Landsat greening trends in alpine ecosystems are inflated by multidecadal increases in summer observations

Author:

Bayle Arthur1ORCID,Gascoin Simon2,Berner Logan T.3,Choler Philippe1

Affiliation:

1. LECA

2. CESBIO

3. North Arizona University

Abstract

Abstract Remote sensing is an invaluable tool for tracking decadal-scale changes in vegetation greenness in response to climate and land use changes. While the Landsat archive has been widely used to explore these trends and their spatial and temporal complexity, its inconsistent sampling frequency over time and space raises concerns about its ability to provide reliable estimates of annual vegetation indices such as the annual maximum NDVI, commonly used as a proxy of plant productivity. Here we demonstrate for seasonally snow-covered ecosystems, that greening trends derived from annual maximum NDVI can be significantly overestimated because the number of available Landsat observations increases over time, and mostly that the magnitude of the overestimation varies along environmental gradients. Typically, areas with a short growing season and few available observations experience the largest bias in greening trend estimation. We show these conditions are met in late snowmelting habitats in the European Alps, which are known to be particularly sensitive to temperature increases and present conservation challenges. In this critical context, almost 50% of the magnitude of estimated greening can be explained by this bias. Our study calls for greater caution when comparing greening trends magnitudes between habitats with different snow conditions and observations. At a minimum we recommend reporting information on the temporal sampling of the observations, including the number of observations per year, when long term studies with Landsat observations are undertaken.

Publisher

Research Square Platform LLC

Reference101 articles.

1. Vegetation expansion in the subnival Hindu Kush Himalaya;Anderson K;Glob Chang Biol,2020

2. Arvidson T, Goward S, Gasch J, Williams D (2006) Landsat-7 Long-Term Acquisition Plan: Development and Validation. Photogrammetric Engineering & Remote Sensing, 72(10), 1137–1146. https://doi.org/0099-1112/06/7210–1137/$3.00/0

3. Drone data reveal heterogeneity in tundra greenness and phenology not captured by satellites;Assmann JJ;Environ Res Lett,2020

4. Large-scale variations in the vegetation growing season and annual cycle of atmospheric CO2 at high northern latitudes from 1950 to 2011;Barichivich J;Glob Chang Biol,2013

5. Contribution de SPOT World Heritage aux séries temporelles d'observation satellitaires des montagnes françaises;Barrou Dumont Z;Revue Française de Photogrammétrie et de Télédétection,2023

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