Bi-objective trail-planning for a robot team orienteering in a hazardous environment
Teams of mobile [aerial, ground, or aquatic] robots have applications in resource delivery, patrolling, information-gathering, agriculture, forest fire fighting, chemical plume source localization and mapping, and search-and-rescue. Robot teams traversing hazardous environments -- with e.g. rough te...
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Zusammenfassung: | Teams of mobile [aerial, ground, or aquatic] robots have applications in
resource delivery, patrolling, information-gathering, agriculture, forest fire
fighting, chemical plume source localization and mapping, and
search-and-rescue. Robot teams traversing hazardous environments -- with e.g.
rough terrain or seas, strong winds, or adversaries capable of attacking or
capturing robots -- should plan and coordinate their trails in consideration of
risks of disablement, destruction, or capture. Specifically, the robots should
take the safest trails, coordinate their trails to cooperatively achieve the
team-level objective with robustness to robot failures, and balance the reward
from visiting locations against risks of robot losses. Herein, we consider
bi-objective trail-planning for a mobile team of robots orienteering in a
hazardous environment. The hazardous environment is abstracted as a directed
graph whose arcs, when traversed by a robot, present known probabilities of
survival. Each node of the graph offers a reward to the team if visited by a
robot (which e.g. delivers a good to or images the node). We wish to search for
the Pareto-optimal robot-team trail plans that maximize two [conflicting] team
objectives: the expected (i) team reward and (ii) number of robots that survive
the mission. A human decision-maker can then select trail plans that balance,
according to their values, reward and robot survival. We implement ant colony
optimization, guided by heuristics, to search for the Pareto-optimal set of
robot team trail plans. As a case study, we illustrate with an
information-gathering mission in an art museum. |
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DOI: | 10.48550/arxiv.2409.12114 |