Water Security: A Systematic Review of Definitions, Indicators, and Artificial Intelligence Applications
Abstract
1. Introduction
- Assess the spatial and temporal distribution of relevant scientific publications to understand geographic research emphasis and the evolution of research trends.
- To synthesize water security definitions into simple and broader concepts based on key components.
- To identify and categorize water security indicators based on quantitative, qualitative, and combined approaches across different dimensions, domains, and scales.
- To identify different analysis methods used in Urban Water Security assessment by grouping them into eight categories.
- To identify and examine the applications and types of artificial intelligence with their corresponding models used in water security, and synthesize them into six thematic categories.
2. Materials and Methods
2.1. Literature Search and Study Selection
2.2. Information Retrieval and Interpretation Approaches
3. Result
3.1. Temporal and Spatial Distribution of the Studies
3.2. Definition of Water Security in a Simple and Broader Context
- Access is one of the most emphasized components in definitions. The foundational definition from UN-Water [10] gives the importance of access as “safeguard sustainable access,” which has been widely adopted in many studies [27,57,58]. Similarly, the definition from the GWP [9] describes access to “sufficient safe water” mentioned in the articles [17,59,60,61], where Alavijeh et al. described it as “sufficient water” [29]. In addition, it has been further refined to include aspects such as “adequate access,” as defined by Berner et al. [62], “stable and affordable access” by Penn et al. and Wehbe et al. [63,64] and “equitable access” by Srisuwan [16].
- Water quality is widely recognized as a fundamental component of water security, where water is safe for the environment. The definitions of UN-Water [10] and GWP [65] emphasize acceptable quality, which has been widely adopted across multiple studies, such as [12,45,61,66,67,68]. In addition, UN-Water [69], WaterAid [11], and some studies describe quality using the terms “good and sufficient quality” [59,63]. Other definitions describe water quality as “suitable quality” for different uses and emphasize the importance of providing “provision of quality drinking and domestic” water [29,70]. Li et al. emphasize the importance of meeting quality requirements, and Scott et al. define “adequate quality” of water in terms of availability [14,71].
- The component quantity in the water security definition is commonly described in terms of “adequate” by UN-Water [10], GWP [65] which is mentioned in many articles, and this is also defined by Evengard et al. [67], Jesnen and Wu [68], Scott et al. [14] and Zakeri et al. [17]. It is also described as an “acceptable quantity” [12] and “sufficient water quantity” by Water Aid [11] and several studies [59,63,71,72].
- Water security definitions often specify the broad range of beneficiaries, including humans, ecosystems, the environment, people, economies, industry, and resilient societies and communities, as provided by the numerous studies such as [17,67,68,70,71,72,73,74,75,76] and in the definition of the UN-Water [10], Water Aid [11], and GWP [65].
- Governance component in the definition encompasses aspects related to managing and planning by Biswal et al. [77], water demand by Dawuni et al. and Biswal et al. [59,77,78]. Dou et al. give the stakeholder interest aspect in the definition [4]. While Kreuger et al. provide the aspect of services that citizens receive [79]. Jepson et al. mention the ascendance in policy circles, academic scholarships, and hydro-social processes [18]. UN-Water also mentions peace and political stability [80,81]. And finally, the importance of a stable political environment is given in the definition by Srisuwan [16].
- The component risk is associated with an acceptable and tolerable level of water-related risks [12,17,29,66,82,83]. It also includes poor water quality risk [12,84], reasonable risk [77], flood risk [4], and water-related hazards [85]. Together, these aspects highlight the role of risk management in definitions.
- Capacity for water security is primarily associated with population size, and in a city or urban context. The definitions proposed by UN-Water [10] and Xi et al. [86] highlight a population’s capacity, while the definition of several other studies gives importance to the capacity of an urban or city for water security [68,87].
- The component types reflect the different contexts of water security. Some existing definitions, particularly focusing on the type of water security, including watershed-based [45,65], water resource-based [85], food and drinking water security [62], Urban Water Security [68,79], human water security [70], urban water supply security [79] and water security management [76].
