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首页> 外文期刊>Journal of Applied Remote Sensing >Modeling wetland aboveground biomass in the Poyang Lake National Nature Reserve using machine learning algorithms and Landsat-8 imagery
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Modeling wetland aboveground biomass in the Poyang Lake National Nature Reserve using machine learning algorithms and Landsat-8 imagery

机译:使用机器学习算法和Landsat-8图像在Poyang Lake National Nature Reserve中建模湿地在地上生物量。

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Quantitative estimation of wetland aboveground biomass (AGB) is an essential aspect in evaluating the health and conservation of this valuable ecosystem. We combine AGB field measurements and remote sensing data to establish a suitable model for estimating wetland AGB in the Poyang Lake National Nature Reserve (PLNNR), which is included in the Ramsar Convention's List of Wetlands of International Importance. All field sampling points cover four dominant vegetation communities (Carex cinerascen, Phalaris arundinacea, Artemisia selengensis, and Miscanthus sacchariflorus) in the PLNNR. Wetland AGB is retrieved from the Landsat-8 OLI image. To improve the accuracy of wetland AGB estimation, we compare the performances of three machine learning algorithms, namely, random forest (RF), back-propagation neural network (BPNN), and support vector regression (SVR), with linear regression (LR) in estimating the AGB in the PLNNR. Results are as follows: (1) the RF model with a root-mean-square error of 0.25 kg m(-2) performs better than BPNN (0.29 kg m(-2)), SVR (0.27 kg m(-2)), and LR (0.31 kg m(-2)) in our testing dataset, and AGB density in the PLNNR is between 0 and 1.973 kg m(-2). (2) The four most important features for AGB modeling are near-infrared, short-wave infrared 1 band, enhanced vegetation index, and red band. Our study presents an effective and operational RF model that estimates wetland AGB from Landsat data, providing a scientific basis for floodplain wetland carbon accounting and possible future studies, such as the linkage between wetland AGB and the great water level fluctuations. (C) The Authors.
机译:湿地的定量估计地上生物量(AGB)是评估该有价值生态系统的健康和保护的重要方面。我们将AGB现场测量和遥感数据组合起来建立一个合适的估算Poyang Lake国家自然保护区(PLNNR)的湿地AGB模型,该模型包括在Ramsar公约的国际重视湿地列表中。所有现场采样点涵盖了PLNNR中的四个主要植被社区(Carex Cinerascen,Phalaris arundinacea,Artemisia Selengensis和Miscanthus Sacchariflusus)。从Landsat-8 Oli图像中检索湿地AGB。为了提高湿地AGB估计的准确性,我们将三种机器学习算法的性能进行比较,即随机森林(RF),背部传播神经网络(BPNN)和支持向量回归(SVR),线性回归(LR)估计PLNNR中的AGB。结果如下:(1)具有0.25千克M(-2)的根均方误差的RF模型比BPNN更好(0.29kg m(-2)),SVR(0.27kg m(-2)在我们的测试数据集中,LR(0.31千克M(-2)),PLNNR中的AGB密度在0到1.973 kg m(-2)之间。 (2)AGB建模的四个最重要的特征是近红外,短波红外1频段,增强型植被指数和红频带。我们的研究提出了一项有效和运营的RF模型,估计Landsat数据的湿地AGB,为洪泛区湿地碳核算和可能的未来研究提供了科学依据,例如湿地AGB之间的联系和巨大的水位波动。 (c)作者。

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