SELF-COMPETITION LEADER–FOLLOWER MULTI-AUV FORMATION CONTROL BASED ON IMPROVED PSO ALGORITHM WITH ENERGY CONSUMPTION ALLOCATION, 288-301.

Yue Li,∗ Xin Li,∗ Daqi Zhu,∗ and Simon X. Yang∗∗

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