Rainfall And Meteorological Drought Forecasting in Albay, Philippines Using Artificial Neural Network

Sophia Chloe Caress, Angela Abigail Belen, Ivan John Esguerra, Harian Dea Wacan, Florante D. Poso, Melvin B. Solomon
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引用次数: 4

Abstract

Agriculture relies heavily on weather forecasts, and a reliable weather forecasting system can help mitigate the calamities which can affect this industry. Rainfall and meteorological drought duration forecasting are some of the most important yet challenging tasks. This paper presents the creation of feedforward backpropagation artificial neural networks for daily rainfall forecasting and monthly meteorological drought forecasting. Artificial Neural Networks can capture the variability of these phenomena. Rainfall data from nine stations all over Albay, the Philippines, spanning from 1967 to 2000, were used to create the models. The input parameters used for developing the models for daily rainfall forecasting were 14-day antecedent rainfall, current-day rainfall, relative humidity, mean temperature, and sunshine duration. The monthly meteorological drought forecasting parameters were 1-month SPI, current-month rainfall, relative humidity, mean temperature, and sunshine duration. Having the results presented in this paper, the performance of the ANN Models of the stations were compared based on R and RMSE. The rainfall forecasting models and meteorological drought forecasting models have provided satisfactory performance. A satisfactory performance for forecasting has an R-value ranging from 0.2 to 0.5. Sensitivity analysis indicated that the most significant parameter for rainfall forecast is the relative humidity and mean temperature for drought forecast.
基于人工神经网络的菲律宾阿尔拜省降水与气象干旱预报
农业在很大程度上依赖天气预报,一个可靠的天气预报系统可以帮助减轻可能影响该行业的灾害。降雨和气象干旱持续时间预测是一些最重要但也最具挑战性的任务。本文提出了前馈反向传播人工神经网络的建立,用于日降水预报和月气象干旱预报。人工神经网络可以捕捉到这些现象的可变性。从1967年到2000年,来自菲律宾阿尔拜省9个站点的降雨数据被用来创建这些模型。日雨量预报模式的输入参数为14天前雨量、当日雨量、相对湿度、平均气温和日照时数。月气象干旱预报参数为1月SPI、当月降雨量、相对湿度、平均温度和日照时数。在此基础上,基于R和RMSE对各台站人工神经网络模型的性能进行了比较。降雨预报模型和气象干旱预报模型均取得了满意的效果。一个令人满意的预测性能的r值在0.2到0.5之间。敏感性分析表明,相对湿度和平均温度对降水预报最重要。
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