Ge Jiankun, Zhao Linfeng, Yu Zihui, Liu Huanhuan, Zhang Lei, Gong Xuewen, Sun Huaiwei
School of Water Conservancy, North China University of Water Resources and Electric Power, Zhengzhou 450000, China.
School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology, Wuhan 430030, China.
Plants (Basel). 2022 Jul 25;11(15):1923. doi: 10.3390/plants11151923.
Crop evapotranspiration estimation is a key parameter for achieving functional irrigation systems. However, ET is difficult to directly measure, so an ideal solution was to develop a simulation model to obtain ET. There are many ways to calculate ET, most of which use models based on the Penman−Monteith equation, but they are often inaccurate when applied to greenhouse crop evapotranspiration. The use of machine learning models to predict ET has gradually increased, but research into their application for greenhouse crops is relatively rare. We used experimental data for three years (2019−2021) to model the effects on ET of eight meteorological factors (net solar radiation (Rn), mean temperature (Ta), minimum temperature (Tamin), maximum temperature (Tamax), relative humidity (RH), minimum relative humidity (RHmin), maximum relative humidity (RHmax), and wind speed (V)) using a greenhouse drip irrigated tomato crop ET prediction model (XGBR-ET) that was based on XGBoost regression (XGBR). The model was compared with seven other common regression models (linear regression (LR), support vector regression (SVR), K neighbors regression (KNR), random forest regression (RFR), AdaBoost regression (ABR), bagging regression (BR), and gradient boosting regression (GBR)). The results showed that Rn, Ta, and Tamax were positively correlated with ET, and that Tamin, RH, RHmin, RHmax, and V were negatively correlated with ET. Rn had the greatest correlation with ET (r = 0.89), and V had the least correlation with ET (r = 0.43). The eight models were ordered, in terms of prediction accuracy, XGBR-ET > GBR-ET > SVR-ET > ABR-ET > BR-ET > LR-ET > KNR-ET > RFR-ET. The statistical indicators mean square error (0.032), root mean square error (0.163), mean absolute error (0.132), mean absolute percentage error (4.47%), and coefficient of determination (0.981) of XGBR-ET showed that XGBR-ET modeled daily ET for greenhouse tomatoes well. The parameters of the XGBR-ET model were ablated to show that the order of importance of meteorological factors on XGBR-ET was Rn > RH > RHmin> Tamax> RHmax> Tamin> Ta> V. Selecting Rn, RH, RHmin, Tamax, and Tamin as model input variables using XGBR ensured the prediction accuracy of the model (mean square error 0.047). This study has value as a reference for the simplification of the calculation of evapotranspiration for drip irrigated greenhouse tomato crops using a novel application of machine learning as a basis for an effective irrigation program.
作物蒸散量估算对于实现功能完善的灌溉系统而言是一个关键参数。然而,蒸散量难以直接测量,因此,一个理想的解决方案是开发一个模拟模型来获取蒸散量。计算蒸散量的方法有很多,其中大部分使用基于彭曼-蒙蒂斯方程的模型,但这些模型应用于温室作物蒸散量时往往不准确。利用机器学习模型预测蒸散量的情况逐渐增多,但针对温室作物应用的相关研究相对较少。我们利用三年(2019 - 2021年)的实验数据,使用基于XGBoost回归(XGBR)的温室滴灌番茄作物蒸散量预测模型(XGBR - ET),对八个气象因素(太阳净辐射(Rn)、平均温度(Ta)、最低温度(Tamin)、最高温度(Tamax)、相对湿度(RH)、最低相对湿度(RHmin)、最高相对湿度(RHmax)和风速(V))对蒸散量的影响进行建模。该模型与其他七个常见回归模型(线性回归(LR)、支持向量回归(SVR)、K近邻回归(KNR)、随机森林回归(RFR)、AdaBoost回归(ABR)、装袋回归(BR)和梯度提升回归(GBR))进行了比较。结果表明,Rn、Ta和Tamax与蒸散量呈正相关,而Tamin、RH、RHmin、RHmax和V与蒸散量呈负相关。Rn与蒸散量的相关性最大(r = 0.89),V与蒸散量的相关性最小(r = 0.43)。就预测准确性而言,八个模型的排序为:XGBR - ET > GBR - ET > SVR - ET > ABR - ET > BR - ET > LR - ET > KNR - ET > RFR - ET。XGBR - ET的统计指标均方误差(0.032)、均方根误差(0.163)、平均绝对误差(0.132)、平均绝对百分比误差(4.47%)和决定系数(0.981)表明,XGBR - ET对温室番茄的日蒸散量建模效果良好。对XGBR - ET模型的参数进行了剔除分析,结果表明气象因素对XGBR - ET的重要性排序为:Rn > RH > RHmin > Tamax > RHmax > Tamin > Ta > V。使用XGBR选择Rn、RH、RHmin、Tamax和Tamin作为模型输入变量可确保模型的预测准确性(均方误差0.047)。本研究对于以机器学习的新应用为基础简化滴灌温室番茄作物蒸散量计算、制定有效灌溉方案具有参考价值。