[[abstract]]This paper presents an adaptive neural net controller for controlling given plants which are unknown. In the neural net structure, a two-layered network is used to emulate the unknown plant dynamics, and another two-layer neural network, which is the inverse of the estimator, is used to generate the control action on-line. A modified Widrow-Hoff delta rule is adopted as a learning algorithm to minimize the error between the real plant response and the output of the estimator. An effective learning method which is based on sliding motions is provided to tune the control action to improve the system performance and convergence. The major advantage of the proposed approach is that the lengthy training of the controller might be eli...
Using neural networks, this paper proposes a new model-following adaptive control design technique f...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
[[abstract]]This paper presents a stability method which is based on the stability condition of slid...
This paper shows, how wellknown supervised learning techniques can be applied to learn control of un...
The paper investigates the possibility of using a simple approximation for evaluating the error whic...
This paper proposes a new neural adaptive control methodthat can perform adaptive control and identi...
This paper proposes a new neural adaptive control methodthat can perform adaptive control and identi...
This paper proposes a new neural adaptive control methodthat can perform adaptive control and identi...
This paper proposes a new neural adaptive control methodthat can perform adaptive control and identi...
A three-stage procedure for design of a neural-net controller for nonlinear plants is developed. The...
We have presented a method for the evaluation of the error to be back-propagated. The method allows ...
This paper is about synthesis quasi-optimal control system in uncertain conditions with neural netwo...
This paper is about synthesis quasi-optimal control system in uncertain conditions with neural netwo...
A neural network controller is described and implemented for controlling the vibration of a rotor-be...
Using neural networks, this paper proposes a new model-following adaptive control design technique f...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
[[abstract]]This paper presents a stability method which is based on the stability condition of slid...
This paper shows, how wellknown supervised learning techniques can be applied to learn control of un...
The paper investigates the possibility of using a simple approximation for evaluating the error whic...
This paper proposes a new neural adaptive control methodthat can perform adaptive control and identi...
This paper proposes a new neural adaptive control methodthat can perform adaptive control and identi...
This paper proposes a new neural adaptive control methodthat can perform adaptive control and identi...
This paper proposes a new neural adaptive control methodthat can perform adaptive control and identi...
A three-stage procedure for design of a neural-net controller for nonlinear plants is developed. The...
We have presented a method for the evaluation of the error to be back-propagated. The method allows ...
This paper is about synthesis quasi-optimal control system in uncertain conditions with neural netwo...
This paper is about synthesis quasi-optimal control system in uncertain conditions with neural netwo...
A neural network controller is described and implemented for controlling the vibration of a rotor-be...
Using neural networks, this paper proposes a new model-following adaptive control design technique f...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...