Skip to main content

A User Study Evaluation of Predictive Formal Modelling at Runtime in Human-Swarm Interaction.

Abioye, A. O., Hunt, W., Gu, Y., Schneiders, E., Naiseh, M., Archibald, B., Sevegnani, M., Ramchurn, S. D., Fischer, J. E. and Soorati, M. D., 2025. A User Study Evaluation of Predictive Formal Modelling at Runtime in Human-Swarm Interaction. ACM Transactions on Human Robot Interaction, 14 (4), 58.

Full text available as:

[thumbnail of OPEN ACCESS ARTICLE]
Preview
PDF (OPEN ACCESS ARTICLE)
3727989.pdf - Published Version
Available under License Creative Commons Attribution.

9MB

DOI: 10.1145/3727989

Abstract

Formal Modelling is often used as part of the design and testing process of software development to ensure that components operate within suitable bounds even in unexpected circumstances. We conducted a user study evaluation of predictive formal modelling (PFM) at runtime in a human-swarm mission to determine the benefit of PFM on performance and human-swarm interaction. A total of 180 participants were recruited to perform the role of aerial swarm operators delivering parcels to target locations in a simulation environment. The PFM model was integrated into the simulation software to inform the operator of the estimated mission completion time given the current number of drones deployed. The operator could increase the number of parcels delivered in any timestep by adding drones, which also increased costs, thus requiring the use of the minimum number of drones necessary to complete the task in the given time. We collected user feedback using standard survey questionnaires and measured performance using data obtained from the Human and Robot Interactive Swarm (HARIS) simulator. Our results show that PFM increased the performance of the human swarm team without significantly increasing the operators' workload or affecting the system's usability.

Item Type:Article
Group:Faculty of Science & Technology
ID Code:41549
Deposited By: Symplectic RT2
Deposited On:21 Nov 2025 09:39
Last Modified:21 Nov 2025 09:49

Downloads

Downloads per month over past year

More statistics for this item...
Repository Staff Only -