Strategies for monitoring within-field soybean yield using Sentinel-2 Vis-NIR-SWIR spectral bands and machine learning regression methods

被引:0
|
作者
L. G.T. Crusiol
Liang Sun
R. N.R. Sibaldelli
V. Felipe Junior
W. X. Furlaneti
R. Chen
Z. Sun
D. Wuyun
Z. Chen
M. R. Nanni
R. H. Furlanetto
E. Cezar
A. L. Nepomuceno
J. R.B. Farias
机构
[1] Chinese Academy of Agricultural Sciences,Key Laboratory of Agricultural Remote Sensing, Ministry of Agriculture/CAAS
[2] State University of Maringá,CIAT Joint Laboratory in Advanced Technologies for Sustainable Agriculture—Institute of Agricultural Resources and Regional Planning
[3] Embrapa Soja (National Soybean Research Center—Brazilian Agricultural Research Corporation),Department of Agronomy
[4] Integrada Cooperativa Agroindustrial,Digitalization and Informatics Division
[5] Food and Agricultural Organization of the United Nations,undefined
来源
Precision Agriculture | 2022年 / 23卷
关键词
Yield prediction; Yield mapping; Partial least squares regression; Support vector regression; Multispectral image; Multitemporal data;
D O I
暂无
中图分类号
学科分类号
摘要
Soybean crop plays an important role in world food production and food security, and agricultural production should be increased accordingly to meet the global food demand. Satellite remote sensing data is considered a promising proxy for monitoring and predicting yield. This research aimed to evaluate strategies for monitoring within-field soybean yield using Sentinel-2 visible, near-infrared and shortwave infrared (Vis/NIR/SWIR) spectral bands and partial least squares regression (PLSR) and support vector regression (SVR) methods. Soybean yield maps (over 500 ha) were recorded by a combine harvester with a yield monitor in 15 fields (3 farms) in Paraná State, southern Brazil. Sentinel-2 images (spectral bands and 8 vegetation indices) across a cropping season were correlated to soybean yield. Information pooled across the cropping season presented better results compared to single images, with best performance of Vis/NIR/SWIR spectral bands under PLSR and SVR. At the grain filling stage, field-, farm- and global-based models were evaluated and presented similar trends compared to leaf-based hyperspectral reflectance collected at the Brazilian National Soybean Research Center. SVR outperformed PLSR, with a strong correlation between observed and predicted yield. For within-field soybean yield mapping, field-based SVR models (developed individually for each field) presented the highest accuracies. The results obtained demonstrate the possibility of developing within-field yield prediction models using Sentinel-2 Vis/NIR/SWIR bands through machine learning methods.
引用
收藏
页码:1093 / 1123
页数:30
相关论文
共 15 条
  • [1] Strategies for monitoring within-field soybean yield using Sentinel-2 Vis-NIR-SWIR spectral bands and machine learning regression methods
    Crusiol, L. G. T.
    Sun, Liang
    Sibaldelli, R. N. R.
    Felipe Junior, V
    Furlaneti, W. X.
    Chen, R.
    Sun, Z.
    Wuyun, D.
    Chen, Z.
    Nanni, M. R.
    Furlanetto, R. H.
    Cezar, E.
    Nepomuceno, A. L.
    Farias, J. R. B.
    PRECISION AGRICULTURE, 2022, 23 (03) : 1093 - 1123
  • [2] Monitoring Within-Field Variability of Corn Yield using Sentinel-2 and Machine Learning Techniques
    Kayad, Ahmed
    Sozzi, Marco
    Gatto, Simone
    Marinello, Francesco
    Pirotti, Francesco
    REMOTE SENSING, 2019, 11 (23)
  • [3] Soya Yield Prediction on a Within-Field Scale Using Machine Learning Models Trained on Sentinel-2 and Soil Data
    Pejak, Branislav
    Lugonja, Predrag
    Antic, Aleksandar
    Panic, Marko
    Pandzic, Milos
    Alexakis, Emmanouil
    Mavrepis, Philip
    Zhou, Naweiluo
    Marko, Oskar
    Crnojevic, Vladimir
    REMOTE SENSING, 2022, 14 (09)
  • [4] Comparison of PlanetScope, Sentinel-2, and landsat 8 data in soybean yield estimation within-field variability with random forest regression
    Amankulova, Khilola
    Farmonov, Nizom
    Akramova, Parvina
    Tursunov, Ikrom
    Mucsi, Laszlo
    HELIYON, 2023, 9 (06)
  • [5] Predicting within-field soybean yield variability by coupling Sentinel-2 leaf area index with a crop growth model
    Gaso, Deborah, V
    de Wit, Allard
    Berger, Andres G.
    Kooistra, Lammert
    AGRICULTURAL AND FOREST METEOROLOGY, 2021, 308
  • [6] Comparison of Machine Learning Regression Algorithms for Cotton Leaf Area Index Retrieval Using Sentinel-2 Spectral Bands
    Mao, Huihui
    Meng, Jihua
    Ji, Fujiang
    Zhang, Qiankun
    Fang, Huiting
    APPLIED SCIENCES-BASEL, 2019, 9 (07):
  • [7] Integrating the Sentinel-1, Sentinel-2 and topographic data into soybean yield modelling using machine learning
    Amankulova, Khilola
    Farmonov, Nizom
    Omonov, Khasan
    Abdurakhimova, Mokhigul
    Mucsi, Laszlo
    ADVANCES IN SPACE RESEARCH, 2024, 73 (08) : 4052 - 4066
  • [8] Assessing within-Field Corn and Soybean Yield Variability from WorldView-3, Planet, Sentinel-2, and Landsat 8 Satellite Imagery
    Skakun, Sergii
    Kalecinski, Natacha I.
    Brown, Meredith G. L.
    Johnson, David M.
    Vermote, Eric F.
    Roger, Jean-Claude
    Franch, Belen
    REMOTE SENSING, 2021, 13 (05) : 1 - 18
  • [9] MACHINE LEARNING METHODS FOR WATER QUALITY MONITORING OVER FINGER LAKES USING SENTINEL-2
    Khan, Rabia Munsaf
    Salehi, Bahram
    Mahdianpari, Masoud
    2022 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2022), 2022, : 6316 - 6319
  • [10] Estimation of Canopy Structure of Field Crops Using Sentinel-2 Bands with Vegetation Indices and Machine Learning Algorithms
    Zou, Xiaochen
    Zhu, Sunan
    Mottus, Matti
    REMOTE SENSING, 2022, 14 (12)