Hyperspectral reflectance and machine learning for multi-site monitoring of cotton growth

被引:3
|
作者
Flynn, K. Colton [1 ]
Witt, Travis W. [2 ]
Baath, Gurjinder S. [3 ]
Chinmayi, H. K. [1 ]
Smith, Douglas R. [1 ]
Gowda, Prasanna H. [4 ]
Ashworth, Amanda J. [5 ]
机构
[1] USDA ARS, Grassland Soil & Water Res Lab, 808 E Blackland Rd, Temple, TX 76502 USA
[2] USDA ARS, Oklahoma & Cent Plains Agr Res Ctr, 7207W Cheyenne St, El Reno, OK 73036 USA
[3] Texas A&M AgriLife Res, Blackland Res & Extens Ctr, 720 E Blackland Rd, Temple, TX 76502 USA
[4] USDA ARS, Southeast Area, 114 Expt Stn Rd, Stoneville, MS 38776 USA
[5] USDA ARS, Poultry Prod & Prod Safety Res, 1260W Maple St, Fayetteville, AR 72701 USA
来源
关键词
Remote sensing; Cotton; SVM; Random forest; CHIME; LEAF-AREA INDEX; CHLOROPHYLL METER; YIELD; NITROGEN; INFORMATION; ALGORITHMS; STRESS;
D O I
10.1016/j.atech.2024.100536
中图分类号
S2 [农业工程];
学科分类号
0828 ;
摘要
Hyperspectral measurements can help with rapid decision-making and collecting data across multiple locations. However, there are multiple data processing methods (Savisky-Golay [SG], first derivative [FD], and normalization) and analyses (partial least squares regression [PLS], weighted k-nearest neighbor [KKNN], support vector machine [SVM], and random forest [RF]) that can be used to determine the best relationship between physical measurements and hyperspectral data. In the current study, FD was the best method for data processing and SVM was the best model for predicting average cotton (Gossypium spp. Malvaceae) height and nodes. However, the combination of FD and RF were best at predicting cotton leaf area index, canopy cover, and chlorophyll content across the growing season. Additionally, results from models developed by both SVM and RF were closely related to pseudo-CHIME satellite wavebands, where in-situ hyperspectral data were matched to the spectral resolutions of a future hyperspectral satellite. The information and results presented will aid producers and other members of the cotton industry to make rapid and meaningful decisions that could result in greater yield and sustainable intensification.
引用
收藏
页数:10
相关论文
共 50 条
  • [41] Machine Learning Using Multi-Site Cytokine Levels is Predictive of Primary Graft Dysfunction Following Lung Transplantation
    Brunson, J. C.
    Nord, D.
    Langerude, L.
    Moussa, H.
    Machuca, T.
    Rackauskas, M.
    Sharma, A.
    Lin, C.
    Emtiazjoo, A.
    Atkinson, C.
    JOURNAL OF HEART AND LUNG TRANSPLANTATION, 2024, 43 (04): : S141 - S142
  • [42] TractoInferno - A large-scale, open-source, multi-site database for machine learning dMRI tractography
    Philippe Poulin
    Guillaume Theaud
    Francois Rheault
    Etienne St-Onge
    Arnaud Bore
    Emmanuelle Renauld
    Louis de Beaumont
    Samuel Guay
    Pierre-Marc Jodoin
    Maxime Descoteaux
    Scientific Data, 9
  • [43] Multi-site damage localization in a suspension bridge via aftershock monitoring
    Domaneschi, Marco
    Limongelli, Mariapina
    Martinelli, Luca
    INGEGNERIA SISMICA, 2013, 30 (03): : 56 - 65
  • [44] Machine learning generalizability across healthcare settings: insights from multi-site COVID-19 screening
    Yang, Jenny
    Soltan, Andrew A. S.
    Clifton, David A.
    NPJ DIGITAL MEDICINE, 2022, 5 (01)
  • [45] Training and fidelity monitoring of behavioral interventions in multi-site addictions research
    Baer, John S.
    Ball, Samuel A.
    Campbell, Barbara K.
    Miele, Gloria M.
    Schoener, Eugene P.
    Tracy, Kathlene
    DRUG AND ALCOHOL DEPENDENCE, 2007, 87 (2-3) : 107 - 118
  • [46] Monitoring Mushroom Growth with Machine Learning
    Moysiadis, Vasileios
    Kokkonis, Georgios
    Bibi, Stamatia
    Moscholios, Ioannis
    Maropoulos, Nikolaos
    Sarigiannidis, Panagiotis
    AGRICULTURE-BASEL, 2023, 13 (01):
  • [47] Machine Learning Optimised Hyperspectral Remote Sensing Retrieves Cotton Nitrogen Status
    Marang, Ian J.
    Filippi, Patrick
    Weaver, Tim B.
    Evans, Bradley J.
    Whelan, Brett M.
    Bishop, Thomas F. A.
    Murad, Mohammed O. F.
    Al-Shammari, Dhahi
    Roth, Guy
    REMOTE SENSING, 2021, 13 (08)
  • [48] Early Detection of Dendroctonus valens Infestation with Machine Learning Algorithms Based on Hyperspectral Reflectance
    Gao, Bingtao
    Yu, Linfeng
    Ren, Lili
    Zhan, Zhongyi
    Luo, Youqing
    REMOTE SENSING, 2022, 14 (06)
  • [49] Predictive modelling of chlorophyll in Mombaca grass leaves by hyperspectral reflectance data and machine learning
    Sanchez, Miller Ruiz
    Alves Cardoso Silva, Carlos Augusto
    Melo Dematte, Jose Alexandre
    Mendonca, Fernando Campos
    da Silva, Marcelo Andrade
    Romanelli, Thiago Liborio
    Fiorio, Peterson Ricardo
    GRASS AND FORAGE SCIENCE, 2024,
  • [50] Shared Space Transfer Learning for analyzing multi-site fMRI data
    Yousefnezhad, Muhammad
    Selvitella, Alessandro
    Zhang, Daoqiang
    Greenshaw, Andrew J.
    Greiner, Russell
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 33, NEURIPS 2020, 2020, 33