Zhao Long, Qing Shunhao, Li Hui, Qiu Zhaomei, Niu Xiaoli, Shi Yi, Chen Shuangchen, Xing Xuguang
College of Agricultural Equipment Engineering, Henan University of Science and Technology, Luoyang, 471000, Henan Province, China.
College of Horticulture and Plant Protection, Henan University of Science and Technology, Luoyang, 471000, Henan Province, China.
Int J Biometeorol. 2024 Mar;68(3):511-525. doi: 10.1007/s00484-023-02608-y. Epub 2024 Jan 10.
Crop evapotranspiration is a key parameter influencing water-saving irrigation and water resources management of agriculture. However, current models for estimating maize evapotranspiration primarily rely on meteorological data and empirical coefficients, and the estimated evapotranspiration contains uncertainties. In this study, the evapotranspiration data of summer maize were collected from typical stations in Northern China (Yucheng Station), and a back-propagation neural network (BP) model for predicting maize evapotranspiration was constructed based on meteorological data, soil data, and crop data. To further improve its accuracy, the maize evapotranspiration model was optimized using three bionic optimization algorithms, namely the sand cat swarm optimization (SCSO) algorithms, hunter-prey optimizer (HPO) algorithm, and golden jackal optimization (GJO) algorithm. The results showed that the fusion of meteorological, soil moisture, and crop data can effectively improve the accuracy of the maize evapotranspiration model. The model showed higher accuracy with the hybrid optimization model SCSO-BP compared to the stand-alone BP neural network model, with improvements of 2.7-4.8%, 17.2-25.5%, 13.9-26.8%, and 3.3-5.6% in terms of R, RMSE, MAE, and NSE, respectively. Comprehensively compared with existing maize evapotranspiration models, the SCSO-BP model presented the highest accuracy, with R = 0.842, RMSE = 0.433 mm/day, MAE = 0.316 mm/day, NSE = 0.840, and overall global evaluation index (GPI) ranking the first. The results have reference value for the calculation of daily evapotranspiration of maize in similar areas of northern China.
作物蒸散是影响农业节水灌溉和水资源管理的关键参数。然而,目前估算玉米蒸散的模型主要依赖气象数据和经验系数,且估算的蒸散存在不确定性。本研究收集了中国北方典型站点(禹城站)夏玉米的蒸散数据,并基于气象数据、土壤数据和作物数据构建了预测玉米蒸散的反向传播神经网络(BP)模型。为进一步提高其精度,采用三种仿生优化算法,即沙猫群优化(SCSO)算法、捕食者-猎物优化(HPO)算法和金豺优化(GJO)算法对玉米蒸散模型进行优化。结果表明,气象、土壤湿度和作物数据的融合能有效提高玉米蒸散模型的精度。与单独的BP神经网络模型相比,混合优化模型SCSO-BP的模型精度更高,在R、RMSE、MAE和NSE方面分别提高了2.7-4.8%、17.2-25.5%、13.9-26.8%和3.3-5.6%。与现有的玉米蒸散模型综合比较,SCSO-BP模型精度最高,R = 0.842,RMSE = 0.433毫米/天,MAE = 0.316毫米/天,NSE = 0.840,总体全局评价指数(GPI)排名第一。研究结果对中国北方类似地区玉米日蒸散量的计算具有参考价值。