Liu Wei, Du Peijun, Zhao Zhuowen, Zhang Lianpeng
Jiangsu Provincial Key Laboratory of Geographic Information Science and Technology, Nanjing University, Nanjing, People's Republic of China.
School of Geodesy and Geometrics, Jiangsu Normal University, Xuzhou, People's Republic of China.
Sci Rep. 2016 Apr 7;6:23889. doi: 10.1038/srep23889.
The concept of spatial interpolation is important in the soil sciences. However, the use of a single global interpolation model is often limited by certain conditions (e.g., terrain complexity), which leads to distorted interpolation results. Here we present a method of adaptive weighting combined environmental variables for soil properties interpolation (AW-SP) to improve accuracy. Using various environmental variables, AW-SP was used to interpolate soil potassium content in Qinghai Lake Basin. To evaluate AW-SP performance, we compared it with that of inverse distance weighting (IDW), ordinary kriging, and OK combined with different environmental variables. The experimental results showed that the methods combined with environmental variables did not always improve prediction accuracy even if there was a strong correlation between the soil properties and environmental variables. However, compared with IDW, OK, and OK combined with different environmental variables, AW-SP is more stable and has lower mean absolute and root mean square errors. Furthermore, the AW-SP maps provided improved details of soil potassium content and provided clearer boundaries to its spatial distribution. In conclusion, AW-SP can not only reduce prediction errors, it also accounts for the distribution and contributions of environmental variables, making the spatial interpolation of soil potassium content more reasonable.
空间插值的概念在土壤科学中很重要。然而,使用单一的全局插值模型往往受到某些条件(如地形复杂性)的限制,这会导致插值结果失真。在此,我们提出一种结合环境变量的自适应加权土壤属性插值方法(AW-SP)以提高准确性。利用各种环境变量,AW-SP被用于插值青海湖流域的土壤钾含量。为评估AW-SP的性能,我们将其与反距离加权法(IDW)、普通克里金法以及结合不同环境变量的普通克里金法进行了比较。实验结果表明,即使土壤属性与环境变量之间存在很强的相关性,结合环境变量的方法也并非总能提高预测准确性。然而,与IDW、普通克里金法以及结合不同环境变量的普通克里金法相比,AW-SP更稳定,平均绝对误差和均方根误差更低。此外,AW-SP生成的地图提供了更详细的土壤钾含量信息,其空间分布的边界也更清晰。总之,AW-SP不仅能减少预测误差,还能考虑环境变量的分布和贡献,使土壤钾含量的空间插值更合理。