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Quantifying local-scale changes in Amazonian forest cover using phytoliths

Quantifying local-scale changes in Amazonian forest cover using phytoliths
Quantifying local-scale changes in Amazonian forest cover using phytoliths
The ecosystem services and immense biodiversity of Amazon rainforests are threatened by deforestation and forest degradation. A key goal of modern archaeology and paleoecology in Amazonia is to establish the extent and duration of past forest disturbance by humans. Fossil phytoliths are an established proxy to identify the duration of disturbance in lake sedimentary and soil archives. What is not known, is the spatial scale of such forest disturbances when identified by phytoliths. Here we use phytolith assemblages to detect local-scale forest openings, provide an estimate of extent, and consider long-term forest recovery. We use modern phytolith assemblages of 50 Amazonian lakes to i) assess how phytolith assemblages vary across forest cover at 5 spatial scales (100 m, 200 m, 500 m, 1 km, 2 km), ii) model which phytolith morphotypes can accurately predict forest cover at 5 spatial scales, and iii) compare phytoliths with pollen to quantify their relative ability to detect forest cover changes. DCA results show phytolith assemblages could be used to differentiate low, intermediate, and high forest cover values, but not to distinguish between biogeographical gradients across Amazonia. Beta regression models show Poaceae phytoliths can accurately predict forest cover within 200 m of Amazonian lakes. This modern calibration dataset can be used to make quantitative reconstructions of forest cover changes in Amazonia, to generate novel insights into long-term forest recovery. Combining phytoliths and pollen provides a unique opportunity to make qualitative and quantitative reconstructions of past vegetation changes, to better understand how human activities, environmental and climatic changes have shaped modern Amazonian forests.
1948-6596
Witteveen, N.H.
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Blaus, A.
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Raczka, Marco
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Herrick, C.
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Palace, M.
b94d9712-2198-4259-98f9-f11b18bc197e
Nascimento, Majoi
40059943-f59a-49b2-8e7e-7b3d3f7f62af
van Loon, E. Emiel
cd967254-06e5-468b-b62d-ae86dcddd3c1
Gosling, William
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Bush, M.B.
c4fb0c3d-5f1b-4fe6-86a2-7aa49f0d82b3
McMichael, Crystal
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Witteveen, N.H.
ba8b11f3-957b-418b-86b2-655b8b1d1ad2
Blaus, A.
b1118939-46bc-4331-bd72-9344b87434bc
Raczka, Marco
d57afed9-59a3-4610-b183-3ddc143a6ec6
Herrick, C.
7e6e7d20-16d8-4aab-a02e-84a74553aaa0
Palace, M.
b94d9712-2198-4259-98f9-f11b18bc197e
Nascimento, Majoi
40059943-f59a-49b2-8e7e-7b3d3f7f62af
van Loon, E. Emiel
cd967254-06e5-468b-b62d-ae86dcddd3c1
Gosling, William
75de50b1-a15e-4dda-8d84-0c14b8ab9a2d
Bush, M.B.
c4fb0c3d-5f1b-4fe6-86a2-7aa49f0d82b3
McMichael, Crystal
9165af5f-82ae-4700-adf1-dea2606f4e5d

Witteveen, N.H., Blaus, A., Raczka, Marco, Herrick, C., Palace, M., Nascimento, Majoi, van Loon, E. Emiel, Gosling, William, Bush, M.B. and McMichael, Crystal (2024) Quantifying local-scale changes in Amazonian forest cover using phytoliths. Frontiers of Biogeography, 16 (1), [e62254]. (doi:10.21425/F5FBG62254).

Record type: Article

Abstract

The ecosystem services and immense biodiversity of Amazon rainforests are threatened by deforestation and forest degradation. A key goal of modern archaeology and paleoecology in Amazonia is to establish the extent and duration of past forest disturbance by humans. Fossil phytoliths are an established proxy to identify the duration of disturbance in lake sedimentary and soil archives. What is not known, is the spatial scale of such forest disturbances when identified by phytoliths. Here we use phytolith assemblages to detect local-scale forest openings, provide an estimate of extent, and consider long-term forest recovery. We use modern phytolith assemblages of 50 Amazonian lakes to i) assess how phytolith assemblages vary across forest cover at 5 spatial scales (100 m, 200 m, 500 m, 1 km, 2 km), ii) model which phytolith morphotypes can accurately predict forest cover at 5 spatial scales, and iii) compare phytoliths with pollen to quantify their relative ability to detect forest cover changes. DCA results show phytolith assemblages could be used to differentiate low, intermediate, and high forest cover values, but not to distinguish between biogeographical gradients across Amazonia. Beta regression models show Poaceae phytoliths can accurately predict forest cover within 200 m of Amazonian lakes. This modern calibration dataset can be used to make quantitative reconstructions of forest cover changes in Amazonia, to generate novel insights into long-term forest recovery. Combining phytoliths and pollen provides a unique opportunity to make qualitative and quantitative reconstructions of past vegetation changes, to better understand how human activities, environmental and climatic changes have shaped modern Amazonian forests.

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Published date: 2024

Identifiers

Local EPrints ID: 503839
URI: http://eprints.soton.ac.uk/id/eprint/503839
ISSN: 1948-6596
PURE UUID: 4ef20543-7b65-4de3-b928-73235204aac9
ORCID for Majoi Nascimento: ORCID iD orcid.org/0000-0003-4009-4905

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Date deposited: 14 Aug 2025 16:47
Last modified: 15 Aug 2025 02:14

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Contributors

Author: N.H. Witteveen
Author: A. Blaus
Author: Marco Raczka
Author: C. Herrick
Author: M. Palace
Author: Majoi Nascimento ORCID iD
Author: E. Emiel van Loon
Author: William Gosling
Author: M.B. Bush
Author: Crystal McMichael

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