Study on the Factors Affecting the Humus Horizon Thickness in the Black Soil Region of Liaoning Province, China

Agronomy Pub Date : 2024-09-15 DOI:10.3390/agronomy14092106
Ying-Ying Jiang, Jia-Yi Tang, Zhong-Xiu Sun
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Abstract

Understanding the spatial variability and driving mechanisms of humus horizon thickness (HHT) degradation is crucial for effective soil degradation prevention in black soil regions. The study compared ordinary kriging interpolation (OK), inverse distance weighted interpolation (IDW), and regression kriging interpolation (RK) using mean error (ME), mean absolute error (MAE), root mean square error (RMSE), and relative RMSE to select the most accurate model. Environmental variables were then integrated to predict HHT characteristics. Results indicate that: (1) RK was superior to OK and IDW in characterizing HHT with the smallest ME (11.45), RMSE (14.98), MAE (11.45), and RRMSE (0.44). (2) The average annual temperature (0.29), precipitation (0.27), and digital elevation model (DEM) (0.21) were the primary factors influencing the spatial variability of HHT. (3) The HHT exhibited notable variability, with an increasing trend from the southeast towards the central and northern directions, being the thinnest in the southeast. It was thicker in the northeast and southwest regions, thicker but less dense along the southern Bohai coast, thicker yet sporadically distributed in the northwest (especially Chaoyang and Fuxin), and thick with aggregated distribution over a smaller area in the northeastern direction (e.g., Tieling). These findings provide a scientific basis for accurate soil management in Liaoning Province.
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中国辽宁省黑土区腐殖质层厚度影响因素研究
了解腐殖质层厚度(HHT)退化的空间变异性和驱动机制对于有效防止黑土区土壤退化至关重要。研究使用平均误差 (ME)、平均绝对误差 (MAE)、均方根误差 (RMSE) 和相对均方根误差 (RMSE) 比较了普通克里金插值 (OK)、反距离加权插值 (IDW) 和回归克里金插值 (RK),以选择最准确的模型。然后对环境变量进行整合,以预测 HHT 特征。结果表明(1) RK 在描述 HHT 特征方面优于 OK 和 IDW,其 ME(11.45)、RMSE(14.98)、MAE(11.45)和 RRMSE(0.44)最小。(2)年平均气温(0.29)、降水量(0.27)和数字高程模型(DEM)(0.21)是影响高海拔山区空间变异性的主要因素。(3) 高海拔地区表现出明显的多变性,从东南部向中部和北部方向呈上升趋势,东南部最薄。东北和西南地区较厚,渤海南部沿岸较厚但密度较低,西北方向(特别是朝阳和阜新)较厚但零星分布,东北方向(如铁岭)较厚但聚集分布面积较小。这些发现为辽宁省土壤的精确管理提供了科学依据。
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