李艾雯1, 李文丹1,宋靓颖1,冉敏1,陈丹1,成金礼1,齐浩然1,郭聪慧1,李启权1[?]
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四川农业大学资源学院

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S153.6??? ????

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四川省自然科学基金 (No. 2022NSFSC0104)


Filling Method of Cropland Topsoil Missing Bulk Data in The Sichuan Basin
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College of Resources, Sichuan Agricultural University

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    摘要:

    构建土壤容重高精度预测方法是准确补全区域土壤属性数据库的需要。本研究基于全国第二次土壤普查时获得的2883个典型样点数据,运用相关分析、方差分析和回归分析等方法揭示四川盆地耕地表层土壤容重的统计特征及其主控因素,采用传统土壤传递函数(PTFs)、多元线性回归(MLR)模型、径向基函数神经网络(RBFNN)模型和随机森林(RF)模型通过不分区、分流域以及分土类3种建模方式建立土壤容重预测模型,以期实现对该区域土壤容重缺失值的填补。结果表明:研究区耕地表层土壤容重处于0.60 ~ 1.71 g·cm-3之间,均值为1.29 (±0.00 s.e.) g·cm-3。土壤有机质、土壤亚类和降雨量是土壤容重最重要的影响因素。分流域构建的RBFNN预测模型能较好地捕捉土壤容重与各影响因素的非线性关系以及这种关系的空间非平稳性,432个独立验证样点预测结果的决定系数(R2)和均方根误差(RMSE)分别为0.519和0.095 g·cm-3,明显优于其他方法。因此,分流域构建的RBFNN预测模型有助于提高四川盆地耕地表层土壤容重缺失值的填补精度,同时也为其他区域土壤性质缺失值的填补提供了方法参考。

    Abstract:

    【Objective】This study aimed to construct a high precision prediction method for soil bulk density to accurately complete the regional soil attribute database.【Method】Based on the data of 2,883 typical cropland samples in the Sichuan Basin (including Sichuan Province and Chongqing Municipality) obtained during the second national soil census, this study used correlation analysis, variance analysis, and regression analysis to reveal the statistical characteristics and main controlling factors of the cropland topsoil bulk density in the Sichuan Basin. The traditional pedotransfer functions (PTFs), multiple linear regression (MLR) models, radial basis function neural network (RBFNN) model, and random forest (RF) models were used to establish a soil bulk density prediction model through three modeling methods: whole region, by river basin and by soil type, to fill the missing value of soil bulk density.【Result】The results show that the cropland topsoil bulk density in the study area ranged from 0.60 to 1.71 g·cm-3, with a mean value of 1.29 g·cm-3. Soil organic matter, soil subgroup, and rainfall in summer were the most important factors influencing bulk density. The RBFNN model constructed by the river basin can better capture the nonlinear relationship between soil bulk density and the influencing factors and the spatial non-stationarity of this relationship. The coefficient of determination (R2) and root mean square error (RMSE) of the 432 independent validation samples were 0.519 and 0.095 g·cm-3, respectively, which were significantly better than those of other methods.【Conclusion】Therefore, the RBFNN prediction model constructed in sub-basin is helpful to improve the imputation accuracy of the missing values of topsoil bulk density in the Sichuan Basin, and also provides a method reference for the imputation of missing values of soil properties in other regions.

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李艾雯,李文丹,宋靓颖,冉敏,陈丹,成金礼,齐浩然,郭聪慧,李启权.李艾雯1, 李文丹1,宋靓颖1,冉敏1,陈丹1,成金礼1,齐浩然1,郭聪慧1,李启权1[?][J].土壤学报,,[待发表]
liaiwen, Liwendan, songliangying, ranmin, chendan, chengjinli, qihaoran, guoconghui, liqiquan. Filling Method of Cropland Topsoil Missing Bulk Data in The Sichuan Basin[J]. Acta Pedologica Sinica,,[In Press]

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  • 收稿日期:2023-11-27
  • 最后修改日期:2024-03-21
  • 录用日期:2024-05-13
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