Riaz Malik Talha, Riaz Muhammad Tayyib, Rehman Adnanul, Bindajam Ahmed Ali, Mallick Javed, Abdo Hazem Ghassan
Institute of Earth Science, University of Silesia, International Environmental Doctoral School, ul. Będzi´nska 60, Sosnowiec, 41-200, Poland.
Institute of Geology, King Abdullah Campus, University of Azad Jammu & Kashmir, Muzaffarabad, Pakistan.
Sci Rep. 2024 Oct 31;14(1):26186. doi: 10.1038/s41598-024-76607-3.
This study addresses the critical need for effective groundwater (GW) management in Muzaffarabad, Pakistan, amidst challenges posed by rapid urbanization and population growth. By integrating Support Vector Machine (SVM) and Weight of Evidence (WOE) techniques, this study aimed to delineate GW potential zones and assess water quality. This study fills the gap in applying advanced machine learning and geostatistical methods for accurate GW potential mapping. Eight thematic layers based on topography, hydrology, geology, and ecology were utilized to compute the GW potential model. Additionally, water quality analysis was performed on collected samples. The findings indicate that flat and gently sloping terrains, areas with an elevation range of 611 -687 m, and concave slope geometries are associated with higher GW potential. Additionally, proximity to drainage and high-density lineament zones contribute to increased GW potential. The results showed that 31.1% of the area had excellent GW potential according to the WOE model, whereas the SVM model indicated that only 20.3% fell in the excellent potential zone. Results showed that both models performed well in the delineating GW potential zones. Nevertheless, the application of the SVM method is highly recommended which will be benefited in GW resources management related to urban planning. The study also evaluates the spatial distribution of GW quality, with a focus on physical and chemical parameters, including electrical conductivity, pH, turbidity, total dissolved solids, calcium, magnesium, chloride, nitrate, and sulphate. Bacterial contamination assessment reveals that 76% of spring water samples (30 out of 39 samples) are contaminated with E.coli, raising public health concerns. Based on the chemical analysis of GW samples the study identified exceedances of WHO guidelines for calcium in two samples, magnesium in seven samples, sulphate in ten samples, and nitrate levels were below the WHO guideline across all samples. These results highlight localized chemical contamination issues that require targeted remediation efforts to safeguard water quality for public health.
本研究针对巴基斯坦穆扎法拉巴德因快速城市化和人口增长带来的挑战,解决了有效管理地下水(GW)的迫切需求。通过整合支持向量机(SVM)和证据权重(WOE)技术,本研究旨在划定地下水潜力区并评估水质。本研究填补了应用先进机器学习和地统计方法进行精确地下水潜力制图方面的空白。利用基于地形、水文、地质和生态的八个专题图层来计算地下水潜力模型。此外,对采集的样本进行了水质分析。研究结果表明,平坦和缓坡地形、海拔范围在611 - 687米的区域以及凹形坡度几何形状与较高的地下水潜力相关。此外,靠近排水区和高密度线性构造带会增加地下水潜力。结果表明,根据证据权重模型,31.1%的区域具有极佳的地下水潜力,而支持向量机模型表明只有20.3%的区域属于极佳潜力区。结果表明,两个模型在划定地下水潜力区方面都表现良好。尽管如此,强烈推荐应用支持向量机方法,这将有利于与城市规划相关的地下水资源管理。该研究还评估了地下水质量的空间分布,重点关注物理和化学参数,包括电导率、pH值、浊度、总溶解固体、钙、镁、氯、硝酸盐和硫酸盐。细菌污染评估显示,76%的泉水样本(39个样本中的30个)受到大肠杆菌污染,引发了公众对健康的担忧。基于对地下水样本的化学分析,该研究发现两个样本中的钙含量、七个样本中的镁含量、十个样本中的硫酸盐含量超过了世界卫生组织的指导标准,所有样本中的硝酸盐含量均低于世界卫生组织的指导标准。这些结果突出了局部化学污染问题,需要有针对性的修复措施来保障公众健康的水质。