首页> 外文会议>International Conference on Agro-Geoinformatics >Grassland aboveground biomass retrieval from remote sensing data by using artificial neural network in temperate grassland, northern China
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Grassland aboveground biomass retrieval from remote sensing data by using artificial neural network in temperate grassland, northern China

机译:基于人工神经网络的温带草原草地地上生物量遥感反演

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Grassland ecosystem is one of the most important terrestrial ecosystems in China. Grassland aboveground biomass (AGB) is not only the material base for maintaining grassland ecosystem, but also the most direct indicator to reflect grassland status. AGB determines the herbivore carrying capacity in grassland ecosystem. Therefore, it is important significance to retrieve AGB to study the regional carbon cycle and the sustainable use of grassland resources. We selected the temperate grassland as the study area, which was one of the most representative grassland types in China. In this study, we developed artificial neural network (ANN) technique for the retrieval of grassland AGB based on multi-temporal remote sensing, topography and meteorological data in this region. Eight variables (normalized difference vegetation index (NDVI), difference vegetation index (DVI), 2-bands enhanced vegetation index (EVI2), soil adjusted vegetation index (SAVI), modified soil adjusted vegetation index (MSAVI), elevation, growing season precipitation (GSP), and growing season temperature (GST)) were combined as the candidate input variables for establishing ANN model. Five vegetation indices (VIs) were calculated by the Moderate Resolution Imaging Spectroradiometer (MODIS) reflectance data, which represented a 8 day composite with a 250m spatial resolution for the period 2006–2010. GSP and GST was interpolated according to DEM by Anusplin software, included daily precipitation and temperature records during 2006 to 2010 from 35 climate stations distributed around the region. Field samples were obtained from multi-year field survey data, primarily in August from 2006 to 2010. The ANN model included three layers, one input layer, one hidden layer and one output layer. The hidden layer had 3 to 14 neurons and used a basic tansig sigmoid transfer function for each neuron. The networks were trained by the Levenberg-Marquardt algorithm and Bayesian algorithm. The results were showed - s follow: the use of multi-temporal VIs and geological factors had advantages for AGB retrieval with ANN method. The precision of the two algorithms for estimating AGB based on ANN model was more than 63%. Although the retrieval errors remained larger, the predictions were relatively accurate in comparison to previous studies. Furthermore, ANN model based on the Bayesian algorithm was better than on Levenberg-Marquardt algorithm. It had more stable and reliable training process. Since AGB was influenced by elevation, precipitation and temperature factors, ANN could be used to solve complex nonlinear problems. The ANN is well potential application to the retrieval of temporally grassland production from high-dimensional data. This research provides a reference and technical method for grassland AGB estimation by remote sensing.
机译:草原生态系统是中国最重要的陆地生态系统之一。草地地上生物量(AGB)不仅是维持草地生态系统的物质基础,而且是反映草地状况的最直接指标。 AGB决定了草食动物在草原生态系统中的承载能力。因此,检索AGB对研究区域碳循环和草地资源的可持续利用具有重要意义。我们选择温带草原作为研究区域,这是中国最具代表性的草原类型之一。在这项研究中,我们开发了基于该地区多时相遥感,地形和气象数据的人工神经网络(ANN)技术,用于草地AGB的检索。八个变量(归一化差异植被指数(NDVI),差异植被指数(DVI),2波段增强植被指数(EVI2),土壤调整植被指数(SAVI),改良土壤调整植被指数(MSAVI),海拔,生长季节降水) (GSP)和生长期温度(GST)结合在一起作为建立ANN模型的候选输入变量。中分辨率成像光谱仪(MODIS)的反射率数据计算出五个植被指数(VIs),该数据代表了2006-2010年间8天的合成图像,空间分辨率为250m。 GSP和GST是根据Anusplin软件根据DEM进行插值的,其中包括2006年至2010年期间分布在该地区的35个气候站的每日降水和温度记录。现场样本是从多年的现场调查数据中获得的,主要是从2006年8月到2010年8月。人工神经网络模型包括三层,一层输入层,一层隐藏层和一层输出层。隐藏层具有3到14个神经元,并且每个神经元都使用了基本的tansig乙状结肠传递函数。网络由Levenberg-Marquardt算法和贝叶斯算法训练。结果表明-以下内容:多时相VI和地质因素的使用对ANN方法进行AGB检索具有优势。两种基于ANN模型的AGB估计算法的精度均超过63%。尽管检索误差仍然较大,但与以前的研究相比,这些预测是相对准确的。此外,基于贝叶斯算法的人工神经网络模型优于基于Levenberg-Marquardt算法的神经网络模型。它的培训过程更加稳定可靠。由于AGB受海拔,降水和温度因素的影响,因此ANN可用于解决复杂的非线性问题。人工神经网络在从高维数据中检索临时草地生产方面具有很好的应用潜力。该研究为草地AGB遥感估算提供了参考和技术方法。

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