Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland Ecosystem

The response of an ecosystem to external drivers may not always be gradual and reversible. Discontinuous and sometimes irreversible changes, called ‘regime shifts’ or ‘critical transitions’, can occur. The likelihood of such shifts is expected to increase for a variety of ecosystems, and it is diffi...

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Main Authors: Sara Alibakhshi, Thomas A. Groen, Miina Rautiainen, Babak Naimi
Format: Article
Language:English
Published: MDPI AG 2017-04-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/9/4/352
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spelling doaj-9b77982a6e834a40bf54e8703b9d1c682020-11-24T23:16:51ZengMDPI AGRemote Sensing2072-42922017-04-019435210.3390/rs9040352rs9040352Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland EcosystemSara Alibakhshi0Thomas A. Groen1Miina Rautiainen2Babak Naimi3Department of Built Environment, School of Engineering, Aalto University, P.O. Box 14100, 00076 Espoo, FinlandFaculty of Geo-Information Science and Earth Observation (ITC), University of Twente, P.O. Box 217, 7500 AE Enschede, The NetherlandsDepartment of Built Environment, School of Engineering, Aalto University, P.O. Box 14100, 00076 Espoo, FinlandCenter for Macroecology, Evolution and Climate (CMEC), Natural History Museum of Denmark, University of Copenhagen, Universitetparken 15, DK-2100 Copenhagen, DenmarkThe response of an ecosystem to external drivers may not always be gradual and reversible. Discontinuous and sometimes irreversible changes, called ‘regime shifts’ or ‘critical transitions’, can occur. The likelihood of such shifts is expected to increase for a variety of ecosystems, and it is difficult to predict how close an ecosystem is to a critical transition. Recent modelling studies identified indicators of impending regime shifts that can be used to provide early warning signals of a critical transition. The identification of such transitions crucially depends on the ability to monitor key ecosystem variables, and their success may be limited by lack of appropriate data. Moreover, empirical demonstrations of the actual functioning of these indicators in real-world ecosystems are rare. This paper presents the first study which uses remote sensing data to identify a critical transition in a wetland ecosystem. In this study, we argue that a time series of remote sensing data can help to characterize and determine the timing of a critical transition. This can enhance our abilities to detect and anticipate them. We explored the potentials of remotely sensed vegetation (NDVI), water (MNDWI), and vegetation-water (VWR) indices, obtained from time series of MODIS satellite images to characterize the stability of a wetland ecosystem, Dorge Sangi, near the lake Urmia, Iran, that experienced a regime shift recently. In addition, as a control case, we applied the same methods to another wetland ecosystem in Lake Arpi, Armenia which did not experience a regime shift. We propose a new composite index (MVWR) based on combining vegetation and water indices, which can improve the ability to anticipate a critical transition in a wetland ecosystem. Our results revealed that MVWR in combination with autocorrelation at-lag-1 could successfully provide early warning signals for a critical transition in a wetland ecosystem, and showed a significantly improved performance compared to either vegetation (NDVI) or water (MNDWI) indices alone.http://www.mdpi.com/2072-4292/9/4/352critical transitionsearly warning signalsresiliencetime seriesmodified vegetation water indexspectral indexwetlandMNDWI
collection DOAJ
language English
format Article
sources DOAJ
author Sara Alibakhshi
Thomas A. Groen
Miina Rautiainen
Babak Naimi
spellingShingle Sara Alibakhshi
Thomas A. Groen
Miina Rautiainen
Babak Naimi
Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland Ecosystem
Remote Sensing
critical transitions
early warning signals
resilience
time series
modified vegetation water index
spectral index
wetland
MNDWI
author_facet Sara Alibakhshi
Thomas A. Groen
Miina Rautiainen
Babak Naimi
author_sort Sara Alibakhshi
title Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland Ecosystem
title_short Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland Ecosystem
title_full Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland Ecosystem
title_fullStr Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland Ecosystem
title_full_unstemmed Remotely-Sensed Early Warning Signals of a Critical Transition in a Wetland Ecosystem
title_sort remotely-sensed early warning signals of a critical transition in a wetland ecosystem
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2017-04-01
description The response of an ecosystem to external drivers may not always be gradual and reversible. Discontinuous and sometimes irreversible changes, called ‘regime shifts’ or ‘critical transitions’, can occur. The likelihood of such shifts is expected to increase for a variety of ecosystems, and it is difficult to predict how close an ecosystem is to a critical transition. Recent modelling studies identified indicators of impending regime shifts that can be used to provide early warning signals of a critical transition. The identification of such transitions crucially depends on the ability to monitor key ecosystem variables, and their success may be limited by lack of appropriate data. Moreover, empirical demonstrations of the actual functioning of these indicators in real-world ecosystems are rare. This paper presents the first study which uses remote sensing data to identify a critical transition in a wetland ecosystem. In this study, we argue that a time series of remote sensing data can help to characterize and determine the timing of a critical transition. This can enhance our abilities to detect and anticipate them. We explored the potentials of remotely sensed vegetation (NDVI), water (MNDWI), and vegetation-water (VWR) indices, obtained from time series of MODIS satellite images to characterize the stability of a wetland ecosystem, Dorge Sangi, near the lake Urmia, Iran, that experienced a regime shift recently. In addition, as a control case, we applied the same methods to another wetland ecosystem in Lake Arpi, Armenia which did not experience a regime shift. We propose a new composite index (MVWR) based on combining vegetation and water indices, which can improve the ability to anticipate a critical transition in a wetland ecosystem. Our results revealed that MVWR in combination with autocorrelation at-lag-1 could successfully provide early warning signals for a critical transition in a wetland ecosystem, and showed a significantly improved performance compared to either vegetation (NDVI) or water (MNDWI) indices alone.
topic critical transitions
early warning signals
resilience
time series
modified vegetation water index
spectral index
wetland
MNDWI
url http://www.mdpi.com/2072-4292/9/4/352
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