A method for estimating the bulk density and particle density of granite residual soil based on the construction of pedotransfer functions

IF 2.8 3区 地球科学 Q2 GEOGRAPHY, PHYSICAL
Jianyu Wang, Zhe Lin, Ling He, Jiangxing Wei, Yusong Deng, Xiaoqian Duan
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Abstract

Particle density (ρs) and bulk density (ρb) are key factors in the calculation of total soil porosity. However, direct measurements of ρs and ρb are labour-intensive, time-consuming, and sometimes impractical. Pedotransfer functions (PTFs) provide alternative methods for indirect estimation of ρs and ρb. In this paper, the accuracy of typical 12 ρs and 9 ρb PTFs was evaluated using easily measurable soil properties (sand, silt, clay, and soil organic matter (SOM) content) from granitic residual soils collected from six study areas in subtropical China, and the accuracy of PTFs constructed based on multiple linear stepwise regression (MSR) and machine-learned algorithms (backpropagation neural network, k-nearest neighbour algorithms, random forests, support vector machines, and gradient boosted decision trees) was compared to determine the accuracy of PTFs. The results show that typical PTFs have poor accuracy (R2adjusted < 0.020) and are not applicable to the indirect estimation of ρs and ρb in granitic residual soils. The PTFs constructed by machine learning algorithms all performed better than MSR, with the highest estimation accuracy of the PTFs constructed by the random forest algorithm, with R2adjusted values of 0.923 and 0.933 for the ρs and ρb PTFs, respectively, and root-mean-square error of 0.020 g·cm−3 and 0.023 g·cm−3, respectively. Compared with MSR, the random forest algorithm has greater accuracy and eliminates the restriction of PTFs on predictors, which provides support for understanding the changing rules of ρs and ρb in granite residual soils in subtropical regions, evaluating soil quality and improving soil structure.

一种基于 pedotransfer 函数构建的花岗岩残余土壤容重和颗粒密度估计方法
颗粒密度(ρs)和体积密度(ρb)是计算土壤总孔隙度的关键因素。然而,直接测量 ρs 和 ρb 需要耗费大量人力和时间,有时甚至不切实际。Pedotransfer 函数(PTF)提供了间接估算 ρs 和 ρb 的替代方法。本文利用从中国亚热带六个研究地区采集的花岗岩残积土中易于测量的土壤特性(砂、淤泥、粘土和土壤有机质含量),评估了典型的 12 ρs 和 9 ρb Pedotransfer 函数的准确性、并比较了基于多元线性逐步回归(MSR)和机器学习算法(反向传播神经网络、k-近邻算法、随机森林、支持向量机和梯度提升决策树)构建的 PTF 的准确性,以确定 PTF 的准确性。结果表明,典型的 PTF 准确性较差(R2 调整为 0.020),不适用于花岗岩残积土中 ρs 和 ρb 的间接估算。机器学习算法构建的 PTFs 的性能均优于 MSR,其中随机森林算法构建的 PTFs 的估计精度最高,ρs 和 ρb PTFs 的 R2 调整值分别为 0.923 和 0.933,均方根误差分别为 0.020 g-cm-3 和 0.023 g-cm-3。与MSR相比,随机森林算法具有更高的精度,且消除了PTF对预测因子的限制,为了解亚热带地区花岗岩残积土中ρs和ρb的变化规律、评价土壤质量和改良土壤结构提供了支持。
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来源期刊
Earth Surface Processes and Landforms
Earth Surface Processes and Landforms 地学-地球科学综合
CiteScore
6.40
自引率
12.10%
发文量
215
审稿时长
4 months
期刊介绍: Earth Surface Processes and Landforms is an interdisciplinary international journal concerned with: the interactions between surface processes and landforms and landscapes; that lead to physical, chemical and biological changes; and which in turn create; current landscapes and the geological record of past landscapes. Its focus is core to both physical geographical and geological communities, and also the wider geosciences
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