首页> 外文期刊>Journal of Hydrology >Long-term SPI drought forecasting in the Awash River Basin in Ethiopia using wavelet neural network and wavelet support vector regression models
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Long-term SPI drought forecasting in the Awash River Basin in Ethiopia using wavelet neural network and wavelet support vector regression models

机译:基于小波神经网络和小波支持向量回归模型的埃塞俄比亚阿瓦什河流域SPI长期干旱预测

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摘要

Long-termdrought forecasts can provide valuable information to help mitigate some of the consequences of drought. Data driven models are suitable forecast tools due to their minimal information requirements and rapid development times. This study compares the effectiveness of five data driven models for forecasting long-term (6 and 12 months lead time) drought conditions in the Awash River Basin of Ethiopia. The Standard Precipitation Index (SPI 12 and SPI 24) was forecasted using a traditional stochastic model (ARIMA) and compared to machine learning techniques such as artificial neural networks (ANNs), and support vector regression (SVR). In addition to these three model types, wavelet transforms were used to pre-process the inputs for ANN and SVR models to form WA-ANN and WA-SVR models; this is the first time that WA-SVR models have been explored and tested for long-term SPI forecasting. The performances of all models were compared using RMSE, MAE, R2 and a measure of persistence. The forecast results indicate that the coupled wavelet neural network (WA-ANN) models were better than all the other models in this study for forecasting SPI 12 and SPI 24 values over lead times of 6 and 12 months in the Awash River Basin.
机译:长期干旱预报可以提供有价值的信息,以帮助减轻干旱的某些后果。数据驱动的模型因其对信息的需求最少且开发时间短而成为合适的预测工具。这项研究比较了五个数据驱动模型对预测埃塞俄比亚阿瓦什河流域的长期(提前6到12个月)干旱状况的有效性。使用传统的随机模型(ARIMA)预测标准降水指数(SPI 12和SPI 24),并将其与诸如人工神经网络(ANN)和支持向量回归(SVR)的机器学习技术进行比较。除了这三种模型类型外,还使用小波变换对ANN和SVR模型的输入进行预处理,以形成WA-ANN和WA-SVR模型。这是首次针对长期SPI预测探索和测试WA-SVR模型。使用RMSE,MAE,R2和持久性度量来比较所有模型的性能。预测结果表明,耦合小波神经网络(WA-ANN)模型比本研究中的所有其他模型都好,可以预测阿瓦什河流域在6个月和12个月交货期内的SPI 12和SPI 24值。

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