伊朗西北部加兹温省农用地下水质量评估:模糊推理和指标克里金法

IF 5.4 Q1 ENVIRONMENTAL SCIENCES
Mohammad Javad Masoudi , Afshin Ashrafzadeh , Mohammadreza Khaledian , Somaye Janatrostami
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引用次数: 0

摘要

本研究探讨了评估伊朗西北部加兹温省农业用水地下水质量所面临的挑战。在该地区,过度开采已导致地下水资源严重退化。传统的评估方法往往忽略了地下水质量的不确定性和空间变异性。针对这一问题,我们的研究旨在整合模糊推理和地质统计方法,以评估不确定条件下的地下水质量。研究分两个阶段进行。首先,模糊推理系统对六个关键水质参数进行了分类:电导率 (EC)、钠吸附率 (SAR)、残余碳酸钠 (RSC)、总硬度 (TH)、钠离子浓度 (Na⁺) 和氯离子浓度 (Cl-) 这六个关键水质参数分为三类:使用 54 条模糊规则将其分为 "理想"、"可接受 "和 "不可接受 "三类。在第二阶段,我们采用普通克里金法和指标克里金法对这些分类进行空间插值,绘制出整个研究区域的地下水水质风险概率图。在普通克里金法中,EC、SAR、RSC、TH、Na⁺和 Cl- 的平均均方根误差值分别为 0.94 dS/m、1.54、1.42 meq/L、3.13 mg/L、3.03 mg/L 和 2.62 mg/L,表明对地下水质量参数的评估是可靠的。结果还表明,到 2023 年,被归类为 "不可接受 "的区域自 2009 年以来增加了 142.0%,另有 25.2% 的区域面临 40-80% 的进一步退化可能性。这些研究结果突显了地下水质量的重要趋势,有助于地方当局优先考虑采取预防性干预措施的地区。这支持了可持续农业实践,也符合联合国可持续发展目标 6 中关于水资源管理的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of groundwater quality for agricultural purposes in Qazvin Province, northwestern Iran: A fuzzy inference and indicator Kriging approach
This study addresses the challenge of assessing groundwater quality for agriculture in Qazvin Province, northwestern Iran. In this region, over-extraction has led to significant degradation of groundwater resources. Traditional assessment methods often overlook uncertainties and spatial variability in groundwater quality. To address this, our study aimed to integrate fuzzy inference and geostatistical methods to assess groundwater quality under uncertain conditions. The research was conducted in two stages. First, a fuzzy inference system classified six key water quality parameters: Electrical Conductivity (EC), Sodium Adsorption Ratio (SAR), Residual Sodium Carbonate (RSC), Total Hardness (TH), sodium ion concentration (Na⁺), and chloride concentration (Cl⁻), into three categories: “desirable,” “acceptable,” and “unacceptable,” using 54 fuzzy rules. In the second stage, we applied ordinary Kriging and indicator Kriging to spatially interpolate these classifications and produce probabilistic maps of groundwater quality risk across the study area. In ordinary Kriging, the average Root Mean Square Error (RMSE) values for EC, SAR, RSC, TH, Na⁺, and Cl⁻ were 0.94 dS/m, 1.54, 1.42 meq/L, 3.13 mg/L, 3.03 mg/L, and 2.62 mg/L, respectively, indicating reliable assessments of groundwater quality parameters. Results also suggest that by 2023, areas classified as “unacceptable” increased by 142.0% since 2009, with an additional 25.2% of the region facing a 40–80% probability of further degradation. These findings highlight important trends in groundwater quality, assisting local authorities in prioritizing areas for preventive interventions. This supports sustainable agricultural practices and aligns with the United Nations Sustainable Development Goal 6 for water resource management.
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来源期刊
Environmental and Sustainability Indicators
Environmental and Sustainability Indicators Environmental Science-Environmental Science (miscellaneous)
CiteScore
7.80
自引率
2.30%
发文量
49
审稿时长
57 days
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