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Prediction of Soil Organic Matter Using Ordinary Kriging Combined With the Clustering of Self-organizing Map: A Case Study in Pinggu District, Beijing, China

机译:使用普通克里格与自组织地图聚类的土壤有机质预测 - 以北京市平谷区的案例研究

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摘要

Accurate prediction of organic matter distribution in soil is critical to sustainable soil management. Although correlated factors have been used to improve the accuracy of soil organic matter prediction, very few studies have considered the nonlinear relationships between these correlated factors and soil organic matter. The objective of this study was to use the clustering of self-organizing maps to describe the nonlinear relationships between soil organic matter and correlated factors and then examine whether ordinary kriging combined with the clustering of self-organizing maps (KCSOM) can improve prediction accuracy. The performance of the model in the Pinggu district of Beijing was compared with four interpolators: ordinary kriging, ordinary kriging combined with soil texture, ordinary kriging combined with soil type map delineation, and ordinary kriging combined with land use. Results showed that KCSOM accounted for the nonlinear relationships between soil organic matter and the correlated factors and was the only technique that effectively avoided underestimation of the higher values and overestimation of the lower values of the interpolation surface. Moreover, the spatial variation of soil organic matter for different clusters of an entire map was more accurate than spatial variation generated by ordinary kriging. The mean error, root mean squared error, and relative improvement for KCSOM were 0.004, 2.01, and 30.92%, respectively. The estimation imprecision of KCSOM was decreased by 77.04%. These results indicate that prediction accuracy was greater with KCSOM than with any of the other methods and that the proposed technique can serve as an effective method for prediction of soil organic matter.
机译:对土壤中有机物质分布的准确预测对可持续土壤管理至关重要。虽然相关因素已被用于提高土壤有机质预测的准确性,但很少有研究考虑了这些相关因子和土壤有机物之间的非线性关系。本研究的目的是利用自组织地图的聚类来描述土壤有机物和相关因子之间的非线性关系,然后检查普通克里格是否与自组织地图(KCSOM)的聚类结合可以提高预测精度。北京平谷区模型的表现与四个内置者:普通克里格,普通克里格合并土壤纹理,普通克里格与土壤类型地图描绘,普通克里格联合土地使用。结果表明,KCSOM占土壤有机物与相关因子之间的非线性关系,并且是有效避免低估了较高值的唯一能力和估计内插表面的较低值的技术。此外,整个地图的不同簇的土壤有机物质的空间变化比普通克里格引起的空间变化更准确。平均误差,均方方误差和KCSOM的相对改善分别为0.004,2.01和30.92%。 KCSOM的估算不精确减少77.04%。这些结果表明,KCSOM的预测精度比与其他方法中的任何一种更大,并且所提出的技术可以作为预测土壤有机物的有效方法。

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