• English
  • Deutsch
  • Log In
    Password Login
    Research Outputs
    Fundings & Projects
    Researchers
    Institutes
    Statistics
Repository logo
Fraunhofer-Gesellschaft
  1. Home
  2. Fraunhofer-Gesellschaft
  3. Scopus
  4. Field Spectroscopy and Machine Learning Successfully Predict Grassland Forage Quality and Quantity across Climate Zones
 
  • Details
  • Full
Options
2025
Journal Article
Title

Field Spectroscopy and Machine Learning Successfully Predict Grassland Forage Quality and Quantity across Climate Zones

Abstract
Grasslands cover one-third of Earth's land surface and are essential for livestock forage provision. Monitoring forage biomass and quality is key for sustainable management. Hyperspectral remote sensing and field spectroscopy is promising, but global models often fail across biomes.
We compiled data from temperate, humid tropical, and dry subtropical grasslands in Europe and Africa, spanning local growing seasons and management gradients. Using machine-learning models, we assessed the performance and transferability of global and regional predictions for forage quality (metabolizable energy), and quantity (aboveground biomass), and their combined proxy (metabolizable energy yield).
Random forest regression performed best for metabolizable energy (nRMSE = 0.108, R2 = 0.68), aboveground biomass (nRMSE = 0.145, R2 = 0.53), and metabolizable energy yield (nRMSE = 0.153, R2 = 0.58). Neural networks showed highest global-to-regional transferability (nRMSE as low as 0.083), while globally trained partial least squares models outperformed regional ones (ΔnRMSE: -0.211 to 0.037). Forage quality was predicted most accurately, likely due to consistent variation in plant functional traits and strong spectral correlations. In contrast, forage quantity was harder to model due to region-specific canopy structure and pigment differences. No method achieved full spatial transferability.
Our findings highlight both the potential and limitations of hyperspectral models for forage monitoring, particularly the consistent accuracy of forage quality predictions and the superior performance of random forest models. Transferability across regions was only feasible when models accommodated local variability. Expanding spectral datasets, advancing sensors, and refining models may improve predictions, supporting more sustainable grassland management worldwide.
Author(s)
Männer, Florian
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Muro, Javier
IE Universidad
Dubovyk, Olena
Universität Hamburg
Ferner, Jessica
Universität Bonn
Guuroh, Reginald Tang
Universität Potsdam
Knox, Nichola M.
College of Science and Engineering
Schmidtlein, Sebastian
Karlsruher Institut für Technologie
Linstädter, Anja
Universität Potsdam
Journal
Ecological Informatics  
Project(s)
Stabilisierung und Erhöhung von biologischer Vielfalt & Ökosystemleistungen auf Agrarflächen durch Schaffung vielfältiger agroforstlicher Nutzungsstrukturen
BioTip: Desertifikations-Kipppunkte verstehen und bewältigen - eine namibische Perspektive - Teilprojekt 1: Koordination, Vegetation und Boden  
Eine namibische Perspektive auf Desertifikations-Kipppunkte im Kontext des Klimawandels - Teilprojekt 1: Vegetation und Koordination  
Kompetenzzentrum für Klimawandel und angepasste Landnutzung in Westafrika - Teilvorhaben 1: Forschungsaktivitäten, Graduiertenprogramme und Kompetenzzentrum  
Funder
Deutsche Forschungsgemeinschaft  
Bundesministerium für Forschung, Technologie und Raumfahrt  
Bundesministerium für Forschung, Technologie und Raumfahrt  
Bundesministerium für Forschung, Technologie und Raumfahrt  
Open Access
File(s)
Download (20.05 MB)
Rights
CC BY 4.0: Creative Commons Attribution
DOI
10.1016/j.ecoinf.2025.103426
10.24406/publica-5707
Additional link
Full text
Language
English
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Keyword(s)
  • Branche: Bioeconomy

  • Research Line: Machine learning (ML)

  • LTA: Machine intelligence, algorithms, and data structures (incl. semantics)

  • Agriculture

  • Machine learning

  • Remote sensing

  • Global Monitoring for Environment and Security (GMES)

  • Cookie settings
  • Imprint
  • Privacy policy
  • Api
  • Contact
© 2024