Potential of Airborne LiDAR Derived Vegetation Structure for the Prediction of Animal Species Richness at Mount Kilimanjaro

Research output: Contribution to journalJournal articleResearchpeer-review

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Potential of Airborne LiDAR Derived Vegetation Structure for the Prediction of Animal Species Richness at Mount Kilimanjaro. / Ziegler, Alice; Meyer, Hanna; Otte, Insa; Peters, Marcell K.; Appelhans, Tim; Behler, Christina; Böhning-Gaese, Katrin; Classen, Alice; Detsch, Florian; Deckert, Jürgen; Eardley, Connal D.; Ferger, Stefan W.; Fischer, Markus; Gebert, Friederike; Haas, Michael; Helbig-Bonitz, Maria; Hemp, Andreas; Hemp, Claudia; Kakengi, Victor; Mayr, Antonia V.; Ngereza, Christine; Reudenbach, Christoph; Röder, Juliane; Rutten, Gemma; Costa, David Schellenberger; Schleuning, Matthias; Ssymank, Axel; Steffan-Dewenter, Ingolf; Tardanico, Joseph; Tschapka, Marco; Vollstädt, Maximilian G. R.; Wöllauer, Stephan; Zhang, Jie; Brandl, Roland; Nauss, Thomas.

In: Remote Sensing, Vol. 14, No. 3, 786, 2022.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Ziegler, A, Meyer, H, Otte, I, Peters, MK, Appelhans, T, Behler, C, Böhning-Gaese, K, Classen, A, Detsch, F, Deckert, J, Eardley, CD, Ferger, SW, Fischer, M, Gebert, F, Haas, M, Helbig-Bonitz, M, Hemp, A, Hemp, C, Kakengi, V, Mayr, AV, Ngereza, C, Reudenbach, C, Röder, J, Rutten, G, Costa, DS, Schleuning, M, Ssymank, A, Steffan-Dewenter, I, Tardanico, J, Tschapka, M, Vollstädt, MGR, Wöllauer, S, Zhang, J, Brandl, R & Nauss, T 2022, 'Potential of Airborne LiDAR Derived Vegetation Structure for the Prediction of Animal Species Richness at Mount Kilimanjaro', Remote Sensing, vol. 14, no. 3, 786. https://doi.org/10.3390/rs14030786

APA

Ziegler, A., Meyer, H., Otte, I., Peters, M. K., Appelhans, T., Behler, C., Böhning-Gaese, K., Classen, A., Detsch, F., Deckert, J., Eardley, C. D., Ferger, S. W., Fischer, M., Gebert, F., Haas, M., Helbig-Bonitz, M., Hemp, A., Hemp, C., Kakengi, V., ... Nauss, T. (2022). Potential of Airborne LiDAR Derived Vegetation Structure for the Prediction of Animal Species Richness at Mount Kilimanjaro. Remote Sensing, 14(3), [786]. https://doi.org/10.3390/rs14030786

Vancouver

Ziegler A, Meyer H, Otte I, Peters MK, Appelhans T, Behler C et al. Potential of Airborne LiDAR Derived Vegetation Structure for the Prediction of Animal Species Richness at Mount Kilimanjaro. Remote Sensing. 2022;14(3). 786. https://doi.org/10.3390/rs14030786

Author

Ziegler, Alice ; Meyer, Hanna ; Otte, Insa ; Peters, Marcell K. ; Appelhans, Tim ; Behler, Christina ; Böhning-Gaese, Katrin ; Classen, Alice ; Detsch, Florian ; Deckert, Jürgen ; Eardley, Connal D. ; Ferger, Stefan W. ; Fischer, Markus ; Gebert, Friederike ; Haas, Michael ; Helbig-Bonitz, Maria ; Hemp, Andreas ; Hemp, Claudia ; Kakengi, Victor ; Mayr, Antonia V. ; Ngereza, Christine ; Reudenbach, Christoph ; Röder, Juliane ; Rutten, Gemma ; Costa, David Schellenberger ; Schleuning, Matthias ; Ssymank, Axel ; Steffan-Dewenter, Ingolf ; Tardanico, Joseph ; Tschapka, Marco ; Vollstädt, Maximilian G. R. ; Wöllauer, Stephan ; Zhang, Jie ; Brandl, Roland ; Nauss, Thomas. / Potential of Airborne LiDAR Derived Vegetation Structure for the Prediction of Animal Species Richness at Mount Kilimanjaro. In: Remote Sensing. 2022 ; Vol. 14, No. 3.

