AWARE - Achieving Human-Machine Collaboration with Artificial Situational Awareness

Project: Funded researchEU - European Union

Project Details

Description

The goal of the project is to enable human-machine collaboration by using an artificial situational awareness system which is enabling AI to anticipate and respond to human needs by understanding human intent and goals. While humans are extensively trained to understand the capabilities, limitations, and functionality of the machines they are using, further improvements in human-machine collaboration are currently hindered by lack of awareness of human's intent on the side of machines. The project will develop and test an AI Assistant Application providing adaptable human-centric support to enhance air traffic controller's (ATCO) performance and to reduce ATCO’s workload despite high task complexity. This will be achieved by development of human-machine collaboration environment that relies on recognition of ATCO intent, ATCO situation awareness (compared to machine situation awareness) and ATCO mental load. ATCO's intent will be analysed by tracking their attention and human-machine interactions and comparing them to the tasks that need solving as assessed by the artificial situational awareness system. Adaptable support will then be provided either in solving the task they are currently focused on or solving an unrelated task autonomously. This will allow ATCOs to maintain their skills and expertise while preventing a shift towards supervisory control that has been demonstrated to undermine human capability to take-over in situations with degraded automation. A goal of the adaptable and human-aware system is to maintain ATCOs in an active role, to train their skills and expertise on the job while selectively using higher levels of automation to augment capacity. ATCOs are supported in their tasks rather than substituted by automation. It is expected that ATCOs can handle high-complexity scenarios when assisted by an attention-aware support system. ATCO workload is expected to decrease with the use of support functions.
StatusActive
Effective start/end date01.06.202430.11.2026

Collaborative partners

  • Johannes Kepler University Linz (lead)
  • TERN - TERN Systems EHF (Project partner)
  • FTTS - University of Zagreb, Faculty of Transport and Traffic Sciences (Project partner)
  • LFV - Luftfartsverket (Project partner)
  • UkSATSE - Ukrainian State Air Traffic Services Enterprise (Project partner)
  • UPM - Universidad Politecnica de Madrid (Project partner)
  • Slot Consulting (Project partner)

Fields of science

  • 102028 Knowledge engineering
  • 102016 IT security
  • 102027 Web engineering
  • 503008 E-learning
  • 102 Computer Sciences
  • 502058 Digital transformation
  • 509026 Digitalisation research
  • 502050 Business informatics
  • 102030 Semantic technologies
  • 102033 Data mining
  • 102010 Database systems
  • 102035 Data science
  • 102015 Information systems
  • 102025 Distributed systems

JKU Focus areas

  • Digital Transformation