Abstract

The estimation of above-ground biomass (AGB) in boreal forests is of special concern as it constitutes the highest carbon pool in the northern hemisphere. Particularly, monitoring of the forests in the Russian Federation is important as some regions have not been inventoried for many years. This study explores the combination of multi-frequency, multi-polarization, and multi-temporal radar data as one key approach to provide an accurate estimate of forest biomass. The data from L-band Advanced Land Observing Satellite 2 (ALOS-2) Phased Array L-Band Synthetic Aperture Radar 2 (PALSAR-2), together with C-band RADARSAT-2 data, were applied for AGB estimation. Backscatter coefficients from L- and C-band radar were used independently and in combination with a non-parametric model to retrieve AGB data for a boreal forest in Siberia (Krasnoyarskiy Kray). AGB estimation was performed using the random forests machine learning algorithm. The results demonstrated that high estimation accuracies can be achieved at a spatial resolution of 0.25 ha. When the L-band data alone were used for the retrieval, a corrected root-mean-square error (RMSEcor) of 29.4 t ha−1 was calculated. A marginal decrease in RMSEcor was observed when only the filtered L-band backscatter data, without ratio and texture, were used (29.1 t ha−1). The inclusion of the C-band data reduced the over and underestimation; the bias was reduced from 5.5 t ha−1 to 4.7 t ha−1; and a RMSEcor of 30.2 t ha−1 was calculated.

Highlights

  • The importance of forests and above-ground forest biomass (AGB) are manifold

  • A dynamic range of 7 dB and 4 dB was observed for Advanced Land Observing Satellite 2 (ALOS-2) PALSAR-2 and RADARSAT-2 data, respectively

  • We present three examples of the data acquired in fine and ultrafine mode to show the correlation of the synthetic aperture radar (SAR) backscatter with the above-ground biomass (AGB)

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Summary

Introduction

The importance of forests and above-ground forest biomass (AGB) are manifold. On the one hand, they strongly influence climate change as they act as a carbon sink taking part in the global carbon cycle. Above-ground biomass is defined as the amount of all organic matter growing above ground per unit area at a particular time (t ha−1, Mg ha−1 or kg m−2) [1]. It is an essential climate variable [2] that is applied in climate-related global vegetation models [3]. It is crucial to support national efforts in providing accurate and up-to-date AGB estimates This can be achieved by means of e earth observation techniques. The latest results of biomass estimation using optical data (Landsat) showed measures of moderate accuracy, with a relative mean absolute error (rMAE) of approximately 36%, in the boreal zone [10]

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