Path Planning for Autonomous Underwater Vehicles (AUVs) Considering the Influences and Constraints of Ocean Currents

Drones Pub Date : 2024-07-26 DOI:10.3390/drones8080348
Ziming Chen, Jinjin Yan, Ruen Huang, Yisong Gao, Xiuyan Peng, Weijie Yuan
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Abstract

Ocean currents pose a significant challenge in the path planning of autonomous underwater vehicles (AUVs), with conventional path-planning algorithms often failing to effectively counter these influences. In response to this challenge, we propose a path-planning algorithm that can consider the influences and constraints of ocean currents, which leverages the strengths of two widely employed path-planning algorithms, A* and the genetic algorithm (GA), to account for the influences of ocean currents on the planned paths. Specifically, it enhances the initial population generation, formulates a fitness function tailored to ocean current conditions, and employs an adaptive mutation approach to enhance population diversity and stability. By utilizing simulated and real-world ocean current datasets, we validated the feasibility of the proposed algorithm with quantitative metrics. The results demonstrate that in comparison to conventional methods, the new algorithm can deal with the influences and constraints of ocean currents in AUV path planning, resulting in notable enhancements in path smoothness, energy efficiency, and safety.
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考虑洋流影响和制约因素的自主潜水器 (AUV) 路径规划
洋流给自主潜水器(AUV)的路径规划带来了巨大挑战,传统的路径规划算法往往无法有效地应对这些影响。为了应对这一挑战,我们提出了一种能够考虑洋流影响和约束的路径规划算法,该算法充分利用了两种广泛使用的路径规划算法(A*和遗传算法(GA))的优势,以考虑洋流对规划路径的影响。具体来说,它增强了初始种群的生成,制定了适合洋流条件的适应度函数,并采用自适应突变方法来提高种群的多样性和稳定性。通过利用模拟和实际海流数据集,我们用量化指标验证了所提算法的可行性。结果表明,与传统方法相比,新算法能够处理 AUV 路径规划中洋流的影响和限制,从而显著提高路径的平滑性、能效和安全性。
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