计算机科学
控制(管理)
认证
功能(生物学)
订单(交换)
人工智能
财务
政治学
进化生物学
生物
经济
法学
作者
Xiao Li,Y. T. Cheng,Xingling Shao,Jun Liu,Qingzhen Zhang
标识
DOI:10.1109/jiot.2025.3557790
摘要
This paper presents a safety-certified optimal for-mation control scheme for nonlinear multi-agents to realize de-sired formation configuration under safety constraints, guaran-teeing a compromise between safety-critical and energy-saving performances. Firstly, a self-learning optimal formation policy enables agents to achieve optimal formation configuration, wherein optimal performance is guaranteed via a computational-ly-efficient adaptive dynamic programming (ADP) framework. Furthermore, by revisiting real-time and historical information, a novel weight updating rule with fixed-time convergence is elabo-rated, such that rapid weight regulation is realized without de-pending on the initial choices. Secondly, a minimally-invasive safe control policy with high-order control barrier function con-straints is constructed in obstacles-clustered environments, wherein collision risk is excluded by ensuring the forward invari-ance of the safety set. It is strictly proved that closed-loop errors are uniformly ultimately bounded. Finally, extensive simulations are verified the values and superiorities of proposed method.
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