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Remote estimation of soil organic matter content in the Sanjiang Plain, Northest China: The optimal band algorithm versus the GRA-ANN model

机译:东北三江平原土壤有机质含量的远程估算:最优谱带算法与GRA-ANN模型的比较

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Soil organic matter content (SOMC) is an important factor that reflects soil fertility, land production capacity, and the degree of soil degradation. The objectives of this study were to (i) test various regression models for estimating SOMC based on published spectral parameters in the Sanjiang Plain, (ii) develop optimal band difference, ratio, and normalized difference algorithms for assessing SOMC using spectral data, and (iii) compare the performance of the proposed models using grey relational analysis-artificial neural networks (GRA-ANN) and the band difference algorithm. The SOMC data and concurrent spectral parameters were acquired in the Sanjiang Plain of Northest China in 2006. For the GRA-ANN model, GRA was used to select the sensitive spectral parameters and ANN was established to estimate SOMC. The results showed that reflectance (R) gradually decreased with increasing SOMC and the regression equations based on the spectral parameter 1/R-588, Diff (1/R-535), R-610, R-554, R-550, and R-520 could be used to estimate SOMC, respectively. The SOMC model based on the optimal difference index (ODI; R-2= 0.63 and RMSE= 1.43%) outperformed those based on the optimal ratio vegetation index (ORVI; R-2=0.48 and RMSE = 1.82%) and normalized difference vegetation index (ONDVI, R-2 = 0.57 and RMSE= 1.56%). The GRA-ANN model presented better SOMC estimation results (R-2 = 0.90 and RMSE = 0.88%). Thus, the GRA-ANN model has great potential for SOMC estimations; however, the ODI also has merit, especially when taking into consideration the simplicity of its application. Combining different algorithms may improve SOMC estimations on a regional scale. (C) 2015 Elsevier B.V. All rights reserved.
机译:土壤有机质含量(SOMC)是反映土壤肥力,土地生产能力和土壤退化程度的重要因素。这项研究的目的是(i)根据三江平原已发布的光谱参数测试各种估计SOMC的回归模型,(ii)开发最佳谱带差异,比率和归一化差异算法以使用光谱数据评估SOMC,以及( iii)使用灰色关联分析-人工神经网络(GRA-ANN)和带差算法比较所提出模型的性能。 2006年在中国东北三江平原获得了SOMC数据和同时存在的光谱参数。对于GRA-ANN模型,使用GRA选择敏感光谱参数,并建立了ANN来估计SOMC。结果表明,反射率(R)随着SOMC的增加和基于光谱参数1 / R-588,Diff(1 / R-535),R-610,R-554,R-550和R-520可以分别用于估计SOMC。基于最佳差异指数(ODI; R-2 = 0.63和RMSE = 1.43%)的SOMC模型优于基于最佳比率植被指数(ORVI; R-2 = 0.48和RMSE = 1.82%)和归一化差异植被的模型指数(ONDVI,R-2 = 0.57,RMSE = 1.56%)。 GRA-ANN模型提供了更好的SOMC估计结果(R-2 = 0.90和RMSE = 0.88%)。因此,GRA-ANN模型具有SOMC估计的巨大潜力。但是,ODI也有其优点,特别是考虑到其应用的简单性时。组合不同的算法可以改善区域范围内的SOMC估计。 (C)2015 Elsevier B.V.保留所有权利。

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