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Knowledge-based classification of remote sensing data for the estimation of below- and above-ground organic carbon stocks in riparian forests

机译:基于知识的遥感数据分类,用于估算河岸森林地下和地下有机碳储量

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摘要

Floodplain forests play a crucial role in the storage of organic carbon (Corg). However, modeling of carbon stocks in these dynamic ecosystems remains inherently difficult. Here, we present the spatial estimation of Corg stocks in riparian woody vegetation and soils (to a depth of 1 m) in a Central European floodplain using very high spatial resolution remote sensing data and auxiliary geodata. The research area is the Danube Floodplain National Park in Austria, one of the last remaining wetlands with near-natural vegetation in Central Europe. Different vegetation types within the floodplain show distinct capacities to store Corg. We used remote sensing to distinguish the following vegetation types: meadow, reed bed and hardwood, softwood, and cottonwood forests. Spectral and knowledge-based classification was performed with object-based image analysis. Additional knowledge rules included distances to the river, object area, and slope information. Five different classification schemes based on spectral values and additional knowledge rules were compared and validated. Validation data for the classification accuracy were derived from forest inventories and topographical maps. Overall accuracy for vegetation types was higher for a combination of spectral- and knowledge-based classification than for spectral values alone. While water, reed beds and meadows were clearly detectable, it remained challenging to distinguish the different forest types. The total carbon storage of soils and vegetation was quantified using a Monte Carlo simulation for all classified vegetation types, and the spatial distribution was mapped. The average storage of the study site is 428.9 Mg C ha−1. Despite certain difficulties in vegetation classification this method allows an indirect estimation of Corg stocks in Central European floodplains.
机译:漫滩森林在有机碳(Corg )的存储中起着至关重要的作用。但是,对这些动态生态系统中的碳储量进行建模仍然固有地困难。在这里,我们使用非常高分辨率的遥感数据和辅助地理数据,对中欧泛滥平原河岸木质植被和土壤(深度为1 m)中Corg 种群的空间估计。研究区域是奥地利的多瑙河洪泛区国家公园,这是中欧地区最后剩下的近乎自然植被的湿地之一。漫滩中不同的植被类型显示出不同的储存Corg的能力。我们使用遥感技术来区分以下植被类型:草甸,芦苇床和硬木,软木和杨木森林。光谱和基于知识的分类是通过基于对象的图像分析进行的。其他知识规则包括到河的距离,目标区域和坡度信息。比较并验证了基于光谱值和其他知识规则的五种不同分类方案。分类准确度的验证数据来自森林清单和地形图。基于光谱和知识的分类相结合的植被类型的总体准确度要高于单独的光谱值。尽管可以清楚地检测到水,芦苇床和草地,但要区分不同的森林类型仍然具有挑战性。对于所有分类的植被类型,使用蒙特卡洛模拟对土壤和植被的总碳储量进行了量化,并绘制了空间分布图。研究地点的平均存储量为428.9 Mg C ha-1 。尽管在植被分类方面存在一定困难,但该方法仍可以间接估算中欧洪泛区的Corg 种群。

著录项

  • 来源
    《Wetlands Ecology and Management》 |2012年第2期|151-163|共13页
  • 作者单位

    Department of Geoinformation in Environmental Planning Berlin Institute of Technology Office EB 5 Straße des 17. Juni 145 10623 Berlin Germany;

    Department of Geoinformation in Environmental Planning Berlin Institute of Technology Office EB 5 Straße des 17. Juni 145 10623 Berlin Germany;

    Department of Ecology Ecosystem Science/Plant Ecology Berlin Institute of Technology Berlin Germany;

    Department of Soil Science Berlin Institute of Technology Berlin Germany;

    Department of Geoinformation in Environmental Planning Berlin Institute of Technology Office EB 5 Straße des 17. Juni 145 10623 Berlin Germany;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Carbon; Floodplain; Riparian vegetation; Fuzzy logic; Ikonos; OBIA;

    机译:碳;洪泛区;河岸植被;模糊逻辑;Ikonos;OBIA;

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