首页> 外文期刊>Journal of arid environments >Mapping stand volumes of Pinus halepensis Mill in a semi-arid region using satellite imagery of the Senalba Chergui forest in north-central Algeria
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Mapping stand volumes of Pinus halepensis Mill in a semi-arid region using satellite imagery of the Senalba Chergui forest in north-central Algeria

机译:使用阿尔及利亚中北部的Senalba Chergui森林的卫星图像绘制半干旱地区的Halusensis松林分林体积

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摘要

we developed an approach using remote sensing and modeling, applicable to Algerian forest inventory, for estimating the volume of timber in Aleppo pine stands. We used ordinary linear regression (OLR) and reduced major axis (RMA) regression to assess an operational model to map stand volume from satellite images. Our analysis was supported by measurements from 151 sample plots and spectral values from remote sensing imagery. Fifteen candidate models were tested through the Akaike Information Criterion to assess their predictive power. For the 2009 Landsat TM image, we found that the best models for both regression methods used the NDVI as the independent variable. The RMSEs were 20.3% (16.10 m~3 ha~(-1)) and 22.5% (17.83 m~3 ha~(-1)), respectively, for OLR and RMA. We chose the RMA regression models because they had realistic standard deviation values for the estimated volumes, and they gave lower RMSEs in volume classes over 40 m~3 ha~(-1). Our method gave similar results for two other images, which demonstrated that our approach was robust when applied to data from a different year (2006 Landsat TM), but from the same sensor, and also to data from a different sensor (2005 Alsat-1).
机译:我们开发了一种适用于阿尔及利亚森林资源的遥感和建模方法,用于估算阿勒颇松林中的木材量。我们使用普通线性回归(OLR)和简化主轴(RMA)回归来评估一种操作模型,以根据卫星图像绘制林分体积。 151个样地的测量值和遥感影像的光谱值为我们的分析提供了支持。通过Akaike信息准则测试了15个候选模型,以评估其预测能力。对于2009年Landsat TM影像,我们发现两种回归方法的最佳模型都使用NDVI作为自变量。对于OLR和RMA,RMSE分别为20.3%(16.10 m〜3 ha〜(-1))和22.5%(17.83 m〜3 ha〜(-1))。我们选择RMA回归模型是因为它们具有估计体积的现实标准偏差值,并且在40 m〜3 ha〜(-1)的体积类别中给出的RMSE较低。对于其他两张图像,我们的方法也得到了相似的结果,这表明当将其应用于来自不同年份(2006 Landsat TM)但来自同一传感器的数据以及来自不同传感器(2005 Alsat-1)的数据时,我们的方法是可靠的。 )。

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