基于模糊逻辑和地理加权回归模型的遥感和GIS强化地下水潜力制图

IF 6 3区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Junguang Gao, Amnah A. Alasgah, Imran Ahmad, Faten Nahas, Mithas Ahmad Dar, Martina Zelenakova, Milashu Sisay, Getanew Sewnet Zewdu
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引用次数: 0

摘要

地下水资源管理在地表水供应有限的地区至关重要。传统的制图方法在处理空间异质性和数据不确定性方面经常面临挑战,因此需要更先进的方法。本文通过引入模糊逻辑和地理加权回归(GWR)相结合的创新方法来加强地下水潜力制图,以弥补研究空白。模糊逻辑通过隶属函数解决不确定性,而GWR通过局部回归系数捕获空间变化。该方法利用地质因素、土地覆盖和地形指数的条件数据集,通过当地R2值和Moran指数等指标进行验证,生成了高精度的地下水潜力图。主要发现表明,地下水潜力具有显著的空间变异性,南方地区由于有利的地质条件而表现出增强的补给能力。模糊逻辑和GWR的集成显示了稳健的预测性能和解释局部空间格局的能力。这些结果为水文读者提供了有价值的见解,指导可持续地下水管理实践和在不同环境下有针对性的水资源干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of fuzzy logic and geographic weighted regression modeling for enhanced groundwater potential mapping using remote sensing and GIS

Groundwater resource management is critical in regions with limited surface water availability. Traditional mapping methods often face challenges in addressing spatial heterogeneity and data uncertainties, creating a need for more advanced approaches. This study addresses the research gap by introducing an innovative methodology combining fuzzy logic and Geographically Weighted Regression (GWR) to enhance groundwater potential mapping. Fuzzy logic addresses uncertainties through membership functions, while GWR captures spatial variations via localized regression coefficients. Utilizing conditioned data sets of geological factors, land cover, and topographic indices, the proposed method produced high-accuracy groundwater potential maps validated through metrics, such as local R2 values and Moran’s Index. Key findings reveal significant spatial variability in groundwater potential, with southern regions showing enhanced recharge capacity due to favorable geological conditions. The integration of fuzzy logic and GWR demonstrated robust predictive performance and the ability to account for local spatial patterns. These results provide valuable insights for hydrological readers, guiding sustainable groundwater management practices and targeted water resource interventions in diverse environmental settings.

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来源期刊
Environmental Sciences Europe
Environmental Sciences Europe Environmental Science-Pollution
CiteScore
11.20
自引率
1.70%
发文量
110
审稿时长
13 weeks
期刊介绍: ESEU is an international journal, focusing primarily on Europe, with a broad scope covering all aspects of environmental sciences, including the main topic regulation. ESEU will discuss the entanglement between environmental sciences and regulation because, in recent years, there have been misunderstandings and even disagreement between stakeholders in these two areas. ESEU will help to improve the comprehension of issues between environmental sciences and regulation. ESEU will be an outlet from the German-speaking (DACH) countries to Europe and an inlet from Europe to the DACH countries regarding environmental sciences and regulation. Moreover, ESEU will facilitate the exchange of ideas and interaction between Europe and the DACH countries regarding environmental regulatory issues. Although Europe is at the center of ESEU, the journal will not exclude the rest of the world, because regulatory issues pertaining to environmental sciences can be fully seen only from a global perspective.
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