Characterization of portuguese sown rainfed grasslands using remote sensing and machine learning

被引:12
作者
Morais, Tiago G. [1 ]
Jongen, Marjan [1 ,2 ]
Tufik, Camila [3 ]
Rodrigues, Nuno R. [4 ]
Gama, Ivo [4 ]
Fangueiro, David [3 ]
Serrano, Joao [5 ]
Vieira, Susana [6 ]
Domingos, Tiago [1 ]
Teixeira, Ricardo F. M. [1 ]
机构
[1] Univ Lisbon, MARETEC Marine Environm & Technol Ctr, Inst Super Tecn, LARSyS, Av Rovisco Pais 1, P-1049001 Lisbon, Portugal
[2] Univ Lisbon, Ctr Estudos Florestais CEF, Inst Super Agron, P-1349017 Lisbon, Portugal
[3] Univ Lisbon, Inst Super Agron, Linking Landscape Environm Agr & Food LEAF, P-1349017 Lisbon, Portugal
[4] Soc Unipessoal Lda, Terraprima Serv Ambientais, P-2135199 Samora Correia, Portugal
[5] Univ Evora, Mediterranean Inst Agr Environm & Dev MED, POB 94, P-7002554 Evora, Portugal
[6] Univ Lisbon, IDMEC Mech Engn Inst, Inst Super Tecn, Av Rovisco Pais 1, P-1049001 Lisbon, Portugal
关键词
Sentinel-2; Multiple linear regression; LASSO; Ridge; XGBoost; LightGBM; Random forests; Cross-validation; ESTIMATING ABOVEGROUND BIOMASS; VEGETATION INDEXES; NITROGEN; PRODUCTIVITY; QUALITY; SLURRY; COVER; MAPS;
D O I
10.1007/s11119-022-09937-9
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Grasslands are crucial ecosystems that support and provide a diverse number of ecosystem services. Sown biodiverse pastures rich in legumes (SBP) were developed with the main goal of increasing grassland production while minimizing fertilizers inputs. In this paper, the main properties of SBP in Portugal were estimated using remote sensing and machine learning in six different farms and two production years (spring 2018 and 2019). Four pasture characteristics were considered: aboveground standing biomass, fraction of legumes, plant nitrogen (N) content and plant phosphorus (P) content. Remote sensing data were obtained from Sentinel-2. The spectral bands combined with 5 vegetation indices and 9 covariates were used. Multiple linear regression, LASSO, Ridge, random forests, XGBoost and LightGBM regression models were used. Two cross-validation approaches were used: (1) a random approach with random selection of the folds (RN-CV), and (2) a structured approach where each fold is a unique combination of farm and year, which is subsequently used to assess the performance of the model obtained with the 8 other folds (LLYO-CV). Results showed that the random forest method had the best estimation accuracy for all pasture characteristics. Regarding cross-validation approaches, the algorithms with RN-CV have higher estimation accuracy for all pasture characteristics (on average about 10% lower RMSE and an R-2 85% higher), as compared to the algorithms with LLYO-CV. However, LLYO-CV should avoid overfitting and improve generalization of the models because in each fold the model is tested in a farm and year that was not used for training. The RMSE for all variables were significantly low, especially in RN-CV. Plant P is the variable where the choice of CV approach has the least influence (RMSE of test set with RN-CV: 0.71 g P kg(- 1); LLYO-CV: 0.72 g P kg(- 1)). Standing biomass is the variable with the highest difference between CV approaches (RN-CV: 722 kg ha(- 1); LLYO-CV: 825 kg ha(- 1)). The RMSE, of legumes and plant N were moderately affected by the CV approach (legume RN-CV: 0.11; LLYO-CV: 0.12 - plant N RN-CV: 3.96 g N kg(- 1); LLYO-CV: 3.99 g N kg(- 1)). The algorithms developed here were applied for entire parcels in the two farms with the most different climate conditions as demonstration of their potential future use for precision farming.
