县域土壤属性数字制图方法研究

Research on Digital Mapping Method of Soil Attribute in County Area

  • 摘要:
    目的 在县域尺度上,土壤与成土环境关系往往比较复杂,异质性高,本研究旨在解决如何既高效又准确地刻画县域平缓地区土壤的空间变异问题。
    方法 选取仪征市作为研究区,基于420个表层(0 ~ 20 cm)土壤采样点,对比反距离权重、普通克里格、泛克里格、随机森林、随机森林回归克里格五种方法的土壤属性(全氮、全磷、全钾、有机质)空间分布预测效果。
    结果 5种预测方法预测所得4种土壤属性空间分布格局基本一致,精度存在差异。其中,随机森林回归克里格模型在全氮、有机质和全磷的预测中R2均高于其他模型,在全钾预测中,R2高于地统计模型和随机森林模型。
    结论 综合对比多种模型发现,随机森林回归克里格模型无论从精度还是预测结果内容的详细度上,优势都比较明显,推荐作为第三次全国土壤普查各农业区县土壤属性制图模型;4种土壤属性之间存在显著正相关关系。

     

    Abstract:
    Objective At the county level, the relationship between soil and soil forming environment is often complex and highly heterogeneous. How to accurately characterize the spatial variation of soil is a problem that needs to be studied.
    Method This article selected Yizheng City as the research area, and based on 420 surface (0-20 cm) soil sampling points (of which 15% were randomly selected as independent validation points), compared the spatial prediction effects of soil attributes (total nitrogen, total phosphorus, total potassium, organic matter) using five methods: inverse distance weight, ordinary kriging, pan kriging, random forest, and random forest regression kriging.
    Result The spatial distribution pattern of the four soil attributes predicted by 5 methods is basically the same, and the accuracy is different. Among them, the R2 of the random forest regression Krieger model is higher than other models in the prediction of all nitrogen, organic matter and phosphorus. In the prediction of total potassium, R2 is higher than other statistical models and random forest models.
    Conclusion After comparing multiple models comprehensively, it was found that the random forest regression Kriging model has significant advantages in both accuracy and the detail of the predicted results, recommended as a mapping model for various agricultural districts and counties in the Third Soil Survey. There is a significant positive correlation between the four attributes.

     

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