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首页> 外文期刊>ISPRS International Journal of Geo-Information >A Comparative Assessment of Geostatistical, Machine Learning, and Hybrid Approaches for Mapping Topsoil Organic Carbon Content
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A Comparative Assessment of Geostatistical, Machine Learning, and Hybrid Approaches for Mapping Topsoil Organic Carbon Content

机译:地统计学,机器学习和混合方法绘制表土有机碳含量的比较评估

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摘要

Accurate digital soil mapping (DSM) of soil organic carbon (SOC) is still a challenging subject because of its spatial variability and dependency. This study is aimed at comparing six typical methods in three types of DSM techniques for SOC mapping in an area surrounding Changchun in Northeast China. The methods include ordinary kriging (OK) and geographically weighted regression (GWR) from geostatistics, support vector machines for regression (SVR) and artificial neural networks (ANN) from machine learning, and geographically weighted regression kriging (GWRK) and artificial neural networks kriging (ANNK) from hybrid approaches. The hybrid approaches, in particular, integrated the GWR from geostatistics and ANN from machine learning with the estimation of residuals by ordinary kriging, respectively. Environmental variables, including soil properties, climatic, topographic, and remote sensing data, were used for modeling. The mapping results of SOC content from different models were validated by independent testing data based on values of the mean error, root mean squared error and coefficient of determination. The prediction maps depicted spatial variation and patterns of SOC content of the study area. The results showed the accuracy ranking of the compared methods in decreasing order was ANNK, SVR, ANN, GWRK, OK, and GWR. Two-step hybrid approaches performed better than the corresponding individual models, and non-linear models performed better than the linear models. When considering the uncertainty and efficiency, ML and two-step approach are more suitable than geostatistics in regional landscapes with the high heterogeneity. The study concludes that ANNK is a promising approach for mapping SOC content at a local scale.
机译:土壤有机碳(SOC)的精确数字土壤测绘(DSM)仍然是一个具有挑战性的课题,因为它具有空间变异性和依赖性。本研究旨在比较东北长春周边地区三种类型的DSM技术中用于SOC映射的六种典型方法。这些方法包括来自地统计的普通克里格(OK)和地理加权回归(GWR),来自机器学习的回归支持向量机(SVR)和人工神经网络(ANN)以及地理加权回归克里格(GWRK)和人工神经网络克里格(ANNK)。混合方法尤其将来自地统计学的GWR和来自机器学习的ANN分别与通过普通克里金法估计残差进行了集成。使用环境变量(包括土壤属性,气候,地形和遥感数据)进行建模。基于均值误差,均方根误差和确定系数的值,通过独立的测试数据验证了来自不同模型的SOC含量的映射结果。预测图描绘了研究区域的SOC含量的空间变化和模式。结果表明,所比较方法的准确度排名依次为ANNK,SVR,ANN,GWRK,OK和GWR。两步混合方法的性能优于相应的单个模型,而非线性模型的性能则优于线性模型。当考虑不确定性和效率时,ML和两步法比具有高度异质性的区域景观中的地统计学更为合适。该研究得出的结论是,ANNK是一种在本地范围内绘制SOC含量的有前途的方法。

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