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Trend-cycles of vegetation dynamics as a tool for land degradation assessment and monitoring
•Land degradation assessment and monitoring tools are highly demanded to better support intervention programs.•A rigorous and systematic approach to addressing complex dynamics of land degradation is still missing.•NDVI trends are used as proxies for land degradation, but explain a low proportion of...
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Published in: | Ecological indicators 2019-12, Vol.107, p.105545, Article 105545 |
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Main Authors: | , , , , , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites Items that cite this one |
Online Access: | Get full text |
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Summary: | •Land degradation assessment and monitoring tools are highly demanded to better support intervention programs.•A rigorous and systematic approach to addressing complex dynamics of land degradation is still missing.•NDVI trends are used as proxies for land degradation, but explain a low proportion of temporal variability.•We propose NDVI trend-cycle as an indicator that integrates trends and medium-term cycles.•Trend-cycle has potential as a tool to monitor land dynamics and progress towards land degradation neutrality.
The use of time series of Normalized Difference Vegetation Index (NDVI), obtained from satellite sensors has become frequent in studies for land degradation assessment and monitoring. Linear trends of NDVI are usually considered as indicators of vegetation dynamics and widely used as proxies for land degradation. Yet, long-term trends of NDVI often exhibit unidirectional (monotonic) but also cyclic (non-monotonic) dynamics, including mid-term oscillations, both of which are poorly captured by linear trends. Trend-cycle is a time series analysis that represents a smoothed version of a seasonally adjusted time series, which provides information on long-term movements while including changes in direction underlying the series. We assessed NDVI trend-cycles in Patagonia (Argentina) as proxies for land dynamics, integrating trend and medium-term cycles (>4 years). We used MODIS images between years 2000 and mid-2018; trend-cycles were analysed using the Basis Pursuit method. We observed that trend-cycles explained a significant portion of total temporal variability (reaching almost 20%), from which most patterns were explained by non-monotonic behaviour. We identified five major patterns in vegetation dynamics: decreasing (0.1% of area), increasing (0.6%), recovery (48.8%), relapsing (36.8%) and no trend-cycle (13.8%). Contrary to what is generally seen in the literature, monotonic patterns and particularly decreasing trend-cycles were marginally recorded in the last 18 years of NDVI records in Patagonia. Instead, the greater proportion of the area was classified as initial or advanced recovery and initial relapsing patterns, which refer to phases of a cyclic behaviour. We call for the need to revisit the conceptualization of land degradation assessment by means of remote sensing, and to critically review the ability of linear trends to reflect vegetation dynamics. Finally, we discuss the potential use of trend-cycle as a tool to monitor land dyn |
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ISSN: | 1470-160X 1872-7034 |
DOI: | 10.1016/j.ecolind.2019.105545 |