- The component sustaining and sustainability component in the definition emphasizes sustaining livelihood and human well-being [10,16,68,81]. In addition, the definition also specifies the sustainable use and protection [85], sustainable access [17,45,67], sustainable availability [14], and sustainable development of water resources [85], along with some metrics such as the ratio exceeding unity, which often signifies water surplus [59].
- Protection in definition represents safeguarding water resources from waterborne pollution and water-related disasters (floods and droughts), as mentioned in many studies, such as [10,16,27,68,81,89]. It also emphasizes ensuring against the natural environment [60,61,88] and protection against some other pollutions [16].
- Component links reflect the interconnected nature of water security with different sectors. Taka et al. give the definition, which specifies the linkages between water and food, energy, climate, and human security [75].
- The definition also contributes to a wide range of outcomes, including socio-economic development [81], industrial and agricultural development [71], and energy generation. Additionally, water security aims to ensure a clean and productive life [60,61,88] and maintenance of the ecosystem and biodiversity [70]. Moreover, the definition specifies adequate, reliable, and affordable water for a healthy life [73], to maintain health, and to enact livelihoods [63], safety, reliability, continuity, and affordability [79].
- The definition highlights several key aspects, including affordable costs [60,61,88]; addressing the lack of water [84]; availability, adequate supply, and adequate information [62]; fresh water supply [64]; water management and water scarcity [4]; human development [73]; performance of the system function [79]; availability of water resources [71]; water sources [74]; and water sufficiency and equity [75]. These aspects underscore the multidimensional nature of water security and highlight the importance of integrated management.

3.3. Water Security Indicator Classification: Quantitative, Qualitative, and Combined
3.4. Overview of Assessment Methods in Urban Water Security Studies
- Index-based: Explicit aggregation into a composite score (weighted indicators to a single metric of water security.
- Model-based: Uses process-based or simulation models (e.g., hydrological or system models.
- Framework-based: Primarily conceptual or structural (e.g., DPSIR-type approaches organizing variables without necessarily aggregating them.
- Data-driven: Relies on statistical or machine learning from the datasets without explicit system representation.
- Spatial and geospatial: This category includes methods where spatial representation and geographic variability are main to the analysis, regardless of statistical or modeling technique.
- Governance and qualitative: These methods prioritize stakeholder knowledge, institutional dynamics, and qualitative interpretation over quantitative modeling.
- Climate and scenario-based: This category represents the prediction aspect of climate variables, using scenarios to evaluate the future states of water security.
- Risk-based: This category signifies the evaluation and prioritization of hazards, vulnerabilities, and the impacts to support decision-making under uncertainty.
3.5. Artificial Intelligence Techniques and Their Applications in Water Security
4. Discussion
4.1. Challenges in Defining Water Security
4.2. Analysis of Indicators, Methods, and Artificial Intelligence in Water Security
4.3. Limitations and Challenges
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| PRISMA | Preferred Reporting Items for Systematic Reviews and Meta-Analyses |
| GWP | Global Water Partnership |
| UN-Water | United Nations Water |
| GWS | General Water Security |
| AWS | Agricultural Water Security |
| UWS | Urban Water Security |
| EM | Evaluation Method |
| WS | Water supply |
| WR | Water Resources |
| S&H | Sanitation and Health |
| E&E | Environment and Ecosystem |
| WMS | Water Management System |
| SE | Socio-Economic |
| WEAP | Water Evaluation and Planning model |
| DPSIR | Driving Force Pressure Impact Response |
| PSR | Pressure State Response |
| DAPSR | Driving Force Agriculture Non-Ponit Pollution Pressure State Response |
| OECD | Organization for Co-operation and Development |
| UWM | Urban Water Metabolism |
| InVEST | Integrated Valuation of Ecosystem Services and Tradeoffs |
| SWARA | Stepwise Weight Assessment Ratio Analysis |
| GIS | Geographical Information System |
| ANN | Artificial Neural Networks |
| FL | Fuzzy Logic |
| KBS | Knowledge-based Systems |
