Suhaizan Faris Shazani, Mohd Taib Aizat, Taha Mohd Raihan, Hasbollah Dayang Zulaika Abang, Ibrahim Aniza, Dan Mohd Firdaus Md, Satyanaga Alfrendo
Department of Civil Engineering, Faculty of Engineering & Built Environment, Universiti Kebangsaan Malaysia, Selangor, Malaysia.
Megaconsult Sdn. Bhd. Pusat Bandar Wangsa Maju, Kuala Lumpur, Malaysia.
PLoS One. 2025 Jan 10;20(1):e0316488. doi: 10.1371/journal.pone.0316488. eCollection 2025.
Rainfall-induced landslides are a frequent geohazard for tropical regions with prevalent residual soils and year-round rainy seasons. The water infiltration into unsaturated soil can be analyzed using the soil-water characteristic curve (SWCC) and permeability function which can be used to monitor and predict incoming landslides, showing the necessity of selecting the appropriate model parameter while fitting the SWCC model. This paper presents a set of data from six different sections of the studied slope at varying depths that are used to test the performance of three SWCC models, the van Genuchten-Mualem (vG-M), Fredlund-Xing (F-X) and Gardner (G). The dataset is obtained from field monitoring of the studied slope, over a duration of 6 months. The study discovered that the van Genuchten-Mualem model provided the best estimation based on RMSE and evaluation metric, R2 followed by Fredlund and Xing, and Gardner, however, the difference between them is minor. The R2 obtained varies as the value at the crest with 1.0 m depth has a mean of 0.44, the lowest among the overall data fitted but it also has the best RMSE value with a mean of 0.00473. Whereas the location mid-section at a depth of 1.0 m has the highest R2 with a mean of 0.97, and an average value of RMSE of 0.0145 which is the middle of the group that was fitted. This indicates that R2 measurement for model performance relies highly on the dispersion of the variables collected. The dispersion of the data set is mainly due to the sensors' inability to detect effectively at exceedingly high matric suction and zero matric suction. The investment in improving the equipment's precision will boost reliability and reduce the number of assumptions as the data is collected from the site rather than laboratory testing.
降雨引发的山体滑坡是热带地区常见的地质灾害,这些地区普遍存在残积土且全年多雨。可以使用土壤水分特征曲线(SWCC)和渗透函数来分析水分渗入非饱和土壤的情况,这两者可用于监测和预测即将发生的山体滑坡,这表明在拟合SWCC模型时选择合适的模型参数很有必要。本文展示了来自研究边坡六个不同剖面不同深度的一组数据,这些数据用于测试三种SWCC模型,即van Genuchten-Mualem(vG-M)模型、Fredlund-Xing(F-X)模型和Gardner(G)模型的性能。该数据集是通过对研究边坡进行为期6个月的现场监测获得的。研究发现,基于均方根误差(RMSE)和评估指标R2,van Genuchten-Mualem模型提供了最佳估计,其次是Fredlund和Xing模型,以及Gardner模型,不过它们之间的差异很小。所获得的R2值因位置而异,在深度为1.0米的坡顶处,其平均值为0.44,是所有拟合数据中最低的,但它的RMSE值也是最佳的,平均值为0.00473。而在深度为1.0米的中间位置,R2值最高,平均值为0.97,RMSE平均值为0.0145,在拟合组中处于中间水平。这表明用于评估模型性能的R2测量高度依赖于所收集变量的离散程度。数据集的离散主要是由于传感器在极高基质吸力和零基质吸力下无法有效检测。随着数据是从现场而非实验室测试中收集的,投资改进设备精度将提高可靠性并减少假设数量。