ForestGapR: An r Package for forest gap analysis from canopy height models

Research output: Contribution to journalArticlepeer-review

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ForestGapR: An r Package for forest gap analysis from canopy height models. / Silva, Carlos A.; Valbuena, Ruben; Pinage, Ekena R. et al.
In: Methods in Ecology and Evolution, Vol. 10, No. 8, 31.08.2019, p. 1347-1356.

Research output: Contribution to journalArticlepeer-review

HarvardHarvard

Silva, CA, Valbuena, R, Pinage, ER, Mohan, M, Alves de Almeida, DR, Broadbent, EN, Jaafar, WSWM, de Almeida Papa, D, Cardil, A & Klauberg, C 2019, 'ForestGapR: An r Package for forest gap analysis from canopy height models', Methods in Ecology and Evolution, vol. 10, no. 8, pp. 1347-1356. https://doi.org/10.1111/2041-210X.13211

APA

Silva, C. A., Valbuena, R., Pinage, E. R., Mohan, M., Alves de Almeida, D. R., Broadbent, E. N., Jaafar, W. S. W. M., de Almeida Papa, D., Cardil, A., & Klauberg, C. (2019). ForestGapR: An r Package for forest gap analysis from canopy height models. Methods in Ecology and Evolution, 10(8), 1347-1356. https://doi.org/10.1111/2041-210X.13211

CBE

Silva CA, Valbuena R, Pinage ER, Mohan M, Alves de Almeida DR, Broadbent EN, Jaafar WSWM, de Almeida Papa D, Cardil A, Klauberg C. 2019. ForestGapR: An r Package for forest gap analysis from canopy height models. Methods in Ecology and Evolution. 10(8):1347-1356. https://doi.org/10.1111/2041-210X.13211

MLA

Silva, Carlos A. et al. "ForestGapR: An r Package for forest gap analysis from canopy height models". Methods in Ecology and Evolution. 2019, 10(8). 1347-1356. https://doi.org/10.1111/2041-210X.13211

VancouverVancouver

Silva CA, Valbuena R, Pinage ER, Mohan M, Alves de Almeida DR, Broadbent EN et al. ForestGapR: An r Package for forest gap analysis from canopy height models. Methods in Ecology and Evolution. 2019 Aug 31;10(8):1347-1356. Epub 2019 May 18. doi: 10.1111/2041-210X.13211

Author

Silva, Carlos A. ; Valbuena, Ruben ; Pinage, Ekena R. et al. / ForestGapR: An r Package for forest gap analysis from canopy height models. In: Methods in Ecology and Evolution. 2019 ; Vol. 10, No. 8. pp. 1347-1356.

RIS

TY - JOUR

T1 - ForestGapR: An r Package for forest gap analysis from canopy height models

AU - Silva, Carlos A.

AU - Valbuena, Ruben

AU - Pinage, Ekena R.

AU - Mohan, Midhun

AU - Alves de Almeida, Danilo Roberti

AU - Broadbent, Eben N.

AU - Jaafar, Wan, S. W. M.

AU - de Almeida Papa, Daniel

AU - Cardil, Adrian

AU - Klauberg, Carine

PY - 2019/8/31

Y1 - 2019/8/31

N2 - In forest ecosystems, many functional processes are governed by local canopy gap dynamics, caused by either natural or anthropogenic factors. Quantifying the size and spatial distribution of canopy gaps enables an improved understanding and predictive modelling of multiple environmental phenomena. For instance knowledge of canopy gap dynamics can help us elucidate time‐integrated effects of tree mortality, regrowth and succession rates, carbon flux patterns, species heterogeneity and three‐dimensional spacing within structurally complex forest ecosystems.Airborne Laser Scanning (ALS) has emerged as a technology that is well‐suited for mapping forest canopy gaps in a wide variety of forest ecosystems and across spatial scales. New technological and algorithmic advances, including ALS remote‐sensing, coupled with optimized frameworks for data processing and detection of forest canopy gaps, are allowing an enhanced understanding of forest structure and functional processes. This paper introduces ForestGapR, a cutting‐edge open source r package for forest gap analysis from canopy height models derived from ALS and other remote sensing sources. The ForestGapR package offers tools to (a) automate forest canopy gap detection, (b) compute a series of gap statistics, including gap‐size frequency distributions and spatial distribution, (c) map gap dynamics (when multitemporal ALS data are available) and (d) convert forest canopy gaps detected into raster or vector layers as per user requirements. As case studies, we run ForestGapR on ALS data collected over four different tropical forest regions worldwide. We hope this new package will enable further research towards understanding the distribution, dynamics and role of canopy gaps not only in tropical forests, but in other forest types elsewhere

AB - In forest ecosystems, many functional processes are governed by local canopy gap dynamics, caused by either natural or anthropogenic factors. Quantifying the size and spatial distribution of canopy gaps enables an improved understanding and predictive modelling of multiple environmental phenomena. For instance knowledge of canopy gap dynamics can help us elucidate time‐integrated effects of tree mortality, regrowth and succession rates, carbon flux patterns, species heterogeneity and three‐dimensional spacing within structurally complex forest ecosystems.Airborne Laser Scanning (ALS) has emerged as a technology that is well‐suited for mapping forest canopy gaps in a wide variety of forest ecosystems and across spatial scales. New technological and algorithmic advances, including ALS remote‐sensing, coupled with optimized frameworks for data processing and detection of forest canopy gaps, are allowing an enhanced understanding of forest structure and functional processes. This paper introduces ForestGapR, a cutting‐edge open source r package for forest gap analysis from canopy height models derived from ALS and other remote sensing sources. The ForestGapR package offers tools to (a) automate forest canopy gap detection, (b) compute a series of gap statistics, including gap‐size frequency distributions and spatial distribution, (c) map gap dynamics (when multitemporal ALS data are available) and (d) convert forest canopy gaps detected into raster or vector layers as per user requirements. As case studies, we run ForestGapR on ALS data collected over four different tropical forest regions worldwide. We hope this new package will enable further research towards understanding the distribution, dynamics and role of canopy gaps not only in tropical forests, but in other forest types elsewhere

U2 - 10.1111/2041-210X.13211

DO - 10.1111/2041-210X.13211

M3 - Article

VL - 10

SP - 1347

EP - 1356

JO - Methods in Ecology and Evolution

JF - Methods in Ecology and Evolution

SN - 2041-210X

IS - 8

ER -