A Conceptual Model for Detecting Small-Scale Forest Disturbances Based on Ecosystem Morphological Traits

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A Conceptual Model for Detecting Small-Scale Forest Disturbances Based on Ecosystem Morphological Traits. / Stoddart, Jaz; Almeida, Danilo; Silva, Carlos Alberto et al.
Yn: Remote Sensing, Cyfrol 14, Rhif 4, 15.02.2022.

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HarvardHarvard

Stoddart, J, Almeida, D, Silva, CA, Gorgens, EB, Keller, M & Valbuena, R 2022, 'A Conceptual Model for Detecting Small-Scale Forest Disturbances Based on Ecosystem Morphological Traits', Remote Sensing, cyfrol. 14, rhif 4. https://doi.org/10.3390/rs14040933

APA

Stoddart, J., Almeida, D., Silva, C. A., Gorgens, E. B., Keller, M., & Valbuena, R. (2022). A Conceptual Model for Detecting Small-Scale Forest Disturbances Based on Ecosystem Morphological Traits. Remote Sensing, 14(4). https://doi.org/10.3390/rs14040933

CBE

Stoddart J, Almeida D, Silva CA, Gorgens EB, Keller M, Valbuena R. 2022. A Conceptual Model for Detecting Small-Scale Forest Disturbances Based on Ecosystem Morphological Traits. Remote Sensing. 14(4). https://doi.org/10.3390/rs14040933

MLA

VancouverVancouver

Stoddart J, Almeida D, Silva CA, Gorgens EB, Keller M, Valbuena R. A Conceptual Model for Detecting Small-Scale Forest Disturbances Based on Ecosystem Morphological Traits. Remote Sensing. 2022 Chw 15;14(4). doi: 10.3390/rs14040933

Author

Stoddart, Jaz ; Almeida, Danilo ; Silva, Carlos Alberto et al. / A Conceptual Model for Detecting Small-Scale Forest Disturbances Based on Ecosystem Morphological Traits. Yn: Remote Sensing. 2022 ; Cyfrol 14, Rhif 4.

RIS

TY - JOUR

T1 - A Conceptual Model for Detecting Small-Scale Forest Disturbances Based on Ecosystem Morphological Traits

AU - Stoddart, Jaz

AU - Almeida, Danilo

AU - Silva, Carlos Alberto

AU - Gorgens, Eric B.

AU - Keller, Michael

AU - Valbuena, Ruben

PY - 2022/2/15

Y1 - 2022/2/15

N2 - Current LiDAR-based methods for detecting forest change use a host of statistically selected variables which typically lack a biological link with the characteristics of the ecosystem. Consensus of the literature indicates that many authors use LiDAR to derive ecosystem morphological traits (EMTs)-namely, vegetation height, vegetation cover, and vertical structural complexity-to identify small-scale changes in forest ecosystems. Here, we provide a conceptual, biological model for predicting forest aboveground biomass (AGB) change based on EMTs. We show that through use of a multitemporal dataset it is possible to not only identify losses caused by logging in the period between data collection but also identify regions of regrowth from prior logging using EMTs. This sensitivity to the change in forest dynamics was the criterion by which LiDAR metrics were selected as proxies for each EMT. For vegetation height, results showed that the top-of-canopy height derived from a canopy height model was more sensitive to logging than the average or high percentile of raw LiDAR height distributions. For vegetation cover metrics, lower height thresholds for fractional cover calculations were more sensitive to selective logging and the regeneration of understory. For describing the structural complexity in the vertical profile, the Gini coefficient was found to be superior to foliage height diversity for detecting the dynamics occurring over the years after logging. The subsequent conceptual model for AGB estimation obtained a level of accuracy which was comparable to a model that was statistically optimised for that same area. We argue that a widespread adoption of an EMT-based conceptual approach would improve the transferability and comparability of LiDAR models for AGB worldwide.

AB - Current LiDAR-based methods for detecting forest change use a host of statistically selected variables which typically lack a biological link with the characteristics of the ecosystem. Consensus of the literature indicates that many authors use LiDAR to derive ecosystem morphological traits (EMTs)-namely, vegetation height, vegetation cover, and vertical structural complexity-to identify small-scale changes in forest ecosystems. Here, we provide a conceptual, biological model for predicting forest aboveground biomass (AGB) change based on EMTs. We show that through use of a multitemporal dataset it is possible to not only identify losses caused by logging in the period between data collection but also identify regions of regrowth from prior logging using EMTs. This sensitivity to the change in forest dynamics was the criterion by which LiDAR metrics were selected as proxies for each EMT. For vegetation height, results showed that the top-of-canopy height derived from a canopy height model was more sensitive to logging than the average or high percentile of raw LiDAR height distributions. For vegetation cover metrics, lower height thresholds for fractional cover calculations were more sensitive to selective logging and the regeneration of understory. For describing the structural complexity in the vertical profile, the Gini coefficient was found to be superior to foliage height diversity for detecting the dynamics occurring over the years after logging. The subsequent conceptual model for AGB estimation obtained a level of accuracy which was comparable to a model that was statistically optimised for that same area. We argue that a widespread adoption of an EMT-based conceptual approach would improve the transferability and comparability of LiDAR models for AGB worldwide.

U2 - 10.3390/rs14040933

DO - 10.3390/rs14040933

M3 - Article

VL - 14

JO - Remote Sensing

JF - Remote Sensing

SN - 2072-4292

IS - 4

ER -