Multi-step ahead forecasting of daily reference evapotranspiration using deep learning

•ETo is forecasted up to seven days ahead using deep learning and machine learning.•Three forecasting strategies (iterated, direct and MIMO) are assessed.•MIMO generally provided the best combination of accuracy and computational cost.•Deep learning performed only slightly better than machine learni...

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Veröffentlicht in:Computers and electronics in agriculture 2020-11, Vol.178, p.105728, Article 105728
Hauptverfasser: Ferreira, Lucas Borges, da Cunha, Fernando França
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description •ETo is forecasted up to seven days ahead using deep learning and machine learning.•Three forecasting strategies (iterated, direct and MIMO) are assessed.•MIMO generally provided the best combination of accuracy and computational cost.•Deep learning performed only slightly better than machine learning.•Deep learning and machine learning outperformed the use of monthly mean ETo. Daily reference evapotranspiration (ETo) forecasts can help farmers in irrigation planning. Therefore, this study assesses the potential of deep learning (long short-term memory (LSTM), one-dimensional convolutional neural network (1D CNN) and a combination of the two previous models (CNN-LSTM)) and traditional machine learning models (artificial neural network (ANN) and random forest (RF)), in regional and local scenarios, to forecast multi-step ahead daily ETo (seven days) using iterated, direct and multiple input multiple output (MIMO) forecasting strategies. Three input data combinations were assessed: (1) only lagged ETo; (2) lagged ETo + day of the year of each step of the time lag considered; and (3) the same of input combination 2 + lagged meteorological variables. Data from 53 weather stations located in Minas Gerais, Brazil, were used. Four stations were used as test stations. Two baselines were also employed: (B1), all the forecasting horizon is considered equal to the mean ETo measured during the last seven days; and (B2), ahead ETo values are considered equal to their respective historical monthly means. In general, MIMO was the best forecasting strategy, offering good performance and lower computational cost. The deep learning models performed slightly better than the machine learning models, and both were better than the best baseline (B2), mainly on the first and second forecasting days. Among the deep learning models, CNN-LSTM2 (i.e., CNN-LSTM with input combination 2) performed the best in local scenario (mean RMSE over the prediction horizon and stations equal to 0.87), and CNN-LSTM3 performed the best in regional scenario (mean RMSE equal to 0.88). The regional models are recommended instead of the local models since they exhibited similar performances and have higher generalization capacity. Finally, although the models developed have not exhibited high accuracies, they can be useful tools in places where historical monthly mean ETo is used to forecast ETo.
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Daily reference evapotranspiration (ETo) forecasts can help farmers in irrigation planning. Therefore, this study assesses the potential of deep learning (long short-term memory (LSTM), one-dimensional convolutional neural network (1D CNN) and a combination of the two previous models (CNN-LSTM)) and traditional machine learning models (artificial neural network (ANN) and random forest (RF)), in regional and local scenarios, to forecast multi-step ahead daily ETo (seven days) using iterated, direct and multiple input multiple output (MIMO) forecasting strategies. Three input data combinations were assessed: (1) only lagged ETo; (2) lagged ETo + day of the year of each step of the time lag considered; and (3) the same of input combination 2 + lagged meteorological variables. Data from 53 weather stations located in Minas Gerais, Brazil, were used. Four stations were used as test stations. Two baselines were also employed: (B1), all the forecasting horizon is considered equal to the mean ETo measured during the last seven days; and (B2), ahead ETo values are considered equal to their respective historical monthly means. In general, MIMO was the best forecasting strategy, offering good performance and lower computational cost. The deep learning models performed slightly better than the machine learning models, and both were better than the best baseline (B2), mainly on the first and second forecasting days. Among the deep learning models, CNN-LSTM2 (i.e., CNN-LSTM with input combination 2) performed the best in local scenario (mean RMSE over the prediction horizon and stations equal to 0.87), and CNN-LSTM3 performed the best in regional scenario (mean RMSE equal to 0.88). The regional models are recommended instead of the local models since they exhibited similar performances and have higher generalization capacity. 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Daily reference evapotranspiration (ETo) forecasts can help farmers in irrigation planning. Therefore, this study assesses the potential of deep learning (long short-term memory (LSTM), one-dimensional convolutional neural network (1D CNN) and a combination of the two previous models (CNN-LSTM)) and traditional machine learning models (artificial neural network (ANN) and random forest (RF)), in regional and local scenarios, to forecast multi-step ahead daily ETo (seven days) using iterated, direct and multiple input multiple output (MIMO) forecasting strategies. Three input data combinations were assessed: (1) only lagged ETo; (2) lagged ETo + day of the year of each step of the time lag considered; and (3) the same of input combination 2 + lagged meteorological variables. Data from 53 weather stations located in Minas Gerais, Brazil, were used. Four stations were used as test stations. Two baselines were also employed: (B1), all the forecasting horizon is considered equal to the mean ETo measured during the last seven days; and (B2), ahead ETo values are considered equal to their respective historical monthly means. In general, MIMO was the best forecasting strategy, offering good performance and lower computational cost. The deep learning models performed slightly better than the machine learning models, and both were better than the best baseline (B2), mainly on the first and second forecasting days. Among the deep learning models, CNN-LSTM2 (i.e., CNN-LSTM with input combination 2) performed the best in local scenario (mean RMSE over the prediction horizon and stations equal to 0.87), and CNN-LSTM3 performed the best in regional scenario (mean RMSE equal to 0.88). The regional models are recommended instead of the local models since they exhibited similar performances and have higher generalization capacity. 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subjects Artificial neural networks
Deep learning
Economic forecasting
Evapotranspiration
Forecasting
Horizon
Learning theory
Long short-term memory
Machine learning
Mathematical models
Neural networks
One-dimensional convolutional neural network
Time lag
Time series
Weather stations
title Multi-step ahead forecasting of daily reference evapotranspiration using deep learning
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