The paper proposes a multiple models based control methodology for the solution of the tracking problem for mobile robots. The proposed method utilizes multiple models of the robot for its identification in an adaptive and learning control framework. Radial Basis Function Networks (RBFNs) are considered for the multiple models in order to exploit the non-linear approximation capabilities of the nets for modeling the kinematic behaviour of the vehicle and for reducing unmodelled tracking errors contributions. The training of the nets and the control performance analysis have been done in a real experimental setup. The experimental results are satisfactory in terms of tracking errors and computational efforts and show the improvement in the t...
AbstractThis paper presents the application of adaptive neural networks to robot manipulator control...
In this work, original results, concerning the application of a discrete-time adaptive PID neural co...
. In contrast to most applications, it is not suitable for autonomous agents to distinguish between ...
The paper proposes a multiple models based control methodology for the solution of the tracking prob...
A real-time multiprocessor system is proposed for the solution of the tracking problem of mobile rob...
In this thesis, we investigate how dynamics in recurrent neural networks can be used to solve some s...
A general methodology for the identification and control of dynamical systems with several operating...
The paper proposes a neural networks approach to the solution of the tracking problem for mobile rob...
The paper proposes a neural networks approach to the solution of the tracking problem for mobile rob...
This paper analyses a trajectory tracking control problem for a wheeled mobile robot, Rusing integra...
Controller adaptation is always a major concern. A controller that meets certain performance design...
This thesis addresses the manipulation control of a mobile robot with the support of a sensor networ...
AA-1 'APprove(I for public release; distribution unlimited-- l • I II i II il I Preface The pur...
We study the problem of formation control and trajectory tracking for multiple nonholonomic mobile r...
The goal of this chapter is to enable a nonholonomic mobile robot to track a specified trajectory wi...
AbstractThis paper presents the application of adaptive neural networks to robot manipulator control...
In this work, original results, concerning the application of a discrete-time adaptive PID neural co...
. In contrast to most applications, it is not suitable for autonomous agents to distinguish between ...
The paper proposes a multiple models based control methodology for the solution of the tracking prob...
A real-time multiprocessor system is proposed for the solution of the tracking problem of mobile rob...
In this thesis, we investigate how dynamics in recurrent neural networks can be used to solve some s...
A general methodology for the identification and control of dynamical systems with several operating...
The paper proposes a neural networks approach to the solution of the tracking problem for mobile rob...
The paper proposes a neural networks approach to the solution of the tracking problem for mobile rob...
This paper analyses a trajectory tracking control problem for a wheeled mobile robot, Rusing integra...
Controller adaptation is always a major concern. A controller that meets certain performance design...
This thesis addresses the manipulation control of a mobile robot with the support of a sensor networ...
AA-1 'APprove(I for public release; distribution unlimited-- l • I II i II il I Preface The pur...
We study the problem of formation control and trajectory tracking for multiple nonholonomic mobile r...
The goal of this chapter is to enable a nonholonomic mobile robot to track a specified trajectory wi...
AbstractThis paper presents the application of adaptive neural networks to robot manipulator control...
In this work, original results, concerning the application of a discrete-time adaptive PID neural co...
. In contrast to most applications, it is not suitable for autonomous agents to distinguish between ...