Task-based ad-hoc teamwork with adversary
Task-based ad-hoc teamwork with adversary
Many real-world applications require agents to cooperate and collaborate to accomplish shared missions; though, there are many instances where the agents should work together without communication or prior coordination. In the meantime, agents often coordinate in a decentralised manner to complete tasks that are displaced in an environment (e.g., foraging, demining, rescue or firefighting). Each agent in the team is responsible for selecting their own task and completing it autonomously. However, there is a possibility of an adversary in the team, who tries to prevent other agents from achieving their goals. In this study, we assume there is an agent who estimates the model of other agents in the team to boost the team’s performance regardless of the enemy’s attacks. Hence, we present On-line Estimators for Ad-hoc Task Allocation with Adversary (OEATA-A), a novel algorithm to have better estimations of the teammates’ future behaviour, which includes identifying enemies among friends.
76 - 87
Shafipour Yourdshahi, Elnaz
a2e1dea9-d3c0-4288-afdc-197df65f2556
Fallah, Saber
11a83625-774e-40b1-b6c3-9c9383535e90
8 September 2021
Shafipour Yourdshahi, Elnaz
a2e1dea9-d3c0-4288-afdc-197df65f2556
Fallah, Saber
11a83625-774e-40b1-b6c3-9c9383535e90
Shafipour Yourdshahi, Elnaz and Fallah, Saber
(2021)
Task-based ad-hoc teamwork with adversary.
In Towards Autonomous Robotic Systems Conference (TAROS).
.
(doi:10.1007/978-3-030-89177-0).
Record type:
Conference or Workshop Item
(Paper)
Abstract
Many real-world applications require agents to cooperate and collaborate to accomplish shared missions; though, there are many instances where the agents should work together without communication or prior coordination. In the meantime, agents often coordinate in a decentralised manner to complete tasks that are displaced in an environment (e.g., foraging, demining, rescue or firefighting). Each agent in the team is responsible for selecting their own task and completing it autonomously. However, there is a possibility of an adversary in the team, who tries to prevent other agents from achieving their goals. In this study, we assume there is an agent who estimates the model of other agents in the team to boost the team’s performance regardless of the enemy’s attacks. Hence, we present On-line Estimators for Ad-hoc Task Allocation with Adversary (OEATA-A), a novel algorithm to have better estimations of the teammates’ future behaviour, which includes identifying enemies among friends.
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More information
Published date: 8 September 2021
Venue - Dates:
22nd annual conference, TAROS 2021, , Lincoln, United Kingdom, 2021-09-08 - 2021-09-10
Identifiers
Local EPrints ID: 468385
URI: http://eprints.soton.ac.uk/id/eprint/468385
PURE UUID: 0214b1b1-7f16-48ef-8451-146e53e6c8ec
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Date deposited: 11 Aug 2022 17:13
Last modified: 16 Mar 2024 21:10
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Contributors
Author:
Elnaz Shafipour Yourdshahi
Author:
Saber Fallah
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