Periodic Reporting for period 1 - AWARE (ACHIEVING HUMAN-MACHINE COLLABORATION WITH ARTIFICIAL SITUATIONAL AWARENESS)
Período documentado: 2024-06-01 hasta 2025-05-31
Building on the results of a previous SESAR project, which demonstrated that an AI system is capable of using air traffic information to build an understanding of the traffic situation (i.e. artificial situational awareness), project AWARE aims to broaden that awareness by including human controllers' goals and intent. It would do so by tracking visual attention, but improved by including other inputs such as how the controller interacts with their work station. By also forming a complete picture of the traffic situation, the system would also be able to detect if the human controller is experiencing loss of situational awareness and assist them in bringing them back "into the loop". This would allow the system to provide better, human-centric support to ATCOs. By modifiying its outputs to their needs, it could improve their performance and reduce workload in complex traffic situations. ATCOs would be able to modify how support from the AI system manifests, or more precisely which actions the asisstant completes. It is also of interest to see if the benefits of using an AI assistant may be transferred to other roles within air traffic management, beyond en-route air traffic control.
System-wise, it was necessary to introduce changes into the artificial situational awareness (ASA) system architecture. After the architecure was updated, it was crucial to connect the system to its primary data source (the Polaris ATM System) and to create space for data not utilised in project AISA - eye-tracking, HMI interactions, etc. Simultaneously, work was done on the modules which will help the system to create artificial situational awareness, assess ATCO intent and workload, provide support, and perform chosen ATCO tasks.
AWARE ConOps is completed and submitted, describing how the project aims to build on previous work and findings by improving the ASA system. Planned improvements focus on determining ATCO intent, building a human-machine interface, and introducing adaptable automation. New data sources (intent/HMI/prioritization modules) will introduce meta-data which was not available in project AISA, so there are changes which will be introduced into the Data Management Plan when those modules are finished. All completed and upcoming research is laid out in two versions of the Exploratory Research Plan. Most other deliverables have been submitted for comments, while others are under consideration of the consortium and should be available soon.
Current work is divided into developing:
1) Modes of human-machine collaboration;
2) A method to track attention and intent;
3) ATCO supporting tools.
A necessity for further work is access to air traffic situation data. Data will be exported from an ATC simulator, so necessary adjustments - for the chosen airspace and module needs - are being introduced. Data samples are continuously provided to all partners who are working on software development to get feedback and improve information flows. Data preparations will culminate in data collection experiments, providing the final piece for module development.
These results would directly affect safety of ATC operations by providing an additional safety net. An AI application capable of assessing intent could help to keep air traffic controllers in the loop or provide support to return them to the loop in case of loss of situational awareness. This would decrease activations of other safety net alerts.
By supporting ATCOs in completing tasks or by autonomously completing some tasks, the AI assistant application would decrease the human controllers' workload, allowing them to more easily handle higher amounts of traffic. This would result in higher en-route capacity.
Improving ATC processes would positively affect both environmental and cost concerns. Better traffic handling is directly connected to lower emissions via a more efficient aircraft utilization - either by enabling more direct routes or higher flight levels. Better handling naturally increases the overall efficiency of the system.
By using an actual ATM system (compared to a research-focused one), this project provides a more direct path towards higher TRL levels. Future avenues should consider more closely integrating the artificial situational awareness system with the underlying platform. Further development could include other parts of ATC systems (e.g. voice communication, other ATCO positions). Providing support in a manner more familiar to the ATCOs would be beneficial for system acceptance, a point highlighted within the results of project AISA.