| GA | Genetic Algorithms |
| AA | Adaptive Agents |
| ELM | Extreme Machine Learning |
| SWAT | Soil and Water Assessment Tool |
| ANFIS | Adaptive Neuro Fuzzy Inference System |
| MLR | Multiple Linear Regression |
| SVM | Support Vector Machine |
| TPFML | Two-Phase Fuzzy Machine Learning-based Framework |
| HC | Hierarchical Clustering |
| SOM | Self-Organizing Map |
| CT | Classification Trees |
| PERSIANN-CDR | Artificial Neural Networks-Climate Data Record |
| K-NN | K-nearest Neighbors |
| DEM | Digital Elevation Model |
| LSTM | Long Short-Term Memory |
| GRU | Grated Recurrent Unit |
| TCN | Temporal Convolution Network |
| GBDT | Gradient Boosting Tree |
| XG Boost | Extreme Gradient Boosting |
| RNN | Recurrent Neural Network |
| DTR | Decision Tree Regressor |
| MLP | Multi-layer perception |
| GBR | Gradient Boosting Regressor |
| BPNN | Back Propagation Neural Network |
| RFR | Random Forest Regressor |
| COD | Chemical Oxygen Demand |
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| EM | Dimensions | Indicators | Citations | Domain | Spatial Scales | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| WS | WR | S&H | E&E | WMS | SE | |||||
| Quantitative | Availability | Freshwater resources per capita, water consumption per capita, urban population covered by urban water (people), volume of surface water, groundwater volume, annual water yield, monthly water supply, demand ratio, reliability of supply | [4,29,57,100] | ✔ | ✘ | ✘ | ✘ | ✘ | ✘ | National |
| Internal renewal of water resources volume, external renewal of water resource volume, outflow to the outside of the basin, total natural renewable water resources, water resources per capita, dependency to external water resources ratio, dependency to groundwater ratio, relative water stress index, consumption index, electrical conductivity, total water withdrawals, total actual renewable water resources, population, dam storage capacity, per capita water availability, meteorological variation, ratio of ecological water to total water demand, exploitation ratio of water resources, surface water pollution index, reclaimed water utilization, rainwater resource utilization, the degree of water satisfaction, total renewable water resources per capita, ecosystem vitality index, per capita renewable water, water consumption, types of water sources, per capita water needs for human consumption | [4,22,85,91,98,101,102,103,104,105] | ✘ | ✔ | ✘ | ✘ | ✘ | ✘ | Regional, global basin, sub-regional | ||
| Access | Percentage of households with access to the piped water supply, supply duration by LCs per hour in a day, percentage of unsafe water supply systems, percentage of total population with access to water supply, the proportion of the water network that is old and worn out, number of household water subscribers, coverage of human water uses, water supply capacity, water supply coverage, piped water coverage, accessibility of running water, periodic water shortage, operational status of water source, length of the water distribution network, water use per capita percentage, population density, piped water coverage, sewage coverage affordability, cost recovery of water utilities, accessibility to clean water, accessibility to clean water from centralized water supply system, efficiency of the centralized water supply systems, access to piped drinking water, access to wastewater collection, one way distance to water source, waiting time, seasonal resource variability | [16,22,29,30,57,68,90,100,102,103,106] | ✔ | ✘ | ✘ | ✘ | ✘ | ✘ | City, basin, national, sub-regional blocks, regional | |
| The percentage of the city’s population having access to LC’s sewage system (percentage of network coverage), the percentage of old and worn-out sewerage network (percentage of network capacity), percentage of the total population with access to sanitation services, the percentage of efficiency of the wastewater treatment plant, wastewater discharged per capita, nominal capacity of water treatment plants, number of water laboratories, percentage of population covered by municipal sewage facilities, water treatment level, sewage water coverage, state of sewer, waste water coverage, domestic sewage discharge, industrial wastewater discharge, emission of industry, population in sewage network, population in drinking water sewage network, access to safe water, access to improved sanitation, access to clean water, accessibility to clean water from a centralized water supply system, water sanitation, access to waste water collection, water treatment capacity, percentage access to improved drinking water | [16,30,57,60,90,100,103,105] | ✘ | ✘ | ✔ | ✘ | ✘ | ✘ | City, provinces, regional | ||
