Assessing land surface phenology in Araucaria-Nothofagus forests in Chile with Landsat 8/Sentinel 2 time series
Author
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Kosczor, E.
Author
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Forkel, M.
Author
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Hernández Palma, Héctor Jaime
Author
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Kinalczyk, D.
Author
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Pirotti, F.
Author
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Kutchartt, E.
Admission date
dc.date.accessioned
2023-01-23T21:13:08Z
Available date
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2023-01-23T21:13:08Z
Publication date
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2022
Cita de ítem
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International Journal of Applied Earth Observation and Geoinformation 112 (2022) 102862
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Identifier
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10.1016/j.jag.2022.102862
Identifier
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https://repositorio.uchile.cl/handle/2250/191723
Abstract
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include red-listed species and have a high cultural importance for the ancestral population and thus require
continuous monitoring to support conservation. Monitoring of phenology by satellite observations is a key tool to
quantify the impact of climate variability on terrestrial vegetation. Here we aim to provide a first quantification
and ecological understanding of the land surface phenology of protected Araucaria-Nothofagus forests in the
Conguillío National Park in southern Chile. We exploit time series of enhanced vegetation index from Landsat 8
and Sentinel-2 satellite imagery from 2016 to 2020 to derive start and end-of-season (SOS and EOS) information
at 10 × 10 m spatial resolution. Results show that, on average, SOS varies between 11th October and 5th
November (quantiles 25% and 75% of all pixels). SOS occurs later at higher elevation, in sparsely vegetated
stands, or in stands dominated by Nothofagus antarctica. EOS occurs on average between 24th March and 14th
April. EOS shows a high variability between neighboring pixels that cannot be easily associated with forest stands
or topography. Comparisons with regional-aggregated temperature and precipitation time series show that SOS is
delayed with colder winter and spring temperatures and EOS shows stronger (but contrasting) correlations with
summer and fall precipitation. By using a machine learning approach, we find that elevation is the main control
on the spatial-temporal variability of SOS and EOS, followed by aspect, slope and total tree cover. These results
suggest that meteorological conditions control the inter-annual variability of the phenology of Araucaria-
Nothofagus forests but the effect is modified by small-scale topography, climate and stand characteristics.
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Patrocinador
dc.description.sponsorship
Fondo de Investigacion del Bosque Nativo 016/2019
German Research Foundation (DFG) FO 979/4-1
Ministerio de Agricultura, Gobierno de Chile y Corporacion Nacional Forestal
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Lenguage
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en
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Publisher
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Elsevier
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Type of license
dc.rights
Attribution-NonCommercial-NoDerivs 3.0 United States