Multi-USV System Formation Control Based on Improved DWA Algorithm in Unknown Complex Environment

Author:

Zhang Kun1,Li Yongguo1,Wang Yuanrong1,Xie Jia1

Affiliation:

1. Shanghai Ocean University

Abstract

Abstract

This paper explores the challenges of multiple unmanned surface vehicles (USVs) to maintain formation and effectively avoid obstacles in unknown and complex marine environments. To this end, a novel formation control strategy based on the improved VSAPF method is proposed in this paper. The core concept is to apply the improved dynamic window approach (DWA) to the formation control algorithm at the formation reference point. First, the DWA algorithm is improved. This includes a revision of the velocity window and three existing evaluation functions, while a new evaluation function is introduced. This new function expands the sampling range of velocity and improves the scoring of favorable trajectories. In addition, adaptive weighting coefficients are employed to enhance the USV's target navigation and global search capabilities in unknown environments and to effectively mitigate the local minima problem. The proposed method is applicable to USV formations with various virtual structures. Finally, extensive simulations in Matlab demonstrate the effectiveness of the improved VSAPF method. The results show that the method achieves stable formation maintenance, flexible obstacle avoidance and transformation. In addition, the improved DWA greatly improves the passage efficiency and global search capability of USVs in unknown environments.

Publisher

Springer Science and Business Media LLC

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