| Water economy | Non-revenue water (NRW): water loss (leakage and theft, etc.)/water produced, energy consumption for water production, energy consumption for wastewater treatment, contribution of alternative energy to the operation of the water supply, selling price of one cubic meter of water, selling price of one cubic meter of sewage services, WASH budget: percentage of national budget directed to water and sanitation services, operating revenue: operation and maintenance cost recovery, water productivity, value added by industries, industrial water withdrawals, water budget, drainage investments, household water costs, investing in water infrastructure, affordability (water tariff) | [17,29,30,57,60,68,90,98,107] | ✘ | ✘ | ✘ | ✘ | ✘ | ✔ | City, global, national, provinces, watersheds | |
| Social | Population, per capita renewable water resources, ratio of employment in the agriculture sector to total employment, ratio of employment in the industrial and mining sector to total employment, ratio of employment in the urban services sector to total employment, labor productivity in the agriculture sector, labor productivity in the industrial and mining sector, labor productivity in the urban service sector, labor productivity in the region, employment productivity in the agriculture sector, employment in the agriculture sector to water consumption in the agriculture sector, employment productivity in the industrial and mining sector, employment productivity in urban services sector, employment productivity in the region, per capita income, marginal change in labor productivity in the region, marginal change in employment productivity in the region, literacy rate, population density, income, inequality, informal dwellings, gender equality, corruption perception index, environmental performance index, citizen support (consumer awareness and interest: questionnaire five-point likert scale), total water withdrawal, total actual renewable water resources, per capita GDP, population density, water productivity, water supply per capita, industrial water scarcity, agricultural water scarcity, population pressure | [22,30,57,85,90,91,98,99,108,109] | ✘ | ✘ | ✘ | ✘ | ✘ | ✔ | City, regional, global, basin, country | |
| Economic | Ratio of water consumption in agricultural sector to total water consumption, ratio of water consumption in industrial and mining sector to total water consumption, ratio of water consumption in urban services sector to total water consumption, water productivity in the region, water productivity in agricultural sector, water productivity in industrial and mining sectors, water productivity in urban services sector, relative importance of agriculture in the economy, total water withdrawals, relative importance of agriculture withdrawal in local water balance, marginal change in water productivity in the region, marginal change in water productivity in agriculture sector, water intensity, water consumption for economic activities, water use for agriculture, water use for inland waterway transport, water use for industry | [91,99,106] | ✘ | ✘ | ✘ | ✘ | ✘ | ✔ | Regional, deltas of the transboundary river basins, city | |
| Water Demand | Water demand per 10,000 rmb of industrial added value, industrial added value growth rate, per capita domestic water demand, water demand per mu for irrigation, tertiary industry added value growth rate, water demand per 10,000 rmb of tertiary industry added value, effective irrigated area growth rate, population growth rate | [72] | ✘ | ✘ | ✘ | ✘ | ✘ | ✔ | City | |
| Water self-sufficiency and supply diversification | Local water abstraction ratio (%), supply internationalization, water import rate, sourcing, distribution diversity index, water quantity sufficiency, diversity of sources | [110] | ✔ | ✘ | ✘ | ✘ | ✘ | ✘ | City | |
| Climate change | Annual average temperature, annual average precipitation, greenhouse gas emission, temperature increase, extreme rainfall events, climate risk index, daily mean average minimum temperature by month, average precipitation by month | [22,30,90,103,111,112] | ✘ | ✘ | ✘ | ✔ | ✘ | ✘ | Basin, city, regional | |
| Efficiency | Water intensity, water loss rate, residential water use, energy usage efficiency, wastewater reuse (recycling), efficiency of centralized water supply systems, residential water use, water intensity, water use intensity, water loss rate, wastewater treatment efficiency, wastewater reuse rate | [30,90,93,110] | ✔ | ✘ | ✘ | ✘ | ✘ | ✘ | City | |
