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Toward efficient task assignment and motion planning for large-scale underwater missions

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journal contribution
posted on 2016-10-19, 00:00 authored by Somaiyeh MahmoudZadeh, D M W Powers, K Sammut, A Yazdani
An autonomous underwater vehicle needs to possess a certain degree of autonomy for any particular underwater mission to fulfil the mission objectives successfully and ensure its safety in all stages of the mission in a large-scale operating field. In this article, a novel combinatorial conflict-free task assignment strategy, consisting of an interactive engagement of a local path planner and an adaptive global route planner, is introduced. The method takes advantage of the heuristic search potency of the particle swarm optimization algorithm to address the discrete nature of routing-task assignment approach and the complexity of nondeterministic polynomial-time-hard path planning problem. The proposed hybrid method is highly efficient as a consequence of its reactive guidance framework that guarantees successful completion of missions particularly in cluttered environments. To examine the performance of the method in a context of mission productivity, mission time management, and vehicle safety, a series of simulation studies are undertaken. The results of simulations declare that the proposed method is reliable and robust, particularly in dealing with uncertainties, and it can significantly enhance the level of a vehicle’s autonomy by relying on its reactive nature and capability of providing fast feasible solutions.

History

Journal

International Journal of Advanced Robotic Systems

Volume

13

Issue

5

Pagination

1 - 13

Publisher

SAGE PUBLICATIONS INC

ISSN

1729-8806

eISSN

1729-8814

Language

English

Publication classification

C1.1 Refereed article in a scholarly journal

Copyright notice

2016, The Author(s)

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