Remote sensing and machine learning for crop water stress determination in various crops: a critical review

被引:161
|
作者
Virnodkar, Shyamal S. [1 ]
Pachghare, Vinod K. [1 ]
Patil, V. C. [2 ]
Jha, Sunil Kumar [2 ]
机构
[1] Savitribai Phule Pune Univ, Coll Engn Pune, Dept Comp Engn & IT, Pune 411005, Maharashtra, India
[2] KJ Somaiya Inst Appl Agr Res, Saidapur, Karnataka, India
关键词
Remote sensing; Machine learning; Crop water stress; Crops; LAND-SURFACE TEMPERATURE; SUPPORT VECTOR MACHINES; CANOPY TEMPERATURE; MULTISPECTRAL IMAGERY; HYPERSPECTRAL DATA; ENERGY-BALANCE; RANDOM FOREST; INDEX CWSI; VEGETATION; EVAPOTRANSPIRATION;
D O I
10.1007/s11119-020-09711-9
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
The remote sensing (RS) technique is less cost- and labour- intensive than ground-based surveys for diverse applications in agriculture. Machine learning (ML), a branch of artificial intelligence (AI), provides an effective approach to construct a model for regression and classification of a multivariate and non-linear system. Without being explicitly programmed, machine learning models learn from training data, i.e., past experience. Machine learning, when applied to remotely sensed data, has the potential to evolve a real-time farm-specific management system to reinforce farmers' ability to make appropriate decisions. Recently, the use of machine learning techniques combined with RS data has reshaped precision agriculture in many ways, such as crop identification, yield prediction and crop water stress assessment, with better accuracy than conventional RS methods. As agriculture accounts for approximately 70% of the worldwide water withdrawals, it must be used in the most efficient way to obtain maximum yields and food production. The use of water management and irrigation based on plant water stress have been demonstrated to not only save water but also increase yield. To date, RS and ML-based results have encouraged farmers and decision-makers to adopt this technology to meet global food demands. This phenomenon has led to the much-needed interest of researchers in using ML to improve agriculture outcomes. However, the use of ML for the potential evaluation of water stress continues to be unexplored and the existing methods can still be greatly improved. This study aims to present an overall review of the widely used methods for crop water stress monitoring using remote sensing and machine learning and focuses on future directions for researchers.
引用
收藏
页码:1121 / 1155
页数:35
相关论文
共 50 条
  • [1] Remote sensing and machine learning for crop water stress determination in various crops: a critical review
    Shyamal S. Virnodkar
    Vinod K. Pachghare
    V. C. Patil
    Sunil Kumar Jha
    Precision Agriculture, 2020, 21 : 1121 - 1155
  • [2] A Review of Crop Water Stress Assessment Using Remote Sensing
    Ahmad, Uzair
    Alvino, Arturo
    Marino, Stefano
    REMOTE SENSING, 2021, 13 (20)
  • [3] Remote Sensing in Irrigated Crop Water Stress Assessment
    Er-Raki, Salah
    Chehbouni, Abdelghani
    REMOTE SENSING, 2023, 15 (04)
  • [4] Remote Sensing Crop Water Stress Determination Using CNN-ViT Architecture
    Lehouel, Kawtar
    Saber, Chaima
    Bouziani, Mourad
    Yaagoubi, Reda
    AI, 2024, 5 (02) : 618 - 634
  • [5] A critical review on applications of hyperspectral remote sensing in crop monitoring
    Yu, Huan
    Kong, Bo
    Hou, Yuting
    Xu, Xiaoyu
    Chen, Tao
    Liu, Xiangmeng
    EXPERIMENTAL AGRICULTURE, 2022, 58
  • [6] Integration of Machine Learning and Remote Sensing for Water Quality Monitoring and Prediction: A Review
    Mohan, Shashank
    Kumar, Brajesh
    Nejadhashemi, A. Pouyan
    SUSTAINABILITY, 2025, 17 (03)
  • [7] Tree crop yield estimation and prediction using remote sensing and machine learning: A systematic review
    Trentin, Carolina
    Ampatzidis, Yiannis
    Lacerda, Christian
    Shiratsuchi, Luciano
    SMART AGRICULTURAL TECHNOLOGY, 2024, 9
  • [8] Remote Sensing and Machine Learning Modeling to Support the Identification of Sugarcane Crops
    Lozano-Garzon, Carlos
    Bravo-Cordoba, German
    Castro, Harold
    Gonzalez-Rodriguez, Geovanny
    Nino, David
    Nunez, Haydemar
    Pardo, Carolina
    Vivas, Aurelio
    Castro, Yuber
    Medina, Jazmin
    Carlos Motta, Luis
    Rene Rojas, Julio
    Ignacio Suarez, Luis
    IEEE ACCESS, 2022, 10 : 17542 - 17555
  • [9] Remote Sensing and Machine Learning for Safer Railways: A Review
    Helmi, Wesam
    Bridgelall, Raj
    Askarzadeh, Taraneh
    APPLIED SCIENCES-BASEL, 2024, 14 (09):
  • [10] A review of unmanned aerial vehicle based remote sensing and machine learning for cotton crop growth monitoring
    Aierken, Nueraili
    Yang, Bo
    Li, Yongke
    Jiang, Pingan
    Pan, Gang
    Li, Shijian
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2024, 227