Estimating maize evapotranspiration based on hybrid back-propagation neural network models and meteorological, soil, and crop data

被引:4
|
作者
Zhao, Long [1 ]
Qing, Shunhao [1 ]
Li, Hui [1 ]
Qiu, Zhaomei [1 ]
Niu, Xiaoli [1 ]
Shi, Yi [1 ]
Chen, Shuangchen [2 ]
Xing, Xuguang [3 ]
机构
[1] Henan Univ Sci & Technol, Coll Agr Equipment Engn, Luoyang 471000, Henan, Peoples R China
[2] Henan Univ Sci & Technol, Coll Hort & Plant Protect, Luoyang 471000, Henan, Peoples R China
[3] Northwest A&F Univ, Key Lab Agr Soil & Water Engn Arid Area, Minist Educ, Xianyang 712100, Shaanxi, Peoples R China
基金
中国国家自然科学基金;
关键词
Evapotranspiration; Maize; Back-propagation neural network; Hybrid optimization algorithm; Sand cat swarm optimization algorithm; EXTREME LEARNING-MACHINE; SWARM OPTIMIZATION; GREEN ROOFS; PREDICTION;
D O I
10.1007/s00484-023-02608-y
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
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 R2, RMSE, MAE, and NSE, respectively. Comprehensively compared with existing maize evapotranspiration models, the SCSO-BP model presented the highest accuracy, with R2 = 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.
引用
收藏
页码:511 / 525
页数:15
相关论文
共 50 条
  • [21] Weed recognition in corn fields using back-propagation neural network models
    Yang, C.-C.
    Prasher, S.O.
    Landry, J.A.
    Canadian Biosystems Engineering / Le Genie des biosystems au Canada, 2002, 44 : 15 - 7
  • [22] A Novel Travel Adviser Based on Improved Back-propagation Neural Network
    Yang, Min
    Zhang, Xuedan
    2016 7TH INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEMS, MODELLING AND SIMULATION (ISMS), 2016, : 283 - 288
  • [23] Forest Fire Smoke Detection Using Back-Propagation Neural Network Based on MODIS Data
    Li, Xiaolian
    Song, Weiguo
    Lian, Liping
    Wei, Xiaoge
    REMOTE SENSING, 2015, 7 (04): : 4473 - 4498
  • [24] Deformation Prediction of Landslide Based on Improved Back-propagation Neural Network
    Chen, Huangqiong
    Zeng, Zhigang
    COGNITIVE COMPUTATION, 2013, 5 (01) : 56 - 62
  • [25] A Method of Arc Priority Determination based on Back-Propagation Neural Network
    Shen Ying
    Qian Jianguo
    2017 4TH INTERNATIONAL CONFERENCE ON INFORMATION SCIENCE AND CONTROL ENGINEERING (ICISCE), 2017, : 38 - 41
  • [26] PCA and Back-Propagation Neural Network Based Face Recognition System
    Mahmud, Firoz
    Afroge, Shyla
    Al Mamun, Md.
    Matin, Abdul
    2015 18th International Conference on Computer and Information Technology (ICCIT), 2015, : 582 - 587
  • [27] Optimization of drilling and blasting parameters based on back-propagation neural network
    Wang, Xin-Min
    Zhao, Bin
    Wang, Xian-Lai
    Zhang, Qin-Li
    Zhongnan Daxue Xuebao (Ziran Kexue Ban)/Journal of Central South University (Science and Technology), 2009, 40 (05): : 1411 - 1416
  • [28] Research and Realization of Hardware Back-Propagation Neural Network Based on FPGA
    Guo, Fei
    Luo, Xiao
    MEASUREMENT TECHNOLOGY AND ENGINEERING RESEARCHES IN INDUSTRY, PTS 1-3, 2013, 333-335 : 2469 - 2474
  • [29] Computational model of grid cells based on back-propagation neural network
    Li, Baozhong
    Liu, Yanming
    Lai, Lei
    ELECTRONICS LETTERS, 2022, 58 (03) : 93 - 96
  • [30] A approach to Enterprises Credit Evaluation based on back-propagation neural network
    Wu, JX
    Wang, ZJ
    PROCEEDINGS OF 2003 INTERNATIONAL CONFERENCE ON MANAGEMENT SCIENCE & ENGINEERING, VOLS I AND II, 2003, : 162 - 167