| Driving force | GDP annual growth rate, per capita GDP, natural population growth rate, urbanization rate, population density, pollutant emissions from planting per hectare of arable land, pollutant emissions from livestock and poultry breeding per square kilometer of land area, fertilizer consumption per hectare of arable land, pesticide consumption per hectare of arable land | [94,109] | ✘ | ✘ | ✘ | ✘ | ✘ | ✔ | City, basin | |
| Combined | Sustainability | Water uses per capita, water stress, sustainability (utilities), utility performance indicator, percentage of study area under natural vegetation, wastewater treatment plant discharge per capita, renewable freshwater resources per inhabitant, water exploitation index | [22,60,63,95,108] | ✘ | ✔ | ✘ | ✘ | ✘ | ✘ | Basin, country, city, provinces, rural |
| Risk and disasters | Flooding/runoff risk: the flood-prone area as a percentage of the total surface area, sewer system blockages: stormwater and wastewater network effectiveness, water replenishment, population geospatial distribution, flood historical data, vulnerability level of the population, risk to temperature variations, risk to precipitation variation, flood deaths, disaster mitigation, disaster preparedness, public health risk, flood frequency, drought frequency, flood prone areas, people living under hazardous zones, risk management, major drought blackspots, articles on flooding in local media, capacity to cope with disasters, saltwater intrusion factor, flood damage, drought damages, water contamination incidents | [15,16,66,68,87,93,98,106] | ✘ | ✘ | ✘ | ✔ | ✘ | ✘ | Basin, global, city, country, deltas of the transboundary river basins | |
| Water safety | Leakage rate of the pipe network, drinking water source, water quality compliance rate, network-based per capita, safety level of drinking points, safety level of sanitation facilities, drinking water related contaminants, waterborne diseases, authorized water quality assurance, safety plans, proportion of population using safely managed drinking water service, percentage of safely treated wastewater flows | [57,97,98,107,108] | ✔ | ✘ | ✘ | ✘ | ✘ | ✘ | City, global, country, global, | |
| Governance | Institutional factor: questionnaire five-point likert scale, adaptability factor: questionnaire, five-point likert scale, staff productivity: no. of staff in the water supply and sanitation directorate/1000 houses connection, residential water use, water intensity, water services (water coverage, water losses, continuity of water supply), number of local admin units, number of operational policies with the community preparation, overall management of the water sector, potential to adapt to future changes, citizen support, role and responsibility, access to data and information, stakeholder engagement, communication and access to information, public participation opportunities, equality and non-discrimination, WASH investment, organizational structure, strategic planning, disaster management, regulation, cooperation on water management, people service (lacking complete plumbing, iwrm (degree of implementation), strategic planning, disaster management, management system | [16,30,57,68,87,90,92,98,100,102,106] | ✘ | ✘ | ✘ | ✘ | ✔ | ✘ | City, global, sub-region, basin | |
| Water environment | Urban population growth rate, air temperature, environmental flows: measured using the annual surface water low, water deficit, geospatial data on river morphology, geospatial data on fragmenting entities, state of natural water bodies, effect of polluting factors, aquatic species of conservation concern, annual quick flow (+), total nitrogen export, total phosphorus export, green areas, environmental safety, water pollution level, sediment transport, runoff, estimated soil loss by water erosion by land cover, average proportion of freshwater key biodiversity areas covered by protected areas, ecosystem vitality index, qualitative assessment of water quality, protection of water source, number of pollution sources, number of environmental impacts, conflict over water resources (human-wild life and human-life stock), water quality factor, upstream development activity, river flow for the environment, minimum ecological water demand distance, average wetland area, non point source pollution control rate, groundwater over exertion rate, green surface area: the green surface area as a percentage of the total surface area, urban landscaping, river quality | [4,15,29,30,66,87,96,97,98,99,100,106,108] | ✘ | ✘ | ✘ | ✔ | ✘ | ✘ | Basin, global, city, national | |
