Journal of Marine Science and Engineering (Aug 2024)

Autonomous Underwater Vehicle Path Planning Based on Improved Salp Swarm Algorithm

  • Xuan Guo,
  • Dongming Zhao,
  • Tingting Fan,
  • Fei Long,
  • Caihua Fang,
  • Yang Long

DOI
https://doi.org/10.3390/jmse12081446
Journal volume & issue
Vol. 12, no. 8
p. 1446

Abstract

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Aiming at the problem of path planning for autonomous underwater vehicle (AUV) to cope with the influence of obstacles and eddies in complex marine environments, a path planning method based on an improved salp swarm algorithm (ISSA) is proposed. Firstly, the motion model of the AUV and eddy current model are constructed, including the relationship between position, velocity, attitude, and control inputs. Secondly, the improved SSA is proposed, which introduces the Levy flight strategy to enhance the algorithm’s optimization seeking ability and adds a nonlinear convergence factor to enhance the convergence ability of the algorithm. The stability and robustness of the improved algorithm are verified by test functions. Finally, the ISSA is applied to AUV path planning, which optimizes the AUV travel distance, improves the search efficiency and accuracy, and avoids the local optimum of the algorithm. The ISSA enhances the adaptive ability and robustness of the algorithm by introducing a dynamic adjustment strategy and feedback mechanism. Experimental verification is carried out using a simulated marine environment. The results show that the ISSA is better than the traditional algorithm in terms of path length as well as algorithm stability, and can effectively improve the navigation performance of AUV.

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