A Testbed for Investigating Task Allocation Strategies between Air Traffic Controllers and Automated Agents

Authors

  • Nathan Schurr Aptima Inc.
  • Richard Good Aptima Inc
  • Amy Alexander Aptima Inc
  • Paul Picciano Aptima Inc
  • Gabriel Ganberg Aptima Inc.
  • Michael Therrien Aptima Inc
  • Bettina L. Beard NASA Ames Research Center
  • Jon Holbrook San Jose State University Research Foundation

DOI:

https://doi.org/10.1609/aaai.v24i2.18822

Abstract

To meet the growing demands of the National Airspace System (NAS) stakeholders and provide the level of service, safety and security needed to sustain future air transport, the Next Generation Air Transportation System (NextGen) concept calls for technologies and systems offering increasing support from automated systems that provide decision-aiding and optimization capabilities. This is an exciting application for some core aspects of Artificial Intelligence research since the automation must be designed to enable the human operators to access and process a myriad of information sources, understand heightened system complexity, and maximize capacity, throughput and fuel savings in the NAS.. This paper introduces an emerging application of techniques from mixed initiative (adjustable autonomy), multi-agent systems, and task scheduling techniques to the air traffic control domain. Consequently, we have created a testbed for investigating the critical challenges in supporting the early design of systems that allow for optimal, context-sensitive function (role) allocation between air traffic controller and automated agents. A pilot study has been conducted with the testbed and preliminary results show a marked qualitative improvement in using dynamic function allocation optimization versus static function allocation.

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Published

2010-07-11

How to Cite

Schurr, N., Good, R., Alexander, A., Picciano, P., Ganberg, G., Therrien, M., Beard, B., & Holbrook, J. (2010). A Testbed for Investigating Task Allocation Strategies between Air Traffic Controllers and Automated Agents. Proceedings of the AAAI Conference on Artificial Intelligence, 24(2), 1839-1845. https://doi.org/10.1609/aaai.v24i2.18822