A Hierarchal Planning Framework for AUV Mission Management in a Spatio-Temporal Varying Ocean
Somaiyeh Mahmoud.Zadeh, Karl Sammut, David M.W Powers, Adham Atyabi,, Amir Mehdi Yazdani

TL;DR
This paper introduces a hierarchical dynamic planning framework for AUVs that manages tasks and trajectories in uncertain, variable ocean environments, enhancing mission success and adaptability.
Contribution
It presents a novel two-level hierarchical planning system combining reactive task assignment and trajectory optimization using BBO, tailored for uncertain undersea conditions.
Findings
Framework effectively re-allocates tasks in real-time
Trajectory planning adapts to terrain changes
Simulation results show high mission success rate
Abstract
The purpose of this paper is to provide a hierarchical dynamic mission planning framework for a single autonomous underwater vehicle (AUV) to accomplish task-assign process in a limited time interval while operating in an uncertain undersea environment, where spatio-temporal variability of the operating field is taken into account. To this end, a high level reactive mission planner and a low level motion planning system are constructed. The high level system is responsible for task priority assignment and guiding the vehicle toward a target of interest considering on-time termination of the mission. The lower layer is in charge of generating optimal trajectories based on sequence of tasks and dynamicity of operating terrain. The mission planner is able to reactively re-arrange the tasks based on mission/terrain updates while the low level planner is capable of coping unexpected changes…
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Taxonomy
TopicsUnderwater Vehicles and Communication Systems · Maritime Navigation and Safety · Robotic Path Planning Algorithms
