Abstract: The main goal of the paper is to show that nonlinear model based predictive control is an effective alternative method for controlling uncertain nonlinear underactuated systems satisfying real time expectations where uncertainty is caused by friction and disturbance. The paper presents control algorithms for a two degree of freedom robot and for two underactuated systems, the small size model of a planar crane and a weeled mobile robot, which are based on nonlinear model predictive control. The continuous time dynamic model has been discretized and the finite dimensional optimization problem is solved by conjugate gradient technique in every horizon. Extended Kalman filter is used for state and disturbance estimation. For the cran...
The paper deals with model predictive control of underactuated nonlinear mechatronical systems along...
In industrial control systems, practical interest is driven by the fact that today’s processes need ...
As autonomous systems are deployed in increasingly complex and uncertain environments, safe, accurat...
Abstract: The paper presents control algorithms for a two degree of freedom robot, the small size mo...
AbstractThis paper presents an adaptive model predictive control scheme to control the underactuated...
Model Predictive Control (MPC) is an optimization-based control technique that has received an incre...
In the practical cases, a manipulator is required to perform tasks, usually end-effector position an...
International audienceIn this paper, a Nonlinear Model Predictive Control (NMPC) has been employed t...
In robotics applications, Model Predictive Control (MPC) has been limited in the past to linear mode...
The paper discusses predictive control algorithms in the context of applications to robotics and man...
This research work is focused on solving the practical problems that arise in trajectory tracking co...
Controlling mechanisms whose equations of motion involve nonlinear discontinuous terms is difficult....
An application of Non-Linear Model Predictive Control (NLMPC) to the stabilisation of a kinematic mo...
Control of underactuated robots has received significant attention and its application areas compris...
In the field of robotics, model predictive control is considered as a promising control strategy du...
The paper deals with model predictive control of underactuated nonlinear mechatronical systems along...
In industrial control systems, practical interest is driven by the fact that today’s processes need ...
As autonomous systems are deployed in increasingly complex and uncertain environments, safe, accurat...
Abstract: The paper presents control algorithms for a two degree of freedom robot, the small size mo...
AbstractThis paper presents an adaptive model predictive control scheme to control the underactuated...
Model Predictive Control (MPC) is an optimization-based control technique that has received an incre...
In the practical cases, a manipulator is required to perform tasks, usually end-effector position an...
International audienceIn this paper, a Nonlinear Model Predictive Control (NMPC) has been employed t...
In robotics applications, Model Predictive Control (MPC) has been limited in the past to linear mode...
The paper discusses predictive control algorithms in the context of applications to robotics and man...
This research work is focused on solving the practical problems that arise in trajectory tracking co...
Controlling mechanisms whose equations of motion involve nonlinear discontinuous terms is difficult....
An application of Non-Linear Model Predictive Control (NLMPC) to the stabilisation of a kinematic mo...
Control of underactuated robots has received significant attention and its application areas compris...
In the field of robotics, model predictive control is considered as a promising control strategy du...
The paper deals with model predictive control of underactuated nonlinear mechatronical systems along...
In industrial control systems, practical interest is driven by the fact that today’s processes need ...
As autonomous systems are deployed in increasingly complex and uncertain environments, safe, accurat...