首页> 外文期刊>Forest Ecology and Management >Spatial interpolation of in situ data by self-organizing map algorithms (neural networks) for the assessment of carbon stocks in European forests. (Special section: European forest carbon balance as assessed with inventory based methods.)
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Spatial interpolation of in situ data by self-organizing map algorithms (neural networks) for the assessment of carbon stocks in European forests. (Special section: European forest carbon balance as assessed with inventory based methods.)

机译:通过自组织地图算法(神经网络)对原位数据进行空间插值,以评估欧洲森林中的碳储量。 (特别部分:使用基于清单的方法评估的欧洲森林碳平衡。)

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摘要

Self-organizing maps (SOMs) are an advanced neural networks application. SOMs were applied for the spatially explicit estimation of forest carbon stocks for a test region in Thuringia (Germany). The approach utilizes in situ national forest inventory data and satellite remote sensing data (Landsat 7 ETM+) and provides maps showing a high-resolution spatial distribution of forest carbon stocks. The generated maps are compared to alternative estimates obtained by the k-nearest neighbour (kNN) method - a remote sensing based carbon assessment. Beside maps the SOM- and kNN-approaches were utilized to calculate statistical estimates of carbon stock and growing stock. The statistical estimates were validated by calculating bias and mean square errors with reference to in situ assessments. SOM- and kNN-approaches have been tested in a forested region in Central Germany. The results show that SOMs are an approach that has the ability to reproduce the spatial pattern of forest carbon stocks. SOMs are - with some restrictions - comparable to spatially explicit estimates generated by the kNN-method.
机译:自组织映射(SOM)是高级神经网络应用程序。 SOM被用于图林根州(德国)一个测试区域的森林碳储量的空间显式估计。该方法利用了原位国家森林清单数据和卫星遥感数据(Landsat 7 ETM +),并提供了显示森林碳储量高分辨率空间分布的地图。将生成的地图与通过 k -最近邻(kNN)方法(基于遥感的碳评估)获得的替代估算值进行比较。在地图旁边,利用SOM方法和kNN方法来计算碳库和生长库的统计估计。参照现场评估,通过计算偏差和均方误差来验证统计估计值。 SOM和kNN方法已在德国中部的林区进行了测试。结果表明,SOM是一种能够重现森林碳储量空间格局的方法。 SOM在某种程度上与kNN方法生成的空间显式估计具有可比性。

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