Characterization of Indicators for Adaptive Human-Swarm Teaming

Author:

Hussein Aya,Ghignone Leo,Nguyen Tung,Salimi Nima,Nguyen Hung,Wang Min,Abbass Hussein A.

Abstract

Swarm systems consist of large numbers of agents that collaborate autonomously. With an appropriate level of human control, swarm systems could be applied in a variety of contexts ranging from urban search and rescue situations to cyber defence. However, the successful deployment of the swarm in such applications is conditioned by the effective coupling between human and swarm. While adaptive autonomy promises to provide enhanced performance in human-machine interaction, distinct factors must be considered for its implementation within human-swarm interaction. This paper reviews the multidisciplinary literature on different aspects contributing to the facilitation of adaptive autonomy in human-swarm interaction. Specifically, five aspects that are necessary for an adaptive agent to operate properly are considered and discussed, including mission objectives, interaction, mission complexity, automation levels, and human states. We distill the corresponding indicators in each of the five aspects, and propose a framework, named MICAH (i.e., Mission-Interaction-Complexity-Automation-Human), which maps the primitive state indicators needed for adaptive human-swarm teaming.

Funder

Australian Research Council

Publisher

Frontiers Media SA

Subject

Artificial Intelligence,Computer Science Applications

Reference92 articles.

1. The Computational Air Traffic Control Brain: Computational Red Teaming and Big Data for Real-Time Seamless Brain-Traffic Integration;Abbass;J. Air Traffic Control.

2. Trusted Autonomy and Cognitive Cyber Symbiosis: Open Challenges;Abbass;Cogn. Comput.,2016

3. Augmented Cognition Using Real-Time EEG-Based Adaptive Strategies for Air Traffic Control;Abbass;Proc. Hum. Factors Ergon. Soc. Annu. Meet.

4. A Survey of Inverse Reinforcement Learning: Challenges, Methods and Progress;Arora;Artif. Intelligence,2021

5. Model-based vs Data-Driven Adaptive Control: an Overview;Benosman;Int. J. Adapt Control. Signal. Process.,2018

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