Improving Monthly Rainfall Forecast in a Watershed by Combining Neural Networks and Autoregressive Models

被引:0
作者
Albenis Pérez-Alarcón
Daniel Garcia-Cortes
José C. Fernández-Alvarez
Yoel Martínez-González
机构
[1] Universidad de La Habana,Departamento de Meteorología, Instituto Superior de Tecnologías y Ciencias Aplicadas
[2] Universidade de Vigo,Centro de Investigación Mariña, Environmental Physics Laboratory (EPhysLab)
[3] Universidad de La Habana,Departamento de Medio Ambiente, Instituto Superior de Tecnologías y Ciencias Aplicadas
来源
Environmental Processes | 2022年 / 9卷
关键词
rainfall forecast; artificial neural networks; ARIMA models; Almendares-Vento basin;
D O I
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中图分类号
学科分类号
摘要
The main aim of the rain forecast is to determine rain occurrence conditions in a specific location. This is considered of vital importance to assess the availability of water resources in a basin. In this study, several methods are analyzed to forecast monthly rainfall totals in hydrological basins. The study region was the Almendares-Vento basin, Cuba. Based on Multi–Layer Perceptron (MLP), Convolutional Neural Network (CNN) and Long Short–Term Memory (LSTM) neural networks, and Autoregressive Integrated Moving Average (ARIMA) models, we developed a hybrid model (ANN + ARIMA) for rainfall prediction. The input data were the one year lagged rainfall records in gauge stations within the basin, sunspots, the sea surface temperature and time series of nine climate indices up to 2014. The predictions were also compared with the rainfall records of a gauge station network from 2015 to 2019 provided by the Cuban National Institute of Hydraulic Resources. Based on several statistical metrics such as mean absolute error, Pearson correlation, BIAS, Nash–Sutcliffe efficiency and Kling–Gupta efficiency, the CNN model showed higher ability to forecast monthly rainfall. Nevertheless, the hybrid model was notably better than individual models. Overall, our findings have proved the reliability of using the hybrid model to predict rainfall time series for water management and can be extensively applied to this sort of application. In addition, this work proposes a new approach to enhance the planning and management of water availability in watershed for agriculture, industry and population through improving rainfall forecasting.
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[11]  
Quevedo-Nolasco A(2012)Multistep-ahead river flow prediction using LS-SVR at daily scale J Water Resour Prot 4 528-250
[12]  
Castro-Popoca M(2020)Machine learning-based error modeling to improve GPM IMERG precipitation product over the Brahmaputra River Basin Forecasting 2 248-2080
[13]  
Arteaga-Ramírez R(2019)New insights into soil temperature time series modeling: linear or nonlinear? Theore Appl Clim 135 1157-1761
[14]  
Vázquez-Peña MA(2018)Research on real-time local rainfall prediction based on MEMS sensors J Sens 2018 6184713-437
[15]  
Zamora-Morales BP(2016)Deep feature extraction and classification of hyperspectral images based on convolutional neural networks IEEE Trans Geosci Remote Sens 54 6232-749
[16]  
Ali M(2020)Performance enhancement model for rainfall forecasting utilizing integrated wavelet-convolutional neural network Water Resour Res 34 2371-1131
[17]  
Prasad R(2019)Earth fissure hazard prediction using machine learning models Environ Res 179 108770-350
[18]  
Xiang Y(2020)Modeling level 2 passive microwave precipitation retrieval error over complex terrain using a nonparametric statistical technique IEEE Trans Geosci Remote Sens 59 9021-224
[19]  
Yaseen ZM(2018)Using historical precipitation patterns to forecast daily extremes of rainfall for the coming decades in Naples (Italy) Geosciences 8 293-91
[20]  
Anochi JA(2020)Integrated machine learning methods with resampling algorithms for flood susceptibility prediction Sci Total Environ 705 135983-69063