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A comparison of two models with Landsat data for estimating above ground grassland biomass in Inner Mongolia, China

机译:两种利用Landsat数据估算内蒙古地上草地生物量的模型的比较

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Two models, artificial neural network (ANN) and multiple linear regression (MLR), were developed to estimate typical grassland aboveground dry biomass in Xilingol River Basin, Inner Mongolia, China. The normalized difference vegetation index (NDVI) and topographic variables (elevation, aspect, and slope) were combined with atmospherically corrected reflectance from the Landsat ETM+ reflective bands as the candidate input variables for building both models. Seven variables (NDVI, aspect, and bands 1, 3, 4, 5 and 7) were selected by the ANN model (implemented in Statistica 6.0 neural network module), while six (elevation, NDVI, and bands 1, 3,5 and 7) were picked to fit the MLR function after a stepwise analysis was executed between the candidate input variables and the above ground dry biomass. Both models achieved reasonable results with RMSEs ranging from 39.88% to 50.08%. The ANN model provided a more accurate estimation (RMSEr = 39.88% for the training set, and RMSEr = 42.36% for the testing set) than MLR (RMSEr = 49.51 % for the training, and RMSEr = 53.20% for the testing). The final above ground dry biomass maps of the research area were produced based on the ANN and MLR models, generating the estimated mean values of 121 and 147 g/m(2), respectively.
机译:建立了两个模型,分别是人工神经网络(ANN)和多元线性回归(MLR)来估算内蒙古锡林郭勒河流域典型草地地上干生物量。将归一化差异植被指数(NDVI)和地形变量(高程,纵横比和坡度)与Landsat ETM +反射带的大气校正反射率结合起来,作为构建两个模型的候选输入变量。通过ANN模型(在Statistica 6.0神经网络模块中实现)选择了七个变量(NDVI,方面和波段1、3、4、5和7),而六个变量(海拔,NDVI和波段1、3、5和7)则被选中。 7)在候选输入变量和地面干燥生物量之间进行了逐步分析之后,选择适合MLR函数的函数。两种模型均取得了合理的结果,RMSE范围为39.88%至50.08%。与MLR(训练的RMSEr = 49.51%,测试的RMSEr = 53.20%)相比,ANN模型提供了更准确的估计(训练集的RMSEr = 39.88%,测试集的RMSEr = 42.36%)。基于ANN和MLR模型绘制了研究区域的最终地面干燥生物量图,分别得出了121和147 g / m(2)的估计平均值。

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