Implications of seasonal variations of hydrogeochemical analysis using GIS, WQI, and statistical analysis method for the semi-arid region

IF 5.7 3区 环境科学与生态学 Q1 WATER RESOURCES
Chaitanya Baliram Pande, Ababe D. Tolche, Johnbosco C. Egbueri, Lariyah Mohd Sidek, Raj Singh, Arun Pratap Mishra, Johnson C. Agbasi, Samyah Salem Refadah, Fahad Alshehri, Mohd Yawar Ali Khan, Miklas Scholz, Saad Sh. Sammen
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引用次数: 0

Abstract

Groundwater quality assessment is crucial for sustainable water resource management in Maharashtra, India, where groundwater helps for main water sources for irrigation, domestic, and industrial sectors. Despite numerous studies on regional groundwater quality, there remains a lack of integrated research combining hydrogeochemical analyses with advanced spatial and statistical techniques. This study addresses this gap by developing a comprehensive groundwater quality assessment framework that uniquely integrates hydrogeochemical analyses, geographic information system (GIS) techniques, water quality index (WQI), and multivariate statistical approaches in the Morna River Basin. A total of 82 water samples were analyzed for physicochemical parameters in the pre-monsoon (PRMS) and post-monsoon (POMS) seasons. The WQI analysis revealed that 46.15% of samples exhibited excellent water quality, while 48.72% showed good quality during both seasons, though a notable quality decrease was observed during the POMS. Correlation analysis identified significant positive associations (p < 0.05) between key parameters, including Mg-TH, EC-pH, and Ca2+-TH. Principal component analysis identified six components explaining 75.534% of total variance in PRMS, with the first component contributing 17.437%. In POMS, five components explained 70.963% of variance, with the first component contributing 20.653%. Factor analysis revealed that mineral dissolution, agricultural activities, and anthropogenic inputs were the primary factors influencing the water chemistry. The spatial distribution maps generated through GIS analysis identified hotspots of contamination. This integrated approach provided a robust framework for understanding the complex interactions between natural and anthropogenic factors impact on the groundwater quality. The results suggest regural monitoring of water quality and an identified hotspots and implementation of rules and regulations on the agricultural practices and waste disposal. This research contributes to support of groundwater management strategies and provides a methodological framework appropriate to similar hydrogeological settings in other area or worldwide.

GIS、WQI和统计分析方法对半干旱区水文地球化学季节变化的影响
地下水质量评估对于印度马哈拉施特拉邦的可持续水资源管理至关重要,在那里地下水是灌溉、家庭和工业部门的主要水源。尽管对区域地下水水质进行了大量研究,但仍缺乏将水文地球化学分析与先进的空间和统计技术相结合的综合研究。本研究通过开发一个综合的地下水质量评估框架来解决这一空白,该框架独特地集成了水文地球化学分析、地理信息系统(GIS)技术、水质指数(WQI)和莫纳河流域的多元统计方法。对82份水样在季风前(PRMS)和季风后(POMS)季节进行了理化参数分析。WQI分析结果显示,在两个季节,46.15%的样品水质优良,48.72%的样品水质良好,但在POMS期间水质明显下降。相关分析发现,Mg-TH、EC-pH和Ca2+-TH等关键参数之间存在显著正相关(p < 0.05)。主成分分析发现6个分量对总方差的贡献率为75.534%,其中第一个分量对总方差的贡献率为17.437%。在POMS中,五个分量解释了70.963%的方差,其中第一个分量贡献了20.653%。因子分析表明,矿物溶解、农业活动和人为投入是影响水化学的主要因素。通过GIS分析生成的空间分布图确定了污染热点。这种综合方法为理解自然和人为因素对地下水质量的影响之间的复杂相互作用提供了一个强有力的框架。结果建议定期监测水质和识别热点,并实施有关农业实践和废物处理的规章制度。这项研究有助于支持地下水管理战略,并提供适合其他地区或全世界类似水文地质环境的方法框架。
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来源期刊
Applied Water Science
Applied Water Science WATER RESOURCES-
CiteScore
9.90
自引率
3.60%
发文量
268
审稿时长
13 weeks
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