| Capacity | Urban landscaping, government expenditure on environmental protection, government expenditure on resource affairs, investment in water conservancy, efficient agricultural practices (%), household income, annual water investments, income from agricultural activities, years of education, management system, ownership over water source, water association registered, records kept, financial control, funds | [60,93,100] | ✘ | ✘ | ✘ | ✘ | ✘ | ✔ | City, provinces | |
| Infrastructure | accessibility, sewage infrastructure, drainage infrastructure, wastewater, investment need, CWS not in compliance, service discontinuity, service reliability, metering level, water loss, investing in water infrastructure, length of water distribution network | [15,17,29,30,93] | ✔ | ✘ | ✘ | ✘ | ✘ | ✘ | City, national, watersheds | |
| Qualitative | Hygiene | Hand washing facilities, waterborne diseases, recreational opportunities, water sanitation, waterways city, incidence of recreational diseases, | [50,57,90,98,99,106] | ✘ | ✘ | ✔ | ✘ | ✘ | ✘ | Global, city, basin |
| Quality | GW quality: groundwater samples that meet applicable quality standards (WHO and locally), surface water quality, wastewater treatment, drinking water quality, residual chlorine: percent samples with residual chlorine within the permissible limits, impaired stream/river length, water consumption chemical and biological contamination of water reservoirs, quality of water supplied, COD, ammonia and nitrogen, meeting WHO standards, waterborne diseases, water diseases | [15,16,57,71,87,90,113] | ✘ | ✘ | ✔ | ✘ | ✘ | ✘ | City, national, regional, basin | |
| Methodological Groups | Citation |
|---|---|
| 1. Index-based | |
| Assessment using indicators | [29] |
| Urban Water Security index | [16] |
| Water poverty index | [100] |
| Indicator development using process analysis methods | [68] |
| 2. Model-based | |
| System dynamics | [72] |
| WEAP model | [22] |
| Capital portfolio approach | [79] |
| Integrated system-based approach | [117] |
| Water neutrality index | [117] |
| Particle swarm projection pursuit model | [109] |
| 3. Framework-based | |
| DPSIR | [94] |
| PSR | [4] |
| DAPSR | [109] |
| OECD | [115] |
| UWM | [110] |
| City blueprint framework | [115] |
| Indicator-based multi-dimensional framework | [68] |
| 4. Spatial and geospatial | |
| GIS-based | [114] |
| Theil index | [30] |
| InVEST | [4] |
| 5. Data driven | |
| Regression | [58] |
| Clustering | [58] |
| Factor analysis | [84] |
| 6. Governance and qualitative | |
| Delphi method | [58] |
| Q-method | [84] |
| Thematic analysis | [77] |
| Grounded theory | [77] |
| Stakeholder-based assessment | [115] |
| Mixed methods (surveys, FGDs, and interviews) | [116] |
| 7. Climate and scenario-based | |
| Climate modeling (RCP Scenarios) | [116] |
| Scenario analysis | [72] |
| Dynamic adaptive policy pathways | [72] |
| Gray prediction model | [94] |
| 8. Risk-based | |
| Risk matrix analysis | [92] |
| SWARA | [92] |
| Sl No. | Type of AI (ML/DL) | Tools/Models | Applications | Citations |
|---|---|---|---|---|
| 1. | ML | FL, KBS, GA, AA, and ES | Applied in measurement platform, proactively water monitor, water access, water supply, water delivery, water complaints, risk prediction, preventive maintenance, decision making, time series prediction, real time monitoring, natural calamities, water management prediction plannings, scheduling, design analysis, dynamic modeling, quality prediction, quality inspection, signal identification, system diagnosis, fault detection, failure analysis, maintenance analysis, pattern recognition, image identification, anomaly detection, management, target tracking, guidance system, routing system, value prediction, telecommunication | [33] |
| DL | ANN | |||
| 2. | ML | ELM | Applied to enhance the hydrological response of SWAT | [118] |
| 3. | DL | ANN | Applied to evaluate the adsorption process of polluted water bodies, removal of heavy metal pollutants from mining-affected water bodies, applied in chemical precipitation to aid in the removal of arsenic pollutants, to monitor the growth of plants in different contaminated soils and groundwater, estimation of membrane performance characteristics, used to build and train prediction models for water treatment systems, and used to discover materials for ion-selective membranes. | [133] |
| ML | ANFIS, SVM, and MLR | |||
| 4. | ML | TPFML, HC, and SOM | Applied to find polluted areas and to select the best water security strategies | [119] |
| 5. | DL | ANN | Applied to analyze water distribution networks, identifies the hidden patterns in large water datasets, and applies to enhance the efficiency of water distribution, supports network analysis and management | [32] |
| ML | SVM, CT, and ANFIS | |||
| 6. | DL | ANN | Applied for precipitation from remotely sensed information | [101] |
