MODIS NDVI time-series allow the monitoring of Eucalyptus plantation biomass

The use of remote sensing is necessary for monitoring forest carbon stocks at large scales. Optical remote sensing, although not the most suitable technique for the direct estimation of stand biomass, offers the advantage of providing large temporal and spatial datasets. In particular, information o...

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Veröffentlicht in:Remote sensing of environment 2011-10, Vol.115 (10), p.2613-2625
Hauptverfasser: le Maire, Guerric, Marsden, Claire, Nouvellon, Yann, Grinand, Clovis, Hakamada, Rodrigo, Stape, José-Luiz, Laclau, Jean-Paul
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container_end_page 2625
container_issue 10
container_start_page 2613
container_title Remote sensing of environment
container_volume 115
creator le Maire, Guerric
Marsden, Claire
Nouvellon, Yann
Grinand, Clovis
Hakamada, Rodrigo
Stape, José-Luiz
Laclau, Jean-Paul
description The use of remote sensing is necessary for monitoring forest carbon stocks at large scales. Optical remote sensing, although not the most suitable technique for the direct estimation of stand biomass, offers the advantage of providing large temporal and spatial datasets. In particular, information on canopy structure is encompassed in stand reflectance time series. This study focused on the example of Eucalyptus forest plantations, which have recently attracted much attention as a result of their high expansion rate in many tropical countries. Stand scale time-series of Normalized Difference Vegetation Index (NDVI) were obtained from MODIS satellite data after a procedure involving un-mixing and interpolation, on about 15,000 ha of plantations in southern Brazil. The comparison of the planting date of the current rotation (and therefore the age of the stands) estimated from these time series with real values provided by the company showed that the root mean square error was 35.5 days. Age alone explained more than 82% of stand wood volume variability and 87% of stand dominant height variability. Age variables were combined with other variables derived from the NDVI time series and simple bioclimatic data by means of linear (Stepwise) or nonlinear (Random Forest) regressions. The nonlinear regressions gave r-square values of 0.90 for volume and 0.92 for dominant height, and an accuracy of about 25 m 3/ha for volume (15% of the volume average value) and about 1.6 m for dominant height (8% of the height average value). The improvement including NDVI and bioclimatic data comes from the fact that the cumulative NDVI since planting date integrates the interannual variability of leaf area index (LAI), light interception by the foliage and growth due for example to variations of seasonal water stress. The accuracy of biomass and height predictions was strongly improved by using the NDVI integrated over the two first years after planting, which are critical for stand establishment. These results open perspectives for cost-effective monitoring of biomass at large scales in intensively-managed plantation forests. ► Estimation of forest plantation biomass using 250 m MODIS NDVI. ► Unmixing of MODIS pixels to get stand-scale NDVI time-series (TS). ► Estimation of stand age through the analysis of the NDVI TS. ► Linear and nonlinear regressions using NDVI TS, age and bioclimatic variables. ► NDVI TS, stand age and bioclimatic variables explain biomass variability.
doi_str_mv 10.1016/j.rse.2011.05.017
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Optical remote sensing, although not the most suitable technique for the direct estimation of stand biomass, offers the advantage of providing large temporal and spatial datasets. In particular, information on canopy structure is encompassed in stand reflectance time series. This study focused on the example of Eucalyptus forest plantations, which have recently attracted much attention as a result of their high expansion rate in many tropical countries. Stand scale time-series of Normalized Difference Vegetation Index (NDVI) were obtained from MODIS satellite data after a procedure involving un-mixing and interpolation, on about 15,000 ha of plantations in southern Brazil. The comparison of the planting date of the current rotation (and therefore the age of the stands) estimated from these time series with real values provided by the company showed that the root mean square error was 35.5 days. Age alone explained more than 82% of stand wood volume variability and 87% of stand dominant height variability. Age variables were combined with other variables derived from the NDVI time series and simple bioclimatic data by means of linear (Stepwise) or nonlinear (Random Forest) regressions. The nonlinear regressions gave r-square values of 0.90 for volume and 0.92 for dominant height, and an accuracy of about 25 m 3/ha for volume (15% of the volume average value) and about 1.6 m for dominant height (8% of the height average value). The improvement including NDVI and bioclimatic data comes from the fact that the cumulative NDVI since planting date integrates the interannual variability of leaf area index (LAI), light interception by the foliage and growth due for example to variations of seasonal water stress. The accuracy of biomass and height predictions was strongly improved by using the NDVI integrated over the two first years after planting, which are critical for stand establishment. These results open perspectives for cost-effective monitoring of biomass at large scales in intensively-managed plantation forests. ► Estimation of forest plantation biomass using 250 m MODIS NDVI. ► Unmixing of MODIS pixels to get stand-scale NDVI time-series (TS). ► Estimation of stand age through the analysis of the NDVI TS. ► Linear and nonlinear regressions using NDVI TS, age and bioclimatic variables. ► NDVI TS, stand age and bioclimatic variables explain biomass variability.</abstract><cop>New York, NY</cop><pub>Elsevier Inc</pub><doi>10.1016/j.rse.2011.05.017</doi><tpages>13</tpages></addata></record>
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source Elsevier ScienceDirect Journals
subjects Aboveground biomass
Animal, plant and microbial ecology
Applied geophysics
Biological and medical sciences
Biomass
Brazil
CBERS
Earth sciences
Earth, ocean, space
Eucalyptus
Exact sciences and technology
Fast-growing plantations
Forest
Forests
Fundamental and applied biological sciences. Psychology
General aspects. Techniques
Internal geophysics
Moderate Resolution Imaging Spectroradiometer
Monitoring
Plantations
Stands
Supports
Teledetection and vegetation maps
Time series
WorldClim
title MODIS NDVI time-series allow the monitoring of Eucalyptus plantation biomass
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