Effective marine conservation and management require ecological monitoring in the form of intensive real-time data collection over large spatial scales. The combined use of fixed platforms (e.g., cabled observatories) and research vessels with platforms of different levels of teleoperated autonomy (e.g., remotely operated vehicles (ROVs) and autonomous underwater vehicles (AUVs) can contribute to the acquisition of large multiparametric biological and environmental data. If those data are spatially combined, sufficient spatial coverage can be achieved for ecological monitoring. A digital twin of the ocean (DTO) approach can then be used as a virtual representation of that monitored space, enabling multiparametric analyses of environmental patterns and processes affecting biodiversity and species distributions, as well as socioeconomic activities. Here, we propose a general architecture for a DTO centred on real-time data collection from local networks on fixed and mobile platforms, such as the physical twin observers (PTO), which is synergistically merged with platforms operating at large geographic scales. We describe a roadmap to achieve this DTO via 4 key steps: (1) acquisition of in situ data with a robotic network of platforms; (2) the application of AI in image processing for extracting biological data; (3) big data management with data bubbles; and (4) development of the resulting DTO framework for providing ecosystem monitoring via the computation of ecological indicators and socioecological modelling.

A digital-twin strategy using robots for marine ecosystem monitoring / Aguzzi, Jacopo; Chatzidouros, Elias; Chatzievangelou, Damianos; Clavel-Henry, Morane; Flögel, Sascha; Bahamon, Nixon; Tangerlini, Michael; Thomsen, Laurenz; Picardi, Giacomo; Navarro, Joan; Masmitja, Ivan; Robinson, Nathan J.; Nattkemper, Tim; Stefanni, Sergio; Quintana, José; Campos, Ricard; García, Rafael; Fanelli, Emanuela; Francescangeli, Marco; Mirimin, Luca; Danovaro, Roberto; Toma, Daniel Mihai; Del Rio-Fernandez, Joaquín; Martinez, Enoc; Baños, Pol; Prat, Oriol; Sarria, David; Carandell, Matias; White, Jonathan; Parissis, Thomas; Panagiotidou, Stavroula; Quevedo, Juliana; Gallegati, Silvia; Grinyó, Jordi; Simon-Lledó, Erik; Company, Joan B.; Doyle, Jennifer. - In: ECOLOGICAL INFORMATICS. - ISSN 1574-9541. - 91:(2025). [10.1016/j.ecoinf.2025.103409]

A digital-twin strategy using robots for marine ecosystem monitoring

Aguzzi, Jacopo;Fanelli, Emanuela;Francescangeli, Marco;Danovaro, Roberto;Gallegati, Silvia;
2025-01-01

Abstract

Effective marine conservation and management require ecological monitoring in the form of intensive real-time data collection over large spatial scales. The combined use of fixed platforms (e.g., cabled observatories) and research vessels with platforms of different levels of teleoperated autonomy (e.g., remotely operated vehicles (ROVs) and autonomous underwater vehicles (AUVs) can contribute to the acquisition of large multiparametric biological and environmental data. If those data are spatially combined, sufficient spatial coverage can be achieved for ecological monitoring. A digital twin of the ocean (DTO) approach can then be used as a virtual representation of that monitored space, enabling multiparametric analyses of environmental patterns and processes affecting biodiversity and species distributions, as well as socioeconomic activities. Here, we propose a general architecture for a DTO centred on real-time data collection from local networks on fixed and mobile platforms, such as the physical twin observers (PTO), which is synergistically merged with platforms operating at large geographic scales. We describe a roadmap to achieve this DTO via 4 key steps: (1) acquisition of in situ data with a robotic network of platforms; (2) the application of AI in image processing for extracting biological data; (3) big data management with data bubbles; and (4) development of the resulting DTO framework for providing ecosystem monitoring via the computation of ecological indicators and socioecological modelling.
2025
Data integration; Ecological indicators; Machine learning; Marine monitoring; Robotic platforms; Spatial modelling
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/357481
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