Alzahrani Hassan, El-Sorogy Abdelbaset S, Okok Abdurraouf, Shokr Mohamed S
Geology and Geophysics Department, College of Science, King Saud University, P.O. Box 2455, Riyadh 11451, Saudi Arabia.
Earth Sciences and Engineering Department, Missouri University of Science and Technology, McNutt Hall, 1400 N. Bishop Ave, Rolla, MO 65401, USA.
Toxics. 2024 Aug 3;12(8):569. doi: 10.3390/toxics12080569.
Soil contamination is a major issue that endangers the ecology in most countries. Total concentrations of As, Cd, Co, Cr, Cu, Mn, Ni, Pb, VFe, and Zn were determined by analyzing soil samples from 32 surface soil samples in southwest Saudi Arabia, including certain areas of Al-Baha. Kriging techniques were used to create maps of the distribution of metal. To assess the levels of soil contamination in the research area, principal component analysis (PCA), contamination factors (CF), and pollution load index were used. The results show the stable model gave the best fit to the As and Zn semivariograms. The circular model fits the Cd, Co, and Ni semivariograms the best, while the exponential model fits the Cr, V, and Fe semivariograms the best. For Ni and Pb, respectively, spherical and Gaussian models are fitted. The findings demonstrated two clusters containing different soil heavy metal concentrations. According to the data, there were two different pollution levels in the research region: 36.58% of it is strongly contaminated, while 63.41% of it has a moderate level of contamination (with average levels of these metals 5.28 ± 5.83, 0.81 ± 0.19, 18.65 ± 6.22, 45.15 ± 23.25, 60.55 ± 23.74, 972.30 ± 223.50, 33.45 ± 14.11, 10.05 ± 5.13, 84.15 ± 30.72, 97.40 ± 30.05, and 43,245.00 ± 8942.95 mg kg for As, Cd, Co, Cr, Cu, Mn, Ni, Pb, V, Fe, and Zn, respectively). The research area's poor management practices are reflected in the current results, which raised the concentration of harmful elements in the soil's surface layers. Ultimately, the outcomes of pollution concentration and spatial distribution maps could aid in informing decision-makers when creating suitable heavy metal mitigation strategies.
土壤污染是一个在大多数国家都危及生态的重大问题。通过分析沙特阿拉伯西南部(包括巴哈的某些地区)32个表层土壤样本,测定了砷、镉、钴、铬、铜、锰、镍、铅、钒、铁和锌的总浓度。使用克里金技术绘制金属分布地图。为评估研究区域的土壤污染水平,采用了主成分分析(PCA)、污染因子(CF)和污染负荷指数。结果表明,稳定模型对砷和锌的半变异函数拟合效果最佳。圆形模型对镉、钴和镍的半变异函数拟合效果最佳,而指数模型对铬、钒和铁的半变异函数拟合效果最佳。对于镍和铅,分别拟合了球形模型和高斯模型。研究结果表明存在两个包含不同土壤重金属浓度的聚类。根据数据,研究区域存在两种不同的污染水平:36.58%的区域受到严重污染,而63.41%的区域污染程度中等(这些金属的平均浓度分别为砷5.28±5.83、镉0.81±0.19、钴18.65±6.22、铬45.15±23.25、铜60.55±23.74、锰972.30±223.50、镍33.45±14.11、铅10.05±5.13、钒84.15±30.72、铁97.40±30.05以及锌43245.00±8942.95毫克/千克)。研究区域糟糕的管理做法反映在当前结果中,这些做法提高了土壤表层有害元素的浓度。最终,污染浓度和空间分布图的结果有助于为决策者制定合适的重金属缓解策略提供信息。