Comparison of Time Series Forecast Models for Rainfall and Drought Prediction

Narmada Ponnamperuma, Lalith Rajapakse
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引用次数: 4

Abstract

Forecasting of rainfall is important to be prepared for future weather-related disasters. Rainfall data can be categorized as time series data because rainfall data can be recorded in chronological order. Time series forecast is used in fields like economics, environmental, and engineering predictions as a decision support factor. Due to the importance, many models and methodologies have been developed for time series forecasts according to the types of inputs, expected outcomes, and easy applicability. This research was conducted to identify the most appropriate time series forecast model for rainfall prediction. A regression type model and a neural network model were selected to identify which type of forecast model is more suitable for rainfall prediction. ARIMA model and Recurrent Neural Network model of Non-linear Auto-Regressive Moving Average were selected as the candidate prediction models for time series forecast and the models were developed for rainfall forecast. From the developed models, it was observed that the RNN models are suitable for long-term prediction of rainfall and drought with the availability of a higher number of past rainfall data while the ARIMA model is more suitable for prediction of rainfall where there is less past recorded rainfall data for a short-term forecast period.
降雨与干旱时间序列预报模型的比较
降雨预报对于为未来与天气有关的灾害做好准备非常重要。降雨数据可以归类为时间序列数据,因为降雨数据可以按时间顺序记录。时间序列预测用于经济、环境和工程预测等领域,作为决策支持因素。由于其重要性,根据输入类型、预期结果和适用性,已经开发了许多用于时间序列预测的模型和方法。本研究旨在确定最适合降雨预测的时间序列预测模型。选择回归型模型和神经网络模型来确定哪种预测模型更适合于降雨预测。选择ARIMA模型和非线性自回归移动平均递归神经网络模型作为时间序列预报的候选预测模型,并建立了降雨预报模型。结果表明,RNN模型适合于具有较多历史降水资料的长期降水和干旱预报,而ARIMA模型更适合于具有较少历史降水资料的短期预报。
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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