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首页> 外文期刊>International journal of remote sensing >Volume estimation in a Eucalyptus plantation using multi-source remote sensing and digital terrain data: a case study in Minas Gerais State, Brazil
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Volume estimation in a Eucalyptus plantation using multi-source remote sensing and digital terrain data: a case study in Minas Gerais State, Brazil

机译:利用多源遥感和数字地形数据估算桉树人工林的体积:巴西米纳斯吉拉斯州的案例研究

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In this study, we tested the effectiveness of stand age, multispectral optical imagery obtained from the Landsat 8 Operational Land Imager (OLI), synthetic aperture radar (SAR) data acquired by the Sentinel-1B satellite, and digital terrain attributes extracted from a digital elevation model (DEM), in estimating forest volume in 351 plots in a 1,498 ha Eucalyptus plantation in northern Minas Gerais state, Brazil. A Random Forest (RF) machine learning algorithm was used following the Principal Component Analysis (PCA) of various data combinations, including multispectr al and SAR texture variables and DEM-based geomorphometric derivatives. Using multispectral, SAR or DEM variables alone (i.e. Experiments (ii)-(iv)) did not provide accurate estimates of volume (RMSE (Root Mean Square Error) 32.00 m(3) ha(-1)) compared to predictions based on age since planting of Eucalyptus stands (Experiment (i)). However, when these datasets were individually combined with stand age (i.e. Experiments (v)-(vii)), the RF models resulted in better volume estimates than those obtained when using the individual multispectral, SAR and DEM datasets (RMSE 28.00 m(3) ha(-1)). Furthermore, a model that integrated the selected variables of these data with stand age (Experiment (viii)) improved volume estimation significantly (RMSE = 22.33 m(3) ha(-1)). The large and increasing area of Eucalyptus forest plantations in Brazil and elsewhere suggests that this new approach to volume estimation has the potential to support Eucalyptus plantation monitoring and forest management practices.
机译:在这项研究中,我们测试了林分年龄,从Landsat 8作战陆地成像仪(OLI)获得的多光谱光学图像,Sentinel-1B卫星获得的合成孔径雷达(SAR)数据以及从数字海拔模型(DEM),用于估算巴西米纳斯吉拉斯州北部1,498公顷桉树人工林中351个样地的森林容积。在对各种数据组合进行主成分分析(PCA)之后,使用了随机森林(RF)机器学习算法,包括多光谱和SAR纹理变量以及基于DEM的地貌派生工具。与基于预测的预测相比,仅使用多光谱,SAR或DEM变量(即实验(ii)-(iv))无法提供准确的体积估计值(RMSE(均方根误差)> 32.00 m(3)ha(-1))自种植桉树后的树龄(实验(i))。但是,当这些数据集分别与林分年龄结合使用时(即实验(v)-(vii)),与使用单个多光谱,SAR和DEM数据集(RMSE <28.00 m( 3)ha(-1))。此外,将这些数据的选定变量与林分年龄(实验(viii))集成在一起的模型显着改善了体积估算(RMSE = 22.33 m(3)ha(-1))。巴西和其他地方的桉树人工林面积越来越大,这表明这种新的数量估算方法具有支持桉树人工林监测和森林管理实践的潜力。

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