Bibtex

@article{489b5eebab4342f99e79a888704e7251,
title = "Potential of Airborne LiDAR Derived Vegetation Structure for the Prediction of Animal Species Richness at Mount Kilimanjaro",
abstract = "The monitoring of species and functional diversity is of increasing relevance for the development of strategies for the conservation and management of biodiversity. Therefore, reliable estimates of the performance of monitoring techniques across taxa become important. Using a unique dataset, this study investigates the potential of airborne LiDAR-derived variables characterizing vegetation structure as predictors for animal species richness at the southern slopes of Mount Kilimanjaro. To disentangle the structural LiDAR information from co-factors related to elevational vegetation zones, LiDAR-based models were compared to the predictive power of elevation models. 17 taxa and 4 feeding guilds were modeled and the standardized study design allowed for a comparison across the assemblages. Results show that most taxa (14) and feeding guilds (3) can be predicted best by elevation with normalized RMSE values but only for three of those taxa and two of those feeding guilds the difference to other models is significant. Generally, modeling performances between different models vary only slightly for each assemblage. For the remaining, structural information at most showed little additional contribution to the performance. In summary, LiDAR observations can be used for animal species prediction. However, the effort and cost of aerial surveys are not always in proportion with the prediction quality, especially when the species distribution follows zonal patterns, and elevation information yields similar results.",
keywords = "Arthropods, Bats, Biodiversity, Birds, Elevation, LiDAR, Partial least square regression, Predictive modeling, Species richness",
author = "Alice Ziegler and Hanna Meyer and Insa Otte and Peters, {Marcell K.} and Tim Appelhans and Christina Behler and Katrin B{\"o}hning-Gaese and Alice Classen and Florian Detsch and J{\"u}rgen Deckert and Eardley, {Connal D.} and Ferger, {Stefan W.} and Markus Fischer and Friederike Gebert and Michael Haas and Maria Helbig-Bonitz and Andreas Hemp and Claudia Hemp and Victor Kakengi and Mayr, {Antonia V.} and Christine Ngereza and Christoph Reudenbach and Juliane R{\"o}der and Gemma Rutten and Costa, {David Schellenberger} and Matthias Schleuning and Axel Ssymank and Ingolf Steffan-Dewenter and Joseph Tardanico and Marco Tschapka and Vollst{\"a}dt, {Maximilian G. R.} and Stephan W{\"o}llauer and Jie Zhang and Roland Brandl and Thomas Nauss",
note = "Publisher Copyright: {\textcopyright} 2022 by the authors. Licensee MDPI, Basel, Switzerland.",
year = "2022",
doi = "10.3390/rs14030786",
language = "English",
volume = "14",
journal = "Remote Sensing",
issn = "2072-4292",
publisher = "M D P I AG",
number = "3",

}

RIS

TY - JOUR

T1 - Potential of Airborne LiDAR Derived Vegetation Structure for the Prediction of Animal Species Richness at Mount Kilimanjaro

AU - Ziegler, Alice

AU - Meyer, Hanna

AU - Otte, Insa

AU - Peters, Marcell K.

AU - Appelhans, Tim

AU - Behler, Christina

AU - Böhning-Gaese, Katrin

AU - Classen, Alice

AU - Detsch, Florian

AU - Deckert, Jürgen

AU - Eardley, Connal D.

AU - Ferger, Stefan W.

AU - Fischer, Markus

AU - Gebert, Friederike

AU - Haas, Michael

AU - Helbig-Bonitz, Maria

AU - Hemp, Andreas

AU - Hemp, Claudia

AU - Kakengi, Victor

AU - Mayr, Antonia V.

AU - Ngereza, Christine

AU - Reudenbach, Christoph

AU - Röder, Juliane

AU - Rutten, Gemma

AU - Costa, David Schellenberger

AU - Schleuning, Matthias

AU - Ssymank, Axel

AU - Steffan-Dewenter, Ingolf

AU - Tardanico, Joseph

AU - Tschapka, Marco

AU - Vollstädt, Maximilian G. R.

AU - Wöllauer, Stephan

AU - Zhang, Jie

AU - Brandl, Roland

AU - Nauss, Thomas

N1 - Publisher Copyright: © 2022 by the authors. Licensee MDPI, Basel, Switzerland.

PY - 2022

Y1 - 2022

N2 - The monitoring of species and functional diversity is of increasing relevance for the development of strategies for the conservation and management of biodiversity. Therefore, reliable estimates of the performance of monitoring techniques across taxa become important. Using a unique dataset, this study investigates the potential of airborne LiDAR-derived variables characterizing vegetation structure as predictors for animal species richness at the southern slopes of Mount Kilimanjaro. To disentangle the structural LiDAR information from co-factors related to elevational vegetation zones, LiDAR-based models were compared to the predictive power of elevation models. 17 taxa and 4 feeding guilds were modeled and the standardized study design allowed for a comparison across the assemblages. Results show that most taxa (14) and feeding guilds (3) can be predicted best by elevation with normalized RMSE values but only for three of those taxa and two of those feeding guilds the difference to other models is significant. Generally, modeling performances between different models vary only slightly for each assemblage. For the remaining, structural information at most showed little additional contribution to the performance. In summary, LiDAR observations can be used for animal species prediction. However, the effort and cost of aerial surveys are not always in proportion with the prediction quality, especially when the species distribution follows zonal patterns, and elevation information yields similar results.

AB - The monitoring of species and functional diversity is of increasing relevance for the development of strategies for the conservation and management of biodiversity. Therefore, reliable estimates of the performance of monitoring techniques across taxa become important. Using a unique dataset, this study investigates the potential of airborne LiDAR-derived variables characterizing vegetation structure as predictors for animal species richness at the southern slopes of Mount Kilimanjaro. To disentangle the structural LiDAR information from co-factors related to elevational vegetation zones, LiDAR-based models were compared to the predictive power of elevation models. 17 taxa and 4 feeding guilds were modeled and the standardized study design allowed for a comparison across the assemblages. Results show that most taxa (14) and feeding guilds (3) can be predicted best by elevation with normalized RMSE values but only for three of those taxa and two of those feeding guilds the difference to other models is significant. Generally, modeling performances between different models vary only slightly for each assemblage. For the remaining, structural information at most showed little additional contribution to the performance. In summary, LiDAR observations can be used for animal species prediction. However, the effort and cost of aerial surveys are not always in proportion with the prediction quality, especially when the species distribution follows zonal patterns, and elevation information yields similar results.

KW - Arthropods

KW - Bats

KW - Biodiversity

KW - Birds

KW - Elevation

KW - LiDAR

KW - Partial least square regression

KW - Predictive modeling

KW - Species richness

U2 - 10.3390/rs14030786

DO - 10.3390/rs14030786

M3 - Journal article

AN - SCOPUS:85124570815

VL - 14

JO - Remote Sensing

JF - Remote Sensing

SN - 2072-4292

IS - 3

M1 - 786

ER -

ID: 299204059