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Active HORIZON European Commission

Robotic Safe Adaptation In unprecedented Situations

€6.88M EUR

Funder European Commission
Recipient Organization Aarhus Universitet
Country Denmark
Start Date Jan 01, 2024
End Date Dec 31, 2026
Duration 1,095 days
Number of Grantees 10
Roles Coordinator; Participant; Associated Partner
Data Source European Commission
Grant ID 101133807
Grant Description

The robots of tomorrow will be endowed with the ability to adapt to drastic and unpredicted changes in their environment including humans.Such adaptations can however not be boundless: the robot must stay trustworthy, i.e. the adaptations should not be just a recoveryinto a degraded functionality.

Instead, it must be a true adaptation, meaning that the robot will change its behavior while maintainingor even increasing its expected performance, and stays at least as safe and robust as before.RoboSAPIENS will focus on autonomous robotic software adaptations and will lay the foundations for ensuring that such softwareadaptations are carried out in an intrinsically safe, trustworthy and efficient manner, thereby reconciling open-ended self-adaptationwith safety by design.

RoboSAPIENS will also transform these foundations into 'first time right'-design tools and robotic platforms,and will validate and demonstrate them up to TRL4.To achieve this over-all goal, RoboSAPIENS will extend the state of the art in four main objectives.1.

It will enable robotic open-ended self-adaptation in response to unprecedented system structural and environmental changes.2. It will advance safety engineering techniques to assure robotic safety not only before, during and after adaptation.3. It will advance deep learning techniques to actively reduce uncertainty in robotic self-adaptation.4.

It will assure trustworthiness of systems that use both deep-learning and computational architectures for robotic self-adaptation.To realise these objectives, RoboSAPIENS will extend techniques such as MAPE-K (Monitor, Analyze, Plan, Execute, Knowledge) andDeep Learning to set up generic adaptation procedures and also use an SSH dimension.RoboSAPIENS will demonstrate this trustworthy robotic self-adaptation on four industry-scale use cases centered around an industrialdisassembly robot, a warehouse robotic swarm, a prolonged hull of an autonomous vessel, and human-robotic interaction.

All Grantees

Aarhus Universitet; Pal Robotics Slu; Universiteit Antwerpen; Aristotelio Panepistimio Thessalonikis; Fraunhofer Gesellschaft Zur Forderung Der Angewandten Forschung Ev; Teknologisk Institut; Simula Research Laboratory As; University of York; Digitalent Group Sl; Norges Teknisk-Naturvitenskapelige Universitet Ntnu

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