利用 SWAT 和机器学习模型评估印度西孟加拉邦半干旱关西河流域的地下水干旱风险

IF 4.9 Q2 ENGINEERING, ENVIRONMENTAL
Amit Bera , Nikhil Kumar Baranval , Rajwardhan Kumar , Sanjit Kumar Pal
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引用次数: 0

摘要

地下水干旱风险威胁着水资源的供应,并对生态系统、农业和人类活动造成不利影响,人们对地下水干旱风险的关注与日俱增,这凸显了采用综合评估方法的必要性。本研究介绍了一种细致的方法,用于评估印度西孟加拉邦关西河流域半干旱地区的地下水干旱风险(GWDR)。该方法将水土评估工具 (SWAT) 模型与三种不同的机器学习算法(即支持向量机 (SVM)、随机森林 (RF) 和神经网络 (NN))巧妙地结合在一起。该评估依赖于 26 个专题数据集,其中包括水文、气象干旱风险和社会经济条件变量。SWAT 模型用于推导水文参数,包括地下水补给、侧向流、基流、地表径流、蒸散、回流和土壤含水量。与此同时,503 个井点的季前水位数据集采用了公正的取样策略,训练数据集和测试数据集的比例保持在 70:30。通过 SVM、RF 和 NN 模型得出的 GWDR 地图显示了整个研究区域的四个风险等级。高风险区主要分布在上游集水区,而低风险区则分布在下游集水区。射频模型的接收器工作特征曲线下面积(AUC-ROC)显示出令人印象深刻的 91% 成功率,超过了 SVM 和 NN 模型,后者的成功率分别为 88.4% 和 80.7%。曼-肯德尔(Mann-Kendall)测试和森氏斜率分析证实,在全球降水减量指数较高和中等较高的区域内,地下水位明显下降,为研究结果提供了佐证。这些发现对半干旱地区的水资源管理产生了重大影响,强调了采取积极措施应对不断变化的地下水干旱风险的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Groundwater drought risk assessment in the semi-arid Kansai river basin, West Bengal, India using SWAT and machine learning models

Groundwater drought risk assessment in the semi-arid Kansai river basin, West Bengal, India using SWAT and machine learning models

Increasing concerns over groundwater drought risks, which threaten water availability and adversely impact ecosystems, agriculture, and human activities, underscore the necessity of comprehensive evaluation methods. This research introduces a meticulous approach to evaluating groundwater drought risk (GWDR) in the semi-arid expanse of the Kansai River Basin, West Bengal, India. It intricately amalgamates the Soil and Water Assessment Tool (SWAT) model with three distinct machine learning algorithms namely, Support Vector Machine (SVM), Random Forest (RF), and Neural Networks (NN). The assessment relies on a diverse array of 26 thematic datasets encompassing hydrological, meteorological drought risk, and socioeconomic conditioning variables. The SWAT model has been used to derive hydrological parameters including groundwater recharge, lateral flow, base flow, surface runoff, evapotranspiration, return flow, and soil water content. Simultaneously, a pre-monsoonal water level dataset from 503 well locations is adhered to an impartial sampling strategy, maintaining a 70:30 ratio for training and testing datasets. The ensuing GWDR maps, derived through SVM, RF, and NN models, reveal four discerning risk classes across the study area. High-risk zones conspicuously predominate in upper catchment areas, while low-risk zones find their strategic position in the lower catchment regions. The area under the receiver operating characteristic curve (AUC-ROC) for the RF model, showcases an impressive 91% success rate, surpassing its counterparts SVM and NN models, which attained success rates of 88.4% and 80.7%, respectively. The Mann–Kendall test with Sen's slope analysis confirms a noticeable decline in groundwater levels within high to moderately high GWDR zones, supporting the study's findings. These findings significantly impact water resource management in semi-arid regions, emphasising the need for proactive measures to address evolving groundwater drought risks.

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来源期刊
Groundwater for Sustainable Development
Groundwater for Sustainable Development Social Sciences-Geography, Planning and Development
CiteScore
11.50
自引率
10.20%
发文量
152
期刊介绍: Groundwater for Sustainable Development is directed to different stakeholders and professionals, including government and non-governmental organizations, international funding agencies, universities, public water institutions, public health and other public/private sector professionals, and other relevant institutions. It is aimed at professionals, academics and students in the fields of disciplines such as: groundwater and its connection to surface hydrology and environment, soil sciences, engineering, ecology, microbiology, atmospheric sciences, analytical chemistry, hydro-engineering, water technology, environmental ethics, economics, public health, policy, as well as social sciences, legal disciplines, or any other area connected with water issues. The objectives of this journal are to facilitate: • The improvement of effective and sustainable management of water resources across the globe. • The improvement of human access to groundwater resources in adequate quantity and good quality. • The meeting of the increasing demand for drinking and irrigation water needed for food security to contribute to a social and economically sound human development. • The creation of a global inter- and multidisciplinary platform and forum to improve our understanding of groundwater resources and to advocate their effective and sustainable management and protection against contamination. • Interdisciplinary information exchange and to stimulate scientific research in the fields of groundwater related sciences and social and health sciences required to achieve the United Nations Millennium Development Goals for sustainable development.
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