Application of time series models for forecasting the global temperature anomalies

M. B. Bogdanov, S. Morozova, M. Alimpieva
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Abstract

Spectral analysis of the time series for average annual values of the globally averaged surface temperature anomaly shows the presence of harmonics of the lunar nodal cycle with a period of 18.6 years,whichcan be used to predict the values of theseries. Three models of theseries were considered: autoregression AR(p), combined model of autoregression – integrated moving average ARIMA(p,d,q) and artificial neural network. It is shown that the ARIMA(4,1,4) model gives the best results for predicting the global temperature anomaly for three years.
时间序列模型在全球温度异常预报中的应用
对全球平均地表温度距平年平均值的时间序列进行光谱分析,发现存在周期为18.6年的月交点周期谐波,可用于预测全球平均地表温度距平年平均值。考虑了自回归AR(p)、自回归-积分移动平均ARIMA(p,d,q)组合模型和人工神经网络模型。结果表明,ARIMA(4,1,4)模式对3年全球温度异常的预测效果最好。
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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