This project has received funding from the European Union’s Horizon 2020 research and innovation program under the MSCA (Marie Sklodowska-Curie Actions, Staff Exchanges)-SE (Staff Exchanges)
grant agreement No 101086252.
This project has received funding from the European Union’s Horizon 2020 research and innovation program under the MSCA (Marie Sklodowska-Curie Actions, Staff Exchanges)-SE (Staff Exchanges)
grant agreement No 101086252.
Grant Agreement ID: 101086252
EC Signature Data: 10 October 2022
Start date: 1 January 2023 End date: 31 December 2026
Funded under: Marie Skłodowska-Curie Actions (MSCA)
Coordinated by: CNRS, France
STARWARS
STormwAteR and WastewAteR networkS heterogeneous data AI-driven management
Public and private stakeholders of the wastewater and stormwater sectors are increasingly faced with large quantities and multiple sources of information/data of different nature: databases of factual data, geographical data, various types of images, digital and analogue maps, intervention reports, incomplete and imprecise data (on locations and the geometric features of networks), evolving and conflicting data (from different eras and sources), etc. Obtaining accurate and updated information on the underground wastewater and stormwater networks is a challenge and a cumbersome task, especially in cities undergoing urban expansion.
Within this context, the main objective of this multidisciplinary project, STARWARS is to address this challenge by providing novel proposals for the management of heterogeneous data in stormwater and wastewater networks. The STARWARS project aims to bring together researchers from the AI and Water Sciences communities in order to enhance the emergence of new practical solutions for representing, managing, modelling, merging, completing, reasoning, explaining and query answering over data of different forms pertaining to stormwater and wastewater networks.
The project is implemented through five work packages (WP) as.
WP1: Data Collection and Data Completion
WP2: Unreliable and Heterogeneous Data Modelling
WP3: Practical Merging, Inconsistency and Clustering
WP4: Tractable Query-answering, Explainability, Algorithms and Validations
WP5: Project management, Communication, Dissemination and Training
Within this context, the scientific guiding principle of this multidisciplinary project, STARWARS (STormwAteR and WastewAteR networkS heterogeneous data AI-driven management), is to address the challenges identified above by providing novel proposals for the management of heterogeneous data in stormwater and wastewater networks.
Heterogeneous wastewater and stormwater network data first refer to data of different natures such as datasets of factual data, geographical data, various types of images, digital maps (e.g., Figure 3), analogue maps, intervention reports, etc