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Distributed adaptive neural control for uncertain multi-agent systems with unknown actuator failures and unknown dead zones

机译:具有未知执行器故障和未知死区的不确定多种子体系统的分布式自适应神经控制

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摘要

In actuality, the dead zones and failures often occur in actuators, but the existing algorithms have difficulty simultaneously tolerating dead zones and actuator failures in multi-agent systems. In this paper, the directed topology, uncertain dynamics, unknown dead zones and actuator failures are simultaneously taken into account for the multi-agent systems. By introducing distributed backstepping technique, the radial basis function neural networks and a bound estimation approach, the distributed fault-tolerant tracking controllers and relative adaptive laws for each follower are proposed, which guarantee all followers reach the synchronization and obtain the ideal tracking performance. Comparing with the existing results, it is a new attempt for strict-feedback multi-agent system to take unknown dead zones and unknown actuator failures into consideration. Moreover, the basis function vectors in RBF NNs are no longer required for controllers to decrease computational burden significantly. In the end, the efficiency of our proposed algorithm is verified by comparison simulation results.
机译:实际上,执行器中的死区和故障通常发生在执行器中,但现有的算法难以同时容忍多种子体系统中的死区和执行器故障。在本文中,对于多种子体系统,同时考虑了指向拓扑,不确定动态,未知的死区和执行器故障。通过引入分布式反向技术,提出了径向基函数神经网络和绑定估计方法,提出了每个跟随器的分布式容错跟踪控制器和相对自适应法,保证所有追随者达到同步并获得理想的跟踪性能。与现有结果相比,这是一个新的尝试考虑未知死区和未知的执行器故障。此外,控制器不再需要RBF NNS中的基函数向量,以减少计算负担。最后,通过比较模拟结果验证了我们所提出的算法的效率。

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