引用
收藏
页码:161 / 186
页数:26
相关论文
共 50 条
  • [1] Characterization of portuguese sown rainfed grasslands using remote sensing and machine learning
    Tiago G. Morais
    Marjan Jongen
    Camila Tufik
    Nuno R. Rodrigues
    Ivo Gama
    David Fangueiro
    João Serrano
    Susana Vieira
    Tiago Domingos
    Ricardo F.M. Teixeira
    Precision Agriculture, 2023, 24 : 161 - 186
  • [2] Pixels to pasture: Using machine learning and multispectral remote sensing to predict biomass and nutrient quality in tropical grasslands
    Zwick, Mike
    Cardoso, Juan Andres
    Gutierrez-Zapata, Diana Maria
    Ceron-Munoz, Mario
    Gutierrez, Jhon Freddy
    Raab, Christoph
    Jonsson, Nicholas
    Escobar, Miller
    Roberts, Kenny
    Barrett, Brian
    REMOTE SENSING APPLICATIONS-SOCIETY AND ENVIRONMENT, 2024, 36
  • [3] Characterizing Livestock Production in Portuguese Sown Rainfed Grasslands: Applying the Inverse Approach to a Process-Based Model
    Morais, Tiago G.
    Teixeira, Ricardo F. M.
    Rodrigues, Nuno R.
    Domingos, Tiago
    SUSTAINABILITY, 2018, 10 (12)
  • [4] Assessing Transferability of Remote Sensing Pasture Estimates Using Multiple Machine Learning Algorithms and Evaluation Structures
    Smith, Hunter D. D.
    Dubeux, Jose C. B.
    Zare, Alina
    Wilson, Chris H. H.
    REMOTE SENSING, 2023, 15 (11)
  • [5] Enabling Regenerative Agriculture Using Remote Sensing and Machine Learning
    Ogungbuyi, Michael Gbenga
    Guerschman, Juan P. P.
    Fischer, Andrew M. M.
    Crabbe, Richard Azu
    Mohammed, Caroline
    Scarth, Peter
    Tickle, Phil
    Whitehead, Jason
    Harrison, Matthew Tom
    LAND, 2023, 12 (06)
  • [6] Improving Potato Yield Prediction by Combining Cultivar Information and UAV Remote Sensing Data Using Machine Learning
    Li, Dan
    Miao, Yuxin
    Gupta, Sanjay K.
    Rosen, Carl J.
    Yuan, Fei
    Wang, Chongyang
    Wang, Li
    Huang, Yanbo
    REMOTE SENSING, 2021, 13 (16)
  • [7] Integrating Remote Sensing and Weather Variables for Mango Yield Prediction Using a Machine Learning Approach
    Torgbor, Benjamin Adjah
    Rahman, Muhammad Moshiur
    Brinkhoff, James
    Sinha, Priyakant
    Robson, Andrew
    REMOTE SENSING, 2023, 15 (12)
  • [8] Prediction of species richness and diversity in sub-alpine grasslands using satellite remote sensing and random forest machine-learning algorithm
    Mashiane, Katlego
    Ramoelo, Abel
    Adelabu, Samuel
    APPLIED VEGETATION SCIENCE, 2024, 27 (02)
  • [9] Predicting plant biomass and species richness in temperate grasslands across regions, time, and land management with remote sensing and deep learning
    Muro, Javier
    Linstaedter, Anja
    Magdon, Paul
    Woellauer, Stephan
    Maenner, Florian A.
    Schwarz, Lisa-Maricia
    Ghazaryan, Gohar
    Schultz, Johannes
    Malenovsky, Zbynek
    Dubovyk, Olena
    REMOTE SENSING OF ENVIRONMENT, 2022, 282
  • [10] Pasture monitoring using remote sensing and machine learning: A review of methods and applications
    Shahi, Tej Bahadur
    Balasubramaniam, Thirunavukarasu
    Sabir, Kenneth
    Nayak, Richi
    REMOTE SENSING APPLICATIONS-SOCIETY AND ENVIRONMENT, 2025, 37