. The change is caused by data fluctuations, trend, seasonality, cyclicity and irregularities. The generalized additive model (GAM) data approach is used to describe these phenomena. The aim of this research is to find out the factors that affect the air temperature in the Indian Ocean, find a suitable model, and obtain the best model from three approximate methods, namely the Linear Model (LM), the Generalized Linear Model (GLM), and the GAM models, which use a dataset of factors that affect the temperature of the Indian Ocean (close to Aceh region). For the air temperature of α = 0.05, the significant effects are precipitation, relative humidity, sea surface temperature, and the wind speed. The LM, GLM and GAM models are quite feasible because they all meet and pass the classical hypothesis tests, namely the normality test, multicollinearity test, the heteroscedasticity test, and the autocorrelation test. The appropriate model is GAM model based on adaptive smoothers. Compared to the LM, GLM and GAM models, GAM model with the adaptive smoothers base gave smallest AIC values of 4552.890 and 2392.396 where modeling was without and with time variable respectively. Therefore, it can be said that the correct model used at air temperature is the GAM model for adaptive smoothers base.
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用加性模式模拟印度洋气温
在本研究中,我们使用了波动气温数据集。这种变化是由数据波动、趋势、季节性、周期性和不规则性造成的。采用广义加性模型(GAM)数据方法来描述这些现象。本研究的目的是找出影响印度洋气温的因素,寻找合适的模型,并利用影响印度洋(靠近亚齐地区)温度的因素数据集,从线性模型(LM)、广义线性模型(GLM)和GAM模型三种近似方法中获得最佳模型。当气温为α = 0.05时,降水、相对湿度、海表温度和风速的影响最为显著。LM、GLM和GAM模型都满足并通过了经典的假设检验,即正态性检验、多重共线性检验、异方差检验和自相关检验,因此具有较强的可行性。合适的模型是基于自适应平滑的GAM模型。与LM、GLM和GAM模型相比,采用自适应平滑基的GAM模型在无时间变量建模和有时间变量建模时的AIC值最小,分别为4552.890和2392.396。因此,可以说在气温下使用的正确模型是自适应平滑基的GAM模型。
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20
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