APPROXIMATION-BASED EVENT-TRIGGERED CONTROL AGAINST UNKNOWN INJECTION DATA IN FULL STATES AND ACTUATOR OF UNCERTAIN LOWER-TRIANGULAR NONLINEAR SYSTEMS

Approximation-Based Event-Triggered Control Against Unknown Injection Data in Full States and Actuator of Uncertain Lower-Triangular Nonlinear Systems

Approximation-Based Event-Triggered Control Against Unknown Injection Data in Full States and Actuator of Uncertain Lower-Triangular Nonlinear Systems

Blog Article

This paper addresses an approximation-based adaptive event-triggered control problem against unknown injection data in full state measurements and an actuator of systems with unknown strict-feedback nonlinearities.It is assumed that full state variables measured for state-feedback control are corrupted by unknown injection data that denote cyber attacks or fault signals, and all system nonlinearities are unknown.Owing to the corrupted state venus tops and blouses feedback information, error surfaces using exactly measured state variables become unknown during the recursive control design procedure for strict-feedback nonlinear systems.Thus, they cannot be used to implement the adaptive event-triggered controller.

To address this problem, an approximation-based adaptive recursive event-triggered control design using the corrupted state variables is established to ensure that error surfaces using exactly measured state variables converge to an adjustable neighborhood of the origin in the Lyapunov sense.The adaptive controller and its event-triggering law using corrupted states are designed under uncertain injection data where the adaptive injection data shoprider streamer parts compensators using the neural networks are constructed to deal with the unknown injection data effects.The stability of the closed-loop systems and the exclusion of Zeno behavior are analyzed.

Report this page