A genetic algorithm-inspired UUV path planner based on dynamic programming
journal contribution
posted on 2024-11-02, 08:20 authored by Chi Tsun ChengChi Tsun Cheng, Kia Fallahi, Henry Leung, Chi TsePath planning can be viewed as an optimization process in which an optimum path between two points is to be found under some predefined constraints. Some typical constraints are path length, fuel consumption, and path safety factor. Exact algorithms such as linear programming (LP) and dynamic programming (DP) are widely adopted in vehicle maneuvering systems. However, as the problem domain scales up, exact algorithms suffer from high computational complexity. In contrast, metaheuristic algorithms such as evolutionary algorithms (EA) and genetic algorithms (GA) can provide suboptimum solutions without the full understanding of the problem domain. Metaheuristic algorithms are capable of providing decent solutions within a finite period of time, even for large-scaled problems. In this paper, a GA-inspired unmanned underwater vehicle (UUV) path planner based on DP is proposed. Simulation results show that the proposed algorithm can outperform a GA-based UUV path planner in terms of speed and solution quality. © 2012 IEEE.
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IEEE Transactions on Systems, Man and Cybernetics Part C: Applications and ReviewsVolume
42Number
6135820Issue
6Start page
1128End page
1134Total pages
7Publisher
IEEEPlace published
United StatesLanguage
EnglishCopyright
© 2012 IEEEFormer Identifier
2006083861Esploro creation date
2020-06-22Fedora creation date
2018-09-21Usage metrics
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