Published October 8, 2022 | Version v1
Conference paper Open

Creating an ATC knowledge graph in support of the artificial situational awareness system

  • 1. Institute of Business Informatics - Data and Knowledge Engineering, Johannes Kepler University of Linz
  • 2. Department of Aeronautics, Faculty of Transport and Traffic Sciences, University of Zagreb

Description

Automation has been recognized as a possible solution for increasing air traffic controller workload trends. This paper presents a methodology for creating an air traffic control knowledge graph, which is used as part of a hybrid artificial intelligence system for air traffic control operations. The system combines machine learning and symbolic reasoning with the purpose of achieving artificial situational awareness in a narrow domain of en-route air traffic control operations. This approach allows the use of user-defined knowledge alongside existing knowledge repositories. The novel knowledge graph development methodology is universal for any area of air traffic management which relies on the aeronautical information exchange models. In this paper we also present the open-source tools which were developed to make this approach possible and system performance evaluations. Future work should address achieving real-time operation and additional task automation, accompanied by appropriate ontology and graph expansion.

Files

Creating an ATC knowledge graph in support of the artificial situational awareness system.pdf

Additional details

Funding

AISA – AI Situational Awareness Foundation for Advancing Automation 892618
European Commission