{"title":"Estimating and forecasting daily reference crop evapotranspiration in China with temperature-driven deep learning models","authors":"Jia Zhang, Yimin Ding, Lei Zhu, Yukuai Wan, Mingtang Chai, Pengpeng Ding","doi":"10.1016/j.agwat.2024.109268","DOIUrl":null,"url":null,"abstract":"Accurately estimating and forecasting short-term daily reference crop evapotranspiration (ET<ce:inf loc=\"post\">o</ce:inf>) is crucial for real-time irrigation decision-making and regional agricultural water management. Although the Penman-Monteith formula shows high accuracy, the requirement for excessive meteorological factors by this formula restricts its practical application. Previous studies have developed many ET<ce:inf loc=\"post\">o</ce:inf> estimation models using deep learning (DL) algorithm, which only require temperature data as input. Subsequently, temperature forecast data is used to drive these models for ET<ce:inf loc=\"post\">o</ce:inf> forecasting. However, these models are often limited to the specific locations of their training sets due to significant climatic variations across regions. Besides, weather forecasts at different lead days typically exhibit different biases. It remains unclear whether train ET<ce:inf loc=\"post\">o</ce:inf> forecasting models for different lead times will enhance the overall forecasting accuracy. Hence, in this study, we innovatively utilized an extensive array of weather forecast data to develop customized ET<ce:inf loc=\"post\">o</ce:inf> forecasting models for each day of the next 15 days, while incorporating both location and seasonal features into the model training procedure. Five deep learning (DL) models were employed in this study, namely Long Short-Term Memory (LSTM), Bidirectional LSTM (Bi-LSTM), Gated Recurrent Unit (GRU), Convolutional Neural Networks Bi-LSTM (CNN-BiLSTM), and CNN-BiLSTM-Attention. The results revealed that the differences in the performance of estimating ET<ce:inf loc=\"post\">o</ce:inf> among the DL models were less pronounced compared to the variations that existed between diverse training strategies. By integrating location and seasonality information into the training set, we found a notable improvement in the accuracy of ET<ce:inf loc=\"post\">o</ce:inf> estimating, with the average Root Mean Square Error (RMSE) of the five DL models decreasing from 0.55 mm d<ce:sup loc=\"post\">−1</ce:sup> to 0.48 mm d<ce:sup loc=\"post\">−1</ce:sup>. Furthermore, when we directly employed a larger volume of weather forecast data to train the models, the forecasting accuracy of ET<ce:inf loc=\"post\">o</ce:inf> was significantly improved, and among the five DL models, GRU performs the best. Specifically, the RMSE values for the ET<ce:inf loc=\"post\">o</ce:inf> forecasts made by GRU model for the 1st, 4th, 7th, and 15th days in the future have decreased from 0.70, 0.87, 1.00 and 1.33 mm d<ce:sup loc=\"post\">−1</ce:sup> to 0.51, 0.56, 0.61 and 0.67 mm d<ce:sup loc=\"post\">−1</ce:sup>, respectively. Additionally, compared to previous studies, we have successfully extended the lead time of ET<ce:inf loc=\"post\">o</ce:inf> forecasts from 7 days to 15 days. These results indicate that the ET<ce:inf loc=\"post\">o</ce:inf> estimating and forecasting models developed in this study demonstrate strong applicability across the entire country, which can provide effective support for irrigation water resource management.","PeriodicalId":7634,"journal":{"name":"Agricultural Water Management","volume":"33 1","pages":""},"PeriodicalIF":5.9000,"publicationDate":"2024-12-24","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Agricultural Water Management","FirstCategoryId":"97","ListUrlMain":"https://doi.org/10.1016/j.agwat.2024.109268","RegionNum":1,"RegionCategory":"农林科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"AGRONOMY","Score":null,"Total":0}
引用次数: 0
Abstract
Accurately estimating and forecasting short-term daily reference crop evapotranspiration (ETo) is crucial for real-time irrigation decision-making and regional agricultural water management. Although the Penman-Monteith formula shows high accuracy, the requirement for excessive meteorological factors by this formula restricts its practical application. Previous studies have developed many ETo estimation models using deep learning (DL) algorithm, which only require temperature data as input. Subsequently, temperature forecast data is used to drive these models for ETo forecasting. However, these models are often limited to the specific locations of their training sets due to significant climatic variations across regions. Besides, weather forecasts at different lead days typically exhibit different biases. It remains unclear whether train ETo forecasting models for different lead times will enhance the overall forecasting accuracy. Hence, in this study, we innovatively utilized an extensive array of weather forecast data to develop customized ETo forecasting models for each day of the next 15 days, while incorporating both location and seasonal features into the model training procedure. Five deep learning (DL) models were employed in this study, namely Long Short-Term Memory (LSTM), Bidirectional LSTM (Bi-LSTM), Gated Recurrent Unit (GRU), Convolutional Neural Networks Bi-LSTM (CNN-BiLSTM), and CNN-BiLSTM-Attention. The results revealed that the differences in the performance of estimating ETo among the DL models were less pronounced compared to the variations that existed between diverse training strategies. By integrating location and seasonality information into the training set, we found a notable improvement in the accuracy of ETo estimating, with the average Root Mean Square Error (RMSE) of the five DL models decreasing from 0.55 mm d−1 to 0.48 mm d−1. Furthermore, when we directly employed a larger volume of weather forecast data to train the models, the forecasting accuracy of ETo was significantly improved, and among the five DL models, GRU performs the best. Specifically, the RMSE values for the ETo forecasts made by GRU model for the 1st, 4th, 7th, and 15th days in the future have decreased from 0.70, 0.87, 1.00 and 1.33 mm d−1 to 0.51, 0.56, 0.61 and 0.67 mm d−1, respectively. Additionally, compared to previous studies, we have successfully extended the lead time of ETo forecasts from 7 days to 15 days. These results indicate that the ETo estimating and forecasting models developed in this study demonstrate strong applicability across the entire country, which can provide effective support for irrigation water resource management.
期刊介绍:
Agricultural Water Management publishes papers of international significance relating to the science, economics, and policy of agricultural water management. In all cases, manuscripts must address implications and provide insight regarding agricultural water management.