In this paper,a cooperative adaptive control of leader-following uncertain nonlinear multiagent systems is proposed.The communication network is weighted undirected graph with fixed topology.The uncertain nonlinear mo...In this paper,a cooperative adaptive control of leader-following uncertain nonlinear multiagent systems is proposed.The communication network is weighted undirected graph with fixed topology.The uncertain nonlinear model for each agent is a higher-order integrator with unknown nonlinear functions,unknown disturbances and unknown input actuators.Meanwhile,the gains of input actuators are unknown nonlinear functions with unknown sign.Two most common behaviors of input actuators in practical applications are hysteresis and dead-zone.In this paper,backlash-like hysteresis and dead-zone are used to model the input actuators.Using universal approximation theorem proved for neural networks,the unknown nonlinear functions are tackled.The unknown weights of neural networks are derived by proposing appropriate adaptive laws.To cope with modeling errors and disturbances an adaptive robust structure is proposed.Considering Lyapunov synthesis approach not only all the adaptive laws are derived but also it is proved that the closed-loop network is cooperatively semi-globally uniformly ultimately bounded(CSUUB).In order to investigate the effectiveness of the proposed method,it is applied to agents modeled with highly nonlinear mathematical equations and inverted pendulums.Simulation results demonstrate the effectiveness and applicability of the proposed method in dealing with both numerical and practical multi-agent systems.展开更多
文摘In this paper,a cooperative adaptive control of leader-following uncertain nonlinear multiagent systems is proposed.The communication network is weighted undirected graph with fixed topology.The uncertain nonlinear model for each agent is a higher-order integrator with unknown nonlinear functions,unknown disturbances and unknown input actuators.Meanwhile,the gains of input actuators are unknown nonlinear functions with unknown sign.Two most common behaviors of input actuators in practical applications are hysteresis and dead-zone.In this paper,backlash-like hysteresis and dead-zone are used to model the input actuators.Using universal approximation theorem proved for neural networks,the unknown nonlinear functions are tackled.The unknown weights of neural networks are derived by proposing appropriate adaptive laws.To cope with modeling errors and disturbances an adaptive robust structure is proposed.Considering Lyapunov synthesis approach not only all the adaptive laws are derived but also it is proved that the closed-loop network is cooperatively semi-globally uniformly ultimately bounded(CSUUB).In order to investigate the effectiveness of the proposed method,it is applied to agents modeled with highly nonlinear mathematical equations and inverted pendulums.Simulation results demonstrate the effectiveness and applicability of the proposed method in dealing with both numerical and practical multi-agent systems.