Distinguishing Abrupt and Gradual Forest Disturbances With MODIS-Based Phenological Anomaly Series

Capturing forest disturbances over time is increasingly important to determine the ecosystem's capacity to recover as well as aiding a timely response of foresters. With changes due to climate change increasing the frequencies, a better understanding of forest disturbances and their role in his...

全面介绍

书目详细资料
发表在:Frontiers in Plant Science
Main Authors: Anne Gnilke, Tanja G. M. Sanders
格式: 文件
语言:英语
出版: Frontiers Media S.A. 2022-05-01
主题:
在线阅读:https://www.frontiersin.org/articles/10.3389/fpls.2022.863116/full
_version_ 1857071599612592128
author Anne Gnilke
Anne Gnilke
Tanja G. M. Sanders
Tanja G. M. Sanders
author_facet Anne Gnilke
Anne Gnilke
Tanja G. M. Sanders
Tanja G. M. Sanders
author_sort Anne Gnilke
collection DOAJ
container_title Frontiers in Plant Science
description Capturing forest disturbances over time is increasingly important to determine the ecosystem's capacity to recover as well as aiding a timely response of foresters. With changes due to climate change increasing the frequencies, a better understanding of forest disturbances and their role in historical development is needed to, on the one hand, develop forest management approaches promoting ecosystem resilience and, on the other hand, provide quick and spatially explicit information to foresters. A large, publicly available satellite imagery spanning more than two decades for large areas of the Earth's surface at varying spatial and temporal resolutions represents a vast, free data source for this. The challenge is 2-fold: (1) obtaining reliable information on forest condition and development from satellite data requires not only quantification of forest loss but rather a differentiated assessment of the extent and severity of forest degradation; (2) standardized and efficient processing routines both are needed to bridge the gap between remote-sensing signals and conventional forest condition parameters to enable forest managers for the operational use of the data. Here, we investigated abiotic and biotic disturbances based on a set of ground validated occurrences in various forest areas across Germany to build disturbance response chronologies and examine event-specific patterns. The proposed workflow is based on the R-package “npphen” for non-parametric vegetation phenology reconstruction and anomaly detection using MODIS EVI time series data. Results show the potential to detect distinct disturbance responses in forest ecosystems and reveal event-specific characteristics. Difficulties still exist for the determination of, e.g., scattered wind throw, due to its subpixel resolution, especially in highly fragmented landscapes and small forest patches. However, the demonstrated method shows potential for operational use as a semi-automatic system to augment terrestrial monitoring in the forestry sector. Combining the more robust EVI and the assessment of the phenological series at a pixel-by-pixel level allows for a changing species cover without false classification as forest loss.
format Article
id doaj-art-cc2dae44e2804a6f8a4bb96d4ef2cafd
institution Directory of Open Access Journals
issn 1664-462X
language English
publishDate 2022-05-01
publisher Frontiers Media S.A.
record_format Article
spelling doaj-art-cc2dae44e2804a6f8a4bb96d4ef2cafd2025-08-19T19:25:28ZengFrontiers Media S.A.Frontiers in Plant Science1664-462X2022-05-011310.3389/fpls.2022.863116863116Distinguishing Abrupt and Gradual Forest Disturbances With MODIS-Based Phenological Anomaly SeriesAnne Gnilke0Anne Gnilke1Tanja G. M. Sanders2Tanja G. M. Sanders3Department of Forest Ecology and Biodiversity, Thünen Institute of Forest Ecosystems, Eberswalde, GermanyDepartment of Disturbance Ecology and Vegetation Dynamics, University of Bayreuth, Bayreuth, GermanyDepartment of Forest Ecology and Biodiversity, Thünen Institute of Forest Ecosystems, Eberswalde, GermanyDepartment of Disturbance Ecology and Vegetation Dynamics, University of Bayreuth, Bayreuth, GermanyCapturing forest disturbances over time is increasingly important to determine the ecosystem's capacity to recover as well as aiding a timely response of foresters. With changes due to climate change increasing the frequencies, a better understanding of forest disturbances and their role in historical development is needed to, on the one hand, develop forest management approaches promoting ecosystem resilience and, on the other hand, provide quick and spatially explicit information to foresters. A large, publicly available satellite imagery spanning more than two decades for large areas of the Earth's surface at varying spatial and temporal resolutions represents a vast, free data source for this. The challenge is 2-fold: (1) obtaining reliable information on forest condition and development from satellite data requires not only quantification of forest loss but rather a differentiated assessment of the extent and severity of forest degradation; (2) standardized and efficient processing routines both are needed to bridge the gap between remote-sensing signals and conventional forest condition parameters to enable forest managers for the operational use of the data. Here, we investigated abiotic and biotic disturbances based on a set of ground validated occurrences in various forest areas across Germany to build disturbance response chronologies and examine event-specific patterns. The proposed workflow is based on the R-package “npphen” for non-parametric vegetation phenology reconstruction and anomaly detection using MODIS EVI time series data. Results show the potential to detect distinct disturbance responses in forest ecosystems and reveal event-specific characteristics. Difficulties still exist for the determination of, e.g., scattered wind throw, due to its subpixel resolution, especially in highly fragmented landscapes and small forest patches. However, the demonstrated method shows potential for operational use as a semi-automatic system to augment terrestrial monitoring in the forestry sector. Combining the more robust EVI and the assessment of the phenological series at a pixel-by-pixel level allows for a changing species cover without false classification as forest loss.https://www.frontiersin.org/articles/10.3389/fpls.2022.863116/fullforest disturbanceMODISground-truthingEVI anomalyphenological series
spellingShingle Anne Gnilke
Anne Gnilke
Tanja G. M. Sanders
Tanja G. M. Sanders
Distinguishing Abrupt and Gradual Forest Disturbances With MODIS-Based Phenological Anomaly Series
forest disturbance
MODIS
ground-truthing
EVI anomaly
phenological series
title Distinguishing Abrupt and Gradual Forest Disturbances With MODIS-Based Phenological Anomaly Series
title_full Distinguishing Abrupt and Gradual Forest Disturbances With MODIS-Based Phenological Anomaly Series
title_fullStr Distinguishing Abrupt and Gradual Forest Disturbances With MODIS-Based Phenological Anomaly Series
title_full_unstemmed Distinguishing Abrupt and Gradual Forest Disturbances With MODIS-Based Phenological Anomaly Series
title_short Distinguishing Abrupt and Gradual Forest Disturbances With MODIS-Based Phenological Anomaly Series
title_sort distinguishing abrupt and gradual forest disturbances with modis based phenological anomaly series
topic forest disturbance
MODIS
ground-truthing
EVI anomaly
phenological series
url https://www.frontiersin.org/articles/10.3389/fpls.2022.863116/full
work_keys_str_mv AT annegnilke distinguishingabruptandgradualforestdisturbanceswithmodisbasedphenologicalanomalyseries
AT annegnilke distinguishingabruptandgradualforestdisturbanceswithmodisbasedphenologicalanomalyseries
AT tanjagmsanders distinguishingabruptandgradualforestdisturbanceswithmodisbasedphenologicalanomalyseries
AT tanjagmsanders distinguishingabruptandgradualforestdisturbanceswithmodisbasedphenologicalanomalyseries