JOURNAL ARTICLE

Stratified aboveground forest biomass estimation by remote sensing data

Hooman LatifiFabian Ewald FassnachtFlorian HärtigChristian BergerJaime HernándezPatricio CorvalánBarbara Koch

Year: 2015 Journal:   International Journal of Applied Earth Observation and Geoinformation Vol: 38 Pages: 229-241   Publisher: Elsevier BV

Abstract

Remote sensing-assisted estimates of aboveground forest biomass are essential for modeling carbon budgets. It has been suggested that estimates can be improved by building species- or strata-specific biomass models. However, few studies have attempted a systematic analysis of the benefits of such stratification, especially in combination with other factors such as sensor type, statistical prediction method and sampling design of the reference inventory data. We addressed this topic by analyzing the impact of stratifying forest data into three classes (broadleaved, coniferous and mixed forest). We compare predictive accuracy (a) between the strata (b) to a case without stratification for a set of pre-selected predictors from airborne LiDAR and hyperspectral data obtained in a managed mixed forest site in southwestern Germany. We used 5 commonly applied algorithms for biomass predictions on bootstrapped subsamples of the data to obtain cross validated RMSE and r2 diagnostics. Those values were analyzed in a factorial design by an analysis of variance (ANOVA) to rank the relative importance of each factor. Selected models were used for wall-to-wall mapping of biomass estimates and their associated uncertainty. The results revealed marginal advantages for the strata-specific prediction models over the unstratified ones, which were more obvious on the wall-to-wall mapped area-based predictions. Yet further tests are necessary to establish the generality of these results. Input data type and statistical prediction method are concluded to remain the two most crucial factors for the quality of remote sensing-assisted biomass models.

Keywords:
Hyperspectral imaging Biomass (ecology) Environmental science Sampling design Statistics Sampling (signal processing) Data set Mean squared error Stratification (seeds) Remote sensing Lidar Random forest Forest inventory Geography Mathematics Computer science Ecology Forest management Machine learning Agroforestry

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76
Cited By
5.04
FWCI (Field Weighted Citation Impact)
73
Refs
0.96
Citation Normalized Percentile
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Citation History

Topics

Remote Sensing and LiDAR Applications
Physical Sciences →  Environmental Science →  Environmental Engineering
Remote Sensing in Agriculture
Physical Sciences →  Environmental Science →  Ecology
Forest ecology and management
Physical Sciences →  Environmental Science →  Nature and Landscape Conservation

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