Addressing water scarcity challenges through rainwater harvesting: A comprehensive analysis of potential zones and model performance in arid and semi-arid regions–A case study on Purulia, India

Subhra Halder, Suddhasil Bose
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Abstract

Water scarcity in arid and semi-arid regions is a critical global concern, necessitating innovative solutions to address increasing water demands in these vulnerable areas. This study focuses on tackling this challenge by identifying and classifying rainwater harvesting zones based on their potentiality and comparing the performance of two machine learning models, Artificial Neural Network (ANN) and Random Forest (RF), for optimizing rainwater harvesting strategies. The study area is Purulia, a district in India. Extensive literature review was conducted to identify key factors influencing rainwater harvesting. Open-source remotely sensed data were employed to pinpoint rainwater harvesting potential zones. A multi-criteria decision-making technique was applied to assess the importance of various factors. Results indicated that rainfall, slope, runoff potential, soil, land cover, and drainage density are the six crucial factors for selecting suitable rainwater harvesting locations. Approximately 2% of the area is unsuitable, 8% is poorly suitable, 33% is moderately suitable, 45% is highly suitable, and the remaining 12% is extremely suitable in Purulia. Two predictive models were developed, with the RF algorithm demonstrating nearly 99% accuracy. Finally, remedial techniques for mitigating water scarcity through rainwater harvesting are discussed separately for urban and rural areas. This research article embraces a comprehensive approach to address water-related concerns, offering a replicable framework applicable globally, with a specific focus on arid and semi-arid regions.

通过雨水收集应对缺水挑战:干旱和半干旱地区潜在区域及模型性能综合分析--印度普鲁利亚案例研究
干旱和半干旱地区的水资源短缺是全球关注的一个重要问题,需要创新的解决方案来解决这些脆弱地区日益增长的水资源需求。本研究的重点是根据雨水收集区的潜力对其进行识别和分类,并比较人工神经网络(ANN)和随机森林(RF)这两种机器学习模型的性能,以优化雨水收集策略,从而应对这一挑战。研究区域是印度的普鲁利亚地区。为确定影响雨水收集的关键因素,进行了广泛的文献综述。利用公开来源的遥感数据确定了雨水收集潜力区。应用多标准决策技术评估了各种因素的重要性。结果表明,降雨量、坡度、径流潜力、土壤、土地覆盖和排水密度是选择合适雨水收集地点的六个关键因素。在普鲁利亚,约有 2% 的地区不适合雨水收集,8% 的地区不太适合,33% 的地区比较适合,45% 的地区非常适合,其余 12% 的地区非常适合。开发了两个预测模型,其中射频算法的准确率接近 99%。最后,分别讨论了城市和农村地区通过雨水收集缓解水资源短缺的补救技术。这篇研究文章采用综合方法来解决与水有关的问题,提供了一个适用于全球的可复制框架,尤其侧重于干旱和半干旱地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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