Human-centric Digital Twin Approaches to Trustworthy AI and Robotics for Improved Working Conditions

Digital, Industry & SpaceHORIZON-IAID: 101135990
EC Contribution
€68,187
Consortium Size
18 orgs
Start Year
2024
Summary

AI4Work will investigate practical methods and tools for optimal sharing of work between humans and AI/robots. AI and robotics are likely to be most powerful means for radical improvement of working conditions in diverse domains, as they can support human operators in diverse tasks starting from difficult and tedious manual labor tasks up to complex decision-making tasks. The vision of the AI4Work project is to improve communication and collaboration between humans, AI and robots, allowing for an improvement of the working conditions within different processes in organisations in several domains in terms of increased efficiency of work, reduction in stress upon employees, increased confidence in decision-making process etc. Due to the high level of uncertainty in modern organisations an appropriate balance between human and machine activities must be found. The key assumption is that to cope with the required flexibility and dynamics, Sliding Work Sharing (SWS), where this balance varies during the operation depending on the situational context, machine-based confidence levels and human interactions, is likely to be the most appropriate for modern organisations. The key challenge of the project is to develop a set of common methods and tools (methodology framework, digital twin service platform, SW building blocks for SWS) that can be applied in diverse sectors and with different AI/robotics services, allowing for an effective experience exchange. The project will make use of living digital twins of working systems as a mean to increase efficiency and trustworthiness of AI/robotics solutions. By this, the project, aiming at improved quality of jobs and creating more decent work for human operators, will contribute to the acceptance of the AI/robots support of work in diverse domains. The project will be driven by six pilots in different sectors: logistics, manufacturing industry, construction, healthcare, education and agriculture.

Consortium (18)

Project Results (19)

Source: CORDIS, the EU research results database.

Publications (8)
Adaptive Human-Robot Collaborative Missions using Hybrid Task Planning
20th International Conference on Software Engineering for Adaptive and Self-Managing Systems , Otawa, Canada· 2025DOI
Vazquez Flores, Gricel; Evangelidis, Alexandros; Shahbeigi Roudposhti, Sepeedeh; Gerasimou, Simos
Students' Burnout Symptoms Detection Using Smartwatch Wearable Devices: A Systematic Literature Review
AI Sensors· 2025DOI
Lialiou, Paschalina; Maglogiannis, Ilias
A Meta-Engine Framework for Interleaved Task and Motion Planning using Topological Refinements
Frontiers in Artificial Intelligence and Applications· 2024DOI
Tosello, Elisa; Valentini, Alessandro; Micheli, Andrea
AI4Work Project: Human Centric Digital Twin Approaches to Trustworthy AI and Robotics for Improved Working Conditions in Healthcare and Education Sectors
IOS Press Series Studies in Health Technology and Informatics· 2024DOI
Maglogiannis, Ilias; Trastelis, Filimon; KALOGEROPOULOS, MICHAEL; Khan, Arsalan; Gallos, Parisis; Menychtas, Andreas; Panagopoulos, Christos; PAPACHRISTOU, Petros; ISLAM, Najmul; Wolff, Annika; Pinto Soares, Salviano; Hansen, Scott; Scholze, Sebastian
An Overview of Tools and Technologies for Anxiety and Depression Management Using AI
Applied Sciences· 2024DOI
Adrianos Pavlopoulos; Theodoros Rachiotis; Ilias Maglogiannis
Exploration of core concepts required for mid- and domain-level ontology development to facilitate explainable-AI-readiness of data and models
International Workshop on Data meets Applied Ontologies in Explainable AI (DAO-XAI 2024)· 2024DOI
Horsch, M. T., Chiacchiera, S., Todorov, I. T., Correia, A. T., Dey, A., Konchakova, N. A., Scholze, S., Stephan, S., Tøndel, K., Sarkar, A., Karray, M. H., Al Machot, F., & Schembera, B.
Manufacturing workers fatigue: an exploratory study on predictive machine learning and cross-subject generalization with implications for work design
IFAC-PapersOnLine· 2024DOI
Emmanouilidis, Christos; Elias, Montini; Cutrona, Vincenzo; Jože M., Rožanec
Temporal Task and Motion Planning with Metric Time for Multiple Object Navigation
Proceedings of the AAAI Conference on Artificial Intelligence· 2024DOI
Tosello, Elisa; Valentini, Alessandro; Micheli, Andrea
Deliverables (11)