Dynamic Optimal Obstacle Avoidance Control of AUV Formation Based on MLoTFWA Algorithm
Juan Li,
Donghao Sun,
Di Wu
et al.
Abstract:In addressing the optimal formation obstacle avoidance control problem for Autonomous Underwater Vehicles (AUVs) in environments with unknown and moving obstacles, this paper employs the Modified Fireworks Algorithm based on a Loser Elimination Mechanism (MLoTFWA) and constructs a Distributed Model Predictive Control (DMPC) framework to achieve obstacle avoidance for AUV formations. Initially, a prediction model is established, followed by feedback compensation to mitigate the effects of unknown perturbations.… Show more
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