| 7. | ML | K-NN | Applied to fill in the missing data through spatial interpolation for Urban Water Security maps | [30] |
| 8. | DL | LSTM, GRU, and TCN | Prediction of lake water levels, forecasting lake water levels for 1-day, 3-day, and 7-day periods, time series forecasting of lake water levels | [120] |
| 9. | ML | RF, SVM, and GBDT | Predicting aquifer vulnerability, predicting groundwater, and nitrate contamination prediction | [121] |
| DL | ANN | |||
| 10. | ML | XG Boost | Predicting and modeling water quality indicators such as ammonia nitrogen, total phosphorus, and Chemical Oxygen Demand at the grid scale | [122] |
| 11. | ML | RF and SVM | Assessment and prediction of the water–energy–food nexus security | [123] |
| 12. | DL | LSTM, GRU, and RNN | Forecasting future water consumption, food production, and electricity production, time series modeling of water, energy, and food resources production and demand | [124] |
| 13. | ML | DTR, RF, and GBR | Used to predict nutrient concentrations and nutrient flux relationships based on catchment characteristics and climate variables, modeling complex non-linear relationships between land use, climate, and nutrient concentrations, to improve nutrient prediction accuracy | [125] |
| DL | MLP | |||
| 14. | ML | RF and SVM | Used to estimate riverine nutrient concentrations such as total phosphorus, total nitrogen, and ammonia nitrogen, and also used for uncertainty analysis | [126] |
| DL | BPNN | |||
| 15. | ML | XG Boost and GBDT | Predicting time-to-next pipe break in urban water distribution systems, modeling relationships between pipe characteristics and failure timing | [127] |
| 16. | ML | RFR | Predicting optimal pipe diameters and reducing high-velocity zones in water distribution networks | [128] |
| Studies with general discussions on ML/DL applications with no specific tools/models mentioned | ||||
| 17. | ML | Applied for spotting anomalies in water flow, identifying malfunctioning of water meters, wastage, or pilferage during water transmission, analyzing water data, predicting water flows, checking water leaks, and estimating current pipe corrosion and deterioration | [34] | |
| 18. | DL/ML | Applied in groundwater management by enabling predictive modeling, more accurate assessment of aquifer conditions, predicting how groundwater levels will change with rainfall, water extraction rates, and land use, identifying areas at high risk of groundwater depletion, optimizing water extraction schedules, reducing over-pumping, determining the best times and amount of watering crops, minimizing the waste while maintaining the productivity, applied to simulate the impacts of different water management strategies, continuously adjust the irrigation schedule. | [130] | |
| 19. | ML | Applied to control for aquifer properties to get more accurate measures of groundwater changes | [129] | |
| 20. | ML | Used in efficient cloud forecasting and targeting efficiency in rainfall enhancement | [64] | |
| 21. | ML/DL | Applied to monitoring and survey, applied in research, predicting and forecasting, early warning, applied in consulting, planning, and decision making | [86] | |
| 22. | ML/DL | Applied to enhance water system monitoring at multiple spatiotemporal scales | [81] | |
| 23. | ML/DL | Applied to analyze diverse data sources encompassing hydrological, meteorological, environmental, and socio-economic variables, to uncover the hidden patterns, to enhance predictability and reliability | [94] | |
| 24. | DL/ML | Applied to simulate different aspects of the real-world rainfall runoff process | [131] | |
| 25. | ML | Applied to remove the buildings and forests from the Copernicus DEM to improve basin delineation accuracy | [132] | |
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Share and Cite
Baburaj, K.; Anandhi, A. Water Security: A Systematic Review of Definitions, Indicators, and Artificial Intelligence Applications. Water 2026, 18, 1239. https://doi.org/10.3390/w18101239
Baburaj K, Anandhi A. Water Security: A Systematic Review of Definitions, Indicators, and Artificial Intelligence Applications. Water. 2026; 18(10):1239. https://doi.org/10.3390/w18101239
Chicago/Turabian StyleBaburaj, Karunya, and Aavudai Anandhi. 2026. "Water Security: A Systematic Review of Definitions, Indicators, and Artificial Intelligence Applications" Water 18, no. 10: 1239. https://doi.org/10.3390/w18101239
APA StyleBaburaj, K., & Anandhi, A. (2026). Water Security: A Systematic Review of Definitions, Indicators, and Artificial Intelligence Applications. Water, 18(10), 1239. https://doi.org/10.3390/w18101239

