Sheik Abdul Gaffar, Kumar Arvind, Sharanya Anandan Govindan, Amabati Seshagiri Rao, Bux Faizal, Kumari Sheena
Institute for Water and Wastewater Technology, Durban University of Technology, Durban, 4001, South Africa.
Department of Civil Engineering, Indian Institute of Technology Bombay, Mumbai, 400076, India.
Environ Sci Pollut Res Int. 2024 Nov 25. doi: 10.1007/s11356-024-35529-3.
Managed aquifer recharge (MAR) replenishes groundwater by artificially entering water into subsurface aquifers. This technology improves water storage, reduces over-extraction, and ensures water security in water-scarce or variable environments. MAR systems are complex, encompassing various components such as water storage, soil, meteorological factors, groundwater management (GWM), and receiving bodies. Over the past decade, the utilization of machine learning (ML) methodologies for MAR modeling and prediction has increased significantly. This review evaluates all supervised, semi-supervised, unsupervised, and ensemble ML models employed to predict MAR factors and parameters, rendering it the most comprehensive contemporary review on this subject. This study presents a concise and integrated overview of MAR's most effective ML approaches, focusing on design, suitability for water quality (WQ) applications, and GWM. The paper examines performance measures, input specifications, and the variety of ML functions employed in GWM, and highlights prospects. It also offers suggestions for utilizing ML in MAR, addressing issues related to physical aspects, technical advancements, and case studies. Additionally, previous research on ML-based data-driven and soft sensing techniques for MAR is critically evaluated. The study concludes that integrating ML into MAR systems holds significant promise for optimizing WQ management and enhancing the efficiency of groundwater replenishment strategies.
人工回灌含水层(Managed Aquifer Recharge,MAR)通过将水人工注入地下含水层来补充地下水。这项技术改善了蓄水能力,减少了过度开采,并确保了缺水或多变环境下的水安全。MAR系统很复杂,包含诸如蓄水、土壤、气象因素、地下水管理(Groundwater Management,GWM)以及受纳水体等各种组件。在过去十年中,机器学习(Machine Learning,ML)方法在MAR建模和预测中的应用显著增加。本综述评估了所有用于预测MAR因子和参数的监督式、半监督式、无监督式和集成ML模型,使其成为该主题最全面的当代综述。本研究简要且全面地概述了MAR最有效的ML方法,重点关注设计、对水质(Water Quality,WQ)应用的适用性以及GWM。本文研究了性能指标、输入规格以及GWM中使用的各种ML函数,并突出了前景。它还提供了在MAR中利用ML的建议,解决了与物理方面、技术进步和案例研究相关的问题。此外,还对先前关于MAR的基于ML的数据驱动和软传感技术的研究进行了批判性评估。研究得出结论,将ML集成到MAR系统中对于优化WQ管理和提高地下水补给策略的效率具有重大前景。