Quantification of the Loess Plateau's soil hydrodynamics in relation to bulk density

Ahmed Ehab Talat, Yuchi Chen, Yuan He, Zekang Cai, Jian Wang
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Abstract

Investigating the effects of varying degrees of soil compaction on its hydrodynamic properties is still a vital step in optimizing water utilization. Furthermore, hydrodynamic parameters such as saturated hydraulic conductivity (Ks) and soil water retention characteristics (SWRC) are essential data for soil water and solute transport calculations. However, it takes a lot of time and money to get direct measurements of hydrodynamic properties. The purpose of this study was to measure how the Loess Plateau's SWRC, Ks, and soil pores were affected by five different degrees of bulk density (BD), and quantify interactions between BD, soil organic carbon (SOC), and particle size distribution (PSD) on hydrodynamic parameters using pedotransfer function (PTF). Hydrodynamic parameters were predicted using multiple linear regression (MLR), and the best models were chosen using statistical standards and compared with Rosetta3 models based on predictors % sand, silt, and clay (SSC) and SSC+BD. The results showed that increasing soil BD from 1.00 to 1.40 g cm−3 led to significant reductions in soil saturated water content (SSAT), quickly draining pores (QDP), and Ks. Enhances SOC content and clay from micropores under BD, and low SOC soil suffers pore collapse. MLR model-based (BD+SOC) predicted hydrodynamic parameters, and the models demonstrated that “BD+SOC” is the best combination. MLR-BD+SOC model outperformed (root mean square error [RMSE]: 0.001–0.005; and R2: 0.91–0.98) on Rosetta3 models. The Rosetta3-SSC+BD model improved predictions in low-SOC soils but underperformed in SOC-rich soils. These findings emphasize integrating BD and SOC in PTF for accurate hydrodynamic modeling, particularly in erosion-prone, heterogeneous landscapes.

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黄土高原土壤水动力与容重关系的定量研究
研究不同程度的土壤压实对其水动力特性的影响仍然是优化水分利用的重要步骤。此外,饱和水导率(Ks)和土壤保水特性(SWRC)等水动力参数是土壤水分和溶质运移计算的重要数据。然而,直接测量流体动力特性需要花费大量的时间和金钱。本研究旨在研究5种不同容重(BD)对黄土高原SWRC、Ks和土壤孔隙的影响,并利用土壤传递函数(PTF)量化容重、土壤有机碳(SOC)和粒径分布(PSD)对水动力参数的相互作用。采用多元线性回归(MLR)预测水动力参数,采用统计标准选择最佳模型,并与基于% sand,淤泥,and clay (SSC)和SSC+BD的Rosetta3模型进行比较。结果表明,当土壤BD由1.00 g cm−3增加到1.40 g cm−3时,土壤饱和含水量(SSAT)、快速排水孔隙(QDP)和土壤水分(Ks)显著降低。土壤有机碳含量增加,微孔粘粒增加,低有机碳土壤易发生孔隙塌陷。基于MLR模型(BD+SOC)的水动力参数预测结果表明,“BD+SOC”是最佳组合。MLR-BD+SOC模型优于MLR-BD+SOC模型(均方根误差[RMSE]: 0.001-0.005;R2: 0.91-0.98)。Rosetta3-SSC+BD模型在低碳土壤中的预测效果较好,但在高碳土壤中的预测效果较差。这些发现强调了在PTF中整合BD和SOC以进行精确的水动力学建模,特别是在易侵蚀的异质景观中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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