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Adaptive Neural Network Control for Missile Systems With Unknown Hysteresis Input | IEEE Journals & Magazine | IEEE Xplore

Adaptive Neural Network Control for Missile Systems With Unknown Hysteresis Input


The designed control procedure diagram

Abstract:

Most existing results do not take the effects of backlash hysteresis of actuators into account in a controller design of missile systems, but such hysteresis seems inevit...Show More

Abstract:

Most existing results do not take the effects of backlash hysteresis of actuators into account in a controller design of missile systems, but such hysteresis seems inevitable in practice. In this paper, a robust adaptive neural network (NN) control law for a missile system with unknown parameters and hysteresis input is proposed based on a backstepping technique. The controller is designed by introducing NN approximation, which can be adjusted by an adaptive law based on the backstepping approach. The developed NN controller does not require a priori knowledge of the unknown backlash hysteresis. In particular, unlike existing results on adaptive compensation for unknown backlash hysteresis, the sign of b is no longer needed. It is shown that the designed controller can ensure the stability and tracking performance of the closed-loop system.
The designed control procedure diagram
Published in: IEEE Access ( Volume: 5)
Page(s): 15839 - 15847
Date of Publication: 17 July 2017
Electronic ISSN: 2169-3536

Funding Agency:


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