EU research


AI-ARC - Artificial Intelligence based Virtual Control Room for the Arctic

2024-03-13

After three years of hard work the AI-ARC ("Artificial Intelligence based Virtual Control Room for the Arctic") EU-funded research and innovation project concluded in February 2024.

Started in 2021, the project’s main objective was to create an innovative and user-friendly AI based platform, the Virtual Control Room, aiming to improve maritime situational awareness, decision-making, communication, and thus safety of all maritime actors, particularly in the Arctic Sea.

The project was implemented by a consortium of 22 partners from 12 countries, coordinated by Laurea university (Finland) and involving as end users the Icelandic Coastguard, the Maritime and Coastguard Agency (UK), the Swedish Coastguard, the Joint Rescue and Coordination Centre Northern Norway and the Department of Defence – Irish Naval Service.

The project developed a suite of innovative services:


Predictive Artificial Intelligence

  • Prediction of Icepack & Iceberg Movement

Prediction of icepack and ice cover along shipping lanes using weather information, radar, optical images and maritime traffic data. Prediction of the need for icebreaker aid in an area, via ice status of shipping lanes and icebreaker movement.

Iceberg track prediction uses a deep neural network to analyse historical track records from satellite images, together with weather and sea conditions.

  • Vessel Traffic Prediction Service

Vessel movement prediction is carried out over various timeframes using a Machine Learning approach on AIS data, which is specifically designed for rapid processing. Deviations from predictions by actual ship movements are detected and heatmaps of historical vessel movement events are generated, over the sea area of interest.

  • Search and Rescue – Wide Area Search

A service for SAR authorities to predict the drift track of a missing vessel, combined with dynamic search pattern updates to the SAR vessel bridge. It is based on last known position, weather and ocean current data, combined with satellite-based image recognition data.


Anomaly Detection and Intent Recognition

  • Vessel Behaviour

A suite of services based on a variety of anomaly-detection methods – AI, ML & deep learning – to identify misalignments, deviations and outliers in the behaviour of vessels, using their positions and trajectories.

  • Environmental Emergency

Automated detection of oil spills or other environmental emergencies based on processing Earth Observation (Satellite) data. Results are visualized in the AI-ARC platform, enhancing the probability of detecting unexpected phenomena.


Safe Navigation

  • Satellite-Based Sea Ice Coverage Maps

Sea ice concentration maps are derived from CMEMS (Copernicus Maritime Environment Monitoring Service) daily data. Maps are provided via the AI-ARC system to aid safe navigation and route planning.

  • Risk Index Computation Service

Provides end users with a visual 5-level risk indication for navigation based on a multi-criteria model, dynamically updated, based on vessel data, meteorological and ocean conditions.

  • Reliability Assessment of ML-Services

A service to assess AI models based on their reliability in terms of the technical aspects: transparency, performance, and robustness.


Links


Interviews with end-users