FORECASTING DROUGHT WITH ARIMA MODEL AND STANDARDIZED PRECIPITATION INDEX (SPI)

Alfa Mohammed Salisu
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Abstract

Drought forecasting is an important forecasting procedure for preparing and managing water resources for all creatures. Natural disasters across the regions such as flooding, earthquakes, droughts etc. have caused damages to life as a result of which numerous researches have been conducted to assist in reducing the phenomenon. Consequently, therefore, this study considered using Auto-Regressive Integrated Moving Average (ARIMA) model in forecasting drought using Standardized Precipitation Index (SPI) as a forecasting tool which was used to measure and classify drought. The models are developed to forecast the SPI series. Results indicated the forecasting ability of the ARIMA models which increases as the timescales. The study is aimed at using ARIMA method for modeling SPI data series. The studies used data set made up of 624 months, obtained from 1954 to 2008. In the analysis only SPI3 series was non-seasonal while others have seasonality and Seasonal ARIMA was carried out, SPI12 was significant compared with the forecasting accuracy alongside the diagnostic checking having a minimum error of RMSE and MAE in both testing and training phases. The research contributes to the discovering of feasible forecasting of drought and demonstrates that the established model is good and appropriate for forecasting drought.
基于arima模型和标准化降水指数(spi)的干旱预测
干旱预报是为所有生物准备和管理水资源的重要预报程序。洪水、地震、干旱等地区的自然灾害对生命造成了损害,因此进行了许多研究以帮助减少这种现象。因此,本研究考虑采用自回归综合移动平均(ARIMA)模型,以标准化降水指数(SPI)作为干旱测量和分类的预测工具进行干旱预测。建立了预测SPI序列的模型。结果表明,ARIMA模型的预测能力随时间尺度的增加而增强。本研究旨在利用ARIMA方法对SPI数据序列进行建模。这些研究使用了从1954年到2008年的624个月的数据集。在分析中,只有SPI3系列是非季节性的,而其他系列具有季节性,并且进行了季节性ARIMA, SPI12与预测准确性相比具有显著性,同时在测试和训练阶段诊断检查的RMSE和MAE误差最小。该研究有助于发现可行的干旱预测方法,并证明所建立的模型对预测干旱具有良好的适用性。
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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