Title :
A Simplified Adaptive Neural Network Prescribed Performance Controller for Uncertain MIMO Feedback Linearizable Systems
Author :
Theodorakopoulos, Achilles ; Rovithakis, George A.
Author_Institution :
Dept. of Electr. & Comput. Eng., Aristotle Univ. of Thessaloniki, Thessaloniki, Greece
Abstract :
In this paper, the problem of deriving a continuous, state-feedback controller for a class of multiinput multioutput feedback linearizable systems is considered with special emphasis on controller simplification and reduction of the overall design complexity with respect to the current state of the art. The proposed scheme achieves prescribed bounds on the transient and steady-state performance of the output tracking errors despite the uncertainty in system nonlinearities. Contrary to the current state of the art, however, only a single neural network is utilized to approximate a scalar function that partly incorporates the system nonlinearities. Furthermore, the loss of model controllability problem, typically introduced owing to approximation model singularities, is avoided without attaching additional complexity to the control or adaptive law. Simulations are performed to verify and clarify the theoretical findings.
Keywords :
MIMO systems; adaptive control; continuous systems; control nonlinearities; control system synthesis; controllability; feedback; linearisation techniques; neurocontrollers; uncertain systems; approximation model singularities; continuous state-feedback controller; controller simplification; design complexity reduction; model controllability problem; multiple input multiple output systems; performance controller; scalar function; simplified adaptive neural network; system nonlinearities; uncertain MIMO feedback linearizable systems; Adaptation models; Approximation methods; Control design; Controllability; Neural networks; Steady-state; Transient analysis; Neuro-adaptive control; robust adaptive control; uncertain nonlinear systems; uncertain nonlinear systems.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2320305