Skip to main content

Automatic Speech Recognition and Understanding for Radar Label Maintenance Support Increases Safety and Reduces Air Traffic Controllers’ Workload

Paper ID

ATM-2023-004

Conference

USA/Europe ATM R&D Seminar

Year

2023

Theme

Human Factors

Project Name

SESAR 2020 IR Wave 2 project PJ10-W2 PROSA

Keywords:

air traffic controller’s workload, artificial intelligence, automatic speech recognition, automatic speech understanding, human factors, saftety, situation awareness

Authors

Hartmut Helmke, Matthias Kleinert, Nils Ahrenhold, Heiko Ehr, Thorsten Mühlhausen, Oliver Ohneiser, Lucas Klamert, Petr Motlicek, Amrutha Prasad, Juan Pablo Zuluaga-Gomez, Jelena Dokic and Ella Pinska Chauvin

DOI

Project Number

874464

Abstract

Air traffic controllers (ATCos) from Austro Control together with DLR quantified the benefits of automatic speech recognition and understanding (ASRU) on workload and flight safety. As the baseline procedure, ATCos enter all clearances manually (by mouse) into the aircraft radar labels. As part of our proposed solution, the ATCos are supported by ASRU, which is capable of delivering the required inputs automatically. The ATCos are only prompted to make corrections, when ASRU provided incorrect output. Overall amount of time required for manually inserting clearances, i.e., by clicking and selecting the correct input on the screen, reduced from 12,800 seconds during 14 hours of simulations time down to 405 seconds, when ATCos were supported by ASRU. A reduction of radar label maintenance time through ASRU might not be surprising given earlier experiments. However, a factor greater than 30 outperforms earlier findings. In addition, this paper also considers safety aspects, i.e., how often ATCos support provided an incorrect input into the aircraft radar labels with and without ASRU. This paper shows that ASRU systems based on artificial intelligence are reliable enough for their integration into air traffic control operations rooms.