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Remote Sensing, GIS, and Machine Learning in Water Resources Management for Arid Agricultural Regions: A Review

A. Rabie, Mohamed Elhag, Ali M. Subyani

2025Water12 citationsDOIOpen Access PDF

Abstract

Efficient water resource management in arid and semi-arid regions is a critical challenge due to persistent scarcity, climate change, and unsustainable agricultural practices. This review synthesizes recent advances in applying remote sensing (RS), geographic information systems (GIS), and machine learning (ML) to monitor, analyze, and optimize water use in vulnerable agricultural landscapes. RS is evaluated for its capacity to quantify soil moisture, evapotranspiration, vegetation dynamics, and surface water extent. GIS applications are reviewed for hydrological modeling, watershed analysis, irrigation zoning, and multi-criteria decision-making. ML algorithms, including supervised, unsupervised, and deep learning approaches, are assessed for forecasting, classification, and hybrid integration with RS and GIS. Case studies from Central Asia, North Africa, the Middle East, and the United States illustrate successful implementations across various applications. The review also applies the DPSIR (Driving Force–Pressure–State–Impact–Response) framework to connect geospatial analytics with water policy, stakeholder engagement, and resilience planning. Key gaps include data scarcity, limited model interpretability, and equity challenges in tool access. Future directions emphasize explainable AI, cloud-based platforms, real-time modeling, and participatory approaches. By integrating RS, GIS, and ML, this review demonstrates pathways for more transparent, precise, and inclusive water governance in arid agricultural regions.

Topics & Concepts

Geospatial analysisWater resourcesAgricultureEnvironmental resource managementEnvironmental scienceAridEnvironmental planningWatershed managementDPSIRIntegrated water resources managementComputer scienceFarm waterRemote sensingWater scarcityWater resource managementGeographic information systemWetlandClimate changeAnalyticsWatershedSustainabilityBusinessResource management (computing)Ecosystem servicesHydrology (agriculture)Climate resilienceLand useInformation systemSurface waterResilience (materials science)Groundwater and Watershed AnalysisRemote Sensing in AgricultureHydrology and Watershed Management Studies
Remote Sensing, GIS, and Machine Learning in Water Resources Management for Arid Agricultural Regions: A Review | Litcius