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AI-Enabled Disaster Response Planning for Multi-robot and Autonomous Systems via Task Scheduling and Path-Finding

Springer Proceedings in Advanced Robotics, ISSN: 2511-1264, Vol: 32 SPAR, Page: 258-262
2024
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Conference Paper Description

With the increasing interest in autonomous vehicles and robots, new systems that can handle heterogeneous Multi-Robot and Autonomous Systems (MRAS) are needed. In this paper, we want to propose a system to coordinate and manage a generic unmanned team of land and aerial heterogeneous robots in a highly dynamic environment, to address emergencies and hazardous environments, such as in Disaster Response (DR) scenarios via a rapid scheduling and allocation algorithm. To do this we propose a greedy heuristic algorithm to solve this dynamic problem while also considering all the major constraints a fleet of robots could incur, by decomposing the whole problem and optimising over each of its sub-parts.

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