Work package no.1: Project coordination and management (Leaders: Prof. Alfonso E. Gerevini and Prof. Ivan Serina)

Tasks

TaskLeaderParticipants
T1.1 – Administrative managementUNIBSAll
T1.2 – Scientific managementUNIBSAll
T1.3 – Data managementUNIBS (Dr. Luca Putelli)UNIBS

Deliverables

DeliverableScheduled month
D1.1 – Consortium agreementM1
D1.2 – Data management planM6
D1.3 – Mid term project reportM18
D1.4.1 – Annual management (first year)M12
D1.4.2 – Annual management (second year)M24
D1.4.3 – Final reportsM36
Work package no.2: requirements definition and data acquisition

Tasks

TaskLeaderParticipants
T2.1 – Analysis of the case studies, Living Labs and dialog with the stakeholdersUNIBSUBMA, USC, ESIM
T2.2 – Definition and Formalization of RequirementsESIMUNIBS, UBMA, USC, UPV, ULILLE
T2.3 – Data acquisitionESIMUNIBS, UBMA, USC, UPV, ULILLE

Deliverables

DeliverableScheduled month
D2.1 – Report on case studies characterization and needs for monitoringM12
D2.2 – Metadata for each case studyM12
D1.3 – Report on participatory groundwater governance and stakeholders engagementM30

Work package no.3: AI techniques for water management

Tasks

TaskLeaderParticipants
T3.1 – AI Prediction AlgorithmsUNIBSAll
T3.2 – AI Water Management Optimization AlgorithmsUPVAll

Deliverables

DeliverableScheduled month
D3.1 – Report on the Prediction AlgorithmsM18
D3.2 – Report on the Optimization AlgorithmsM18

Work package no.4: application and testing of smart water management techniques

Tasks

TaskLeaderParticipants
T4.1 – Scenarios and data for water managementUBMAESIM, UNIBS, USC
T4.2 – Hydrologic modellingULILLEESIM, UBMA, UNIBS, USC
T4.3 – Development and Validation of DSSsUPVAll
T4.4 – Valuation in Water AccountingULILLEUBMA, UNIBS, USC, ESIM

Deliverables

DeliverableScheduled month
D4.1 – Data Collection and Scenario Development ReportM24
D4.2 – Hydrologic Model Definition and SetupM24
D4.3 – DSS Development and Validation ReportM36
D4.4 – Economic Valuation and Water Accounting AnalysisM36

Work package no.5: Dissemination, communication, and stakeholders’ engagement (Leader: Prof. Stefano Barontini)

Tasks

TaskLeaderParticipants
T5.1 – Communication and Dissemination StrategyUNIBSAll
T5.2 – Online Dissemination and CommunicationUNIBSAll
T5.3 – Dissemination and Communication MaterialsUSCAll
T5.4 – Exploitation ActivitiesULILLEAll

Deliverables

DeliverableScheduled month
D5.1 – AI4Water Brand ToolboxM3
D5.2 – AI4Water Dissemination, Communication and Exploitation PlanM3
D5.3 – Project Communication Platform and Archive and its maintenanceM6
D5.4 – AI4Water Dissemination, Communication and Exploitation materialM36

Aims of the project

The AI4Water project aims to address the critical challenges of water scarcity and management in the Mediterranean basin, with a particular focus on Tunisia, Algeria, Egypt, and southern Italy. These regions face growing water stress due to a combination of natural factors (such as semi-arid climates, irregular precipitation, and the increasing impacts of climate change) and anthropogenic pressures including over-extraction of groundwater, salinization, and pollution from industrial, agricultural, and domestic sources. The project’s overarching objective is to leverage advanced Artificial Intelligence techniques to optimize water resource management across four key coastal basins: the Ras Jebel Basin (Tunisia), the Constantinois and Seybouse Basins (Algeria), the Capitanata Coastal Irrigation District (Italy), and the Nile Delta Basin (Egypt). By integrating AI methods (including Genetic Algorithms, Reinforcement Learning, and AI planning algorithms) with traditional hydrologic modeling, the project seeks to develop effective, context-specific strategies for improving water use efficiency, ensuring sustainable irrigation and drinking water supply, mitigating saltwater intrusion, and preserving water quality. Furthermore, the project emphasizes the importance of engaging local stakeholders in co-developing a Decision Support System (DSS) and policy recommendations that are responsive to the socio-economic realities of each region. Through a combination of predictive modeling, economic analysis, and inclusive governance, AI4Water aspires to foster a resilient, informed, and collaborative approach to water management in some of the most vulnerable areas of the Mediterranean.

Data

The data used in this project comes from multiple sources to ensure comprehensive coverage of relevant parameters across selected Mediterranean regions, including Italy, Algeria, Tunisia, and Egypt. Historical and current datasets are collected from government agencies, research institutions, meteorological stations, and hydrological databases. In-situ measurements such as water levels, salinity, and flow rates provide localized insights, while field surveys add site-specific information. Remote sensing data and satellite imagery are employed to capture large-scale environmental variables, including soil salinity, vegetation health, and surface water conditions. The datasets include precipitation, temperature, evaporation, groundwater level, land use, and demography. Data cleansing and cross-validation are applied to ensure consistency and accuracy. Water quality is assessed using indices like DWQI and IWQI, along with parameters such as pH, heavy metals, nitrates, and sodium adsorption ratio. Salinity mapping combines satellite and ground data to identify affected areas. Machine learning models, including time-series forecasting, are used to predict saltwater intrusion, groundwater salinity, and water quality.

Equity Considerations

AI4Water places strong emphasis on equitable access to water resources by incorporating transparency and stakeholder engagement into every stage of the project. Through the use of open-source tools and the public release of data and AI systems under the GNU GPLv3 License, the project ensures that all actors, including researchers, policymakers, and local communities, have equal opportunities to benefit from and contribute to its outcomes. The selection of diverse case studies in Algeria, Egypt, Tunisia, and Italy highlights the commitment to addressing water scarcity challenges across varied socioeconomic and climatic contexts.

The project promotes equity in decision-making by integrating local data, engaging stakeholders in collaborative planning, and simulating scenarios tailored to community-specific water needs. Activities such as the optimization of water allocation and scenario simulations aim to improve fairness among competing users, especially between agricultural, industrial, and domestic sectors. Key Performance Indicators such as KPI2 specifically target improved transparency and equity in water distribution, ensuring no group is disproportionately disadvantaged. Living labs in each test area allow for local feedback to refine management strategies that respect community priorities. This inclusive approach is essential to achieving sustainable and just water governance under current and future climate pressures.

Ethical Considerations

Ethically, AI4Water is guided by a commitment to transparency, data responsibility, and respect for local contexts. By aligning with the FAIR Data Principles and releasing sample datasets only with proper authorization and without breaching national data restrictions, the project ensures that data use respects privacy and sovereignty. The decision to employ GNU GPLv3 licensing guarantees that AI tools remain freely accessible and modifiable, promoting ethical innovation and discouraging proprietary exploitation of critical water management technologies. Predictive models are developed based on diverse and validated datasets to avoid biased or misleading outputs, which could otherwise lead to inequitable or harmful water policies. Ethical engagement is reinforced through participatory planning with stakeholders, ensuring the legitimacy and social acceptance of proposed solutions. Additionally, AI4Water addresses ethical sustainability by supporting SDGs related to environmental health, social well-being, and intergenerational equity, especially in the face of climate-induced stressors. The project also emphasizes the responsible use of machine learning to complement, not replace, traditional knowledge systems, ensuring technology supports rather than dominates local water governance.