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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Aboveground Biomass Mapping Using ALOS-2/PALSAR-2 Time-Series Images for Borneo's Forest
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Aboveground Biomass Mapping Using ALOS-2/PALSAR-2 Time-Series Images for Borneo's Forest

机译:使用Alos-2 / Palsar-2时间序列图像的地上生物量映射为婆罗洲的森林

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Global carbon cycle research and climate change mitigation measures require a means for large-scale monitoring of forest aboveground biomass (AGB). L-band synthetic aperture radar (SAR) is one of promising means, although its signal is saturated at 75-150 Mg ha(-1) of AGB, making it difficult to monitor high biomass forest. The Advanced Land Observing Satellite-2/Phased Array L-band SAR-2 (PALSAR-2) conducts ScanSAR mode observations that cover the whole tropical region about nine times a year. We investigated whether such time-series data is effective in overcoming the signal saturation issue. In Borneo, we adopted a spaceborne Light Detection and Ranging (LiDAR) Ice, Cloud, and Land Elevation/Geoscience Laser Altimeter System (GLAS)-derived AGB data for training and validation data, then developed an AGB estimation model using the Random Forest algorithm. As a result, we improved the saturation issue, and estimated the AGB up to 280 Mg ha(-1) with a root mean square error (RMSE) of 62.8 Mg ha(-1). Such an AGB range covers 83% of Borneo's forests. The developed model was applied to create an AGB map of Borneo with a 250-m resolution as of 2016. Total AGB of Borneo was calculated at 12.8 Gt with an average of 173.3 Mg ha(-1). This article showed the PALSAR-2 time-series data to be highly useful in the AGB mapping of high carbon stock forests. However, we needed to correct the difference in observation years between GLAS and PALSAR-2 using a simple biomass growth model, but the accuracy will be improved by using future LiDAR and SAR sensors.
机译:全球碳周期研究和气候变化缓解措施需要对地上森林的大规模监测(AGB)的方法。 L波段合成孔径雷达(SAR)是承诺的意义之一,尽管其信号在AGB的75-150mg HA(-1)饱和,使得难以监测高生物量森林。先进的土地观察卫星-2 /相位阵列L波段SAR-2(PALSAR-2)进行Scansar模式观察,每年覆盖整个热带地区约9次。我们调查了这种时间序列数据是否有效地克服了信号饱和度问题。在婆罗洲,我们采用了星载光检测和测距(LIDAR)冰,云和陆地海拔/地球科学激光高度计系统(GLAS)的AGB数据进行训练和验证数据,然后使用随机森林算法开发了AGB估计模型。结果,我们改善了饱和度问题,并估计了280 mg HA(-1)的AGB,具有62.8mg HA(-1)的根均线误差(RMSE)。这样的AGB系列涵盖了83%的婆罗洲的森林。截至2016年,应用开发的模型以创建婆罗洲的AGB地图,其分辨率为250米。婆罗洲的总AgB在12.8ggt1的12.8gg,平均值173.3mg ha(-1)。本文展示了PALSAR-2时间序列数据,在高碳股票森林的AGB映射中非常有用。然而,我们需要使用简单的生物质生长模型来纠正Glas和Palsar-2之间观察到的差异,但使用未来的激光雷达和SAR传感器将改善精度。

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