Beyond “greening” and “browning”: Trends in grassland ground cover fractions across Eurasia that account for spatial and temporal autocorrelation

Author:

Lewińska Katarzyna Ewa1ORCID,Ives Anthony R.2ORCID,Morrow Clay J.23ORCID,Rogova Natalia1ORCID,Yin He4ORCID,Elsen Paul R.5ORCID,de Beurs Kirsten6ORCID,Hostert Patrick78ORCID,Radeloff Volker C.1ORCID

Affiliation:

1. SILVIS Lab, Department of Forest and Wildlife Ecology University of Wisconsin‐Madison Madison Wisconsin USA

2. Department of Integrative Biology University of Wisconsin‐Madison Madison Wisconsin USA

3. Department of Forest and Wildlife Ecology University of Wisconsin‐Madison Madison Wisconsin USA

4. Department of Geography Kent State University Kent Ohio USA

5. Global Conservation Program Wildlife Conservation Society Bronx New York USA

6. Laboratory of Geo‐Information Science and Remote Sensing Wageningen University & Research Wageningen the Netherlands

7. Geography Department Humboldt‐Universität zu Berlin Berlin Germany

8. Integrative Research Institute on Transformations of Human‐Environment Systems (IRI THESys) Humboldt‐Universität zu Berlin Berlin Germany

Abstract

AbstractGrassland ecosystems cover up to 40% of the global land area and provide many ecosystem services directly supporting the livelihoods of over 1 billion people. Monitoring long‐term changes in grasslands is crucial for food security, biodiversity conservation, achieving Land Degradation Neutrality goals, and modeling the global carbon budget. Although long‐term grassland monitoring using remote sensing is extensive, it is typically based on a single vegetation index and does not account for temporal and spatial autocorrelation, which means that some trends are falsely identified while others are missed. Our goal was to analyze trends in grasslands in Eurasia, the largest continuous grassland ecosystems on Earth. To do so, we calculated Cumulative Endmember Fractions (annual sums of monthly ground cover fractions) derived from MODIS 2002–2020 time series, and applied a new statistical approach PARTS that explicitly accounts for temporal and spatial autocorrelation in trends. We examined trends in green vegetation, non‐photosynthetic vegetation, and soil ground cover fractions considering their independent change trajectories and relations among fractions over time. We derived temporally uncorrelated pixel‐based trend maps and statistically tested whether observed trends could be explained by elevation, land cover, SPEI3, climate, country, and their combinations, all while accounting for spatial autocorrelation. We found no statistical evidence for a decrease in vegetation cover in grasslands in Eurasia. Instead, there was a significant map‐level increase in non‐photosynthetic vegetation across the region and local increases in green vegetation with a concomitant decrease in soil fraction. Independent environmental variables affected trends significantly, but effects varied by region. Overall, our analyses show in a statistically robust manner that Eurasian grasslands have changed considerably over the past two decades. Our approach enhances remote sensing‐based monitoring of trends in grasslands so that underlying processes can be discerned.

Funder

Aeronautics Research Mission Directorate

Publisher

Wiley

Subject

General Environmental Science,Ecology,Environmental Chemistry,Global and Planetary Change

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