A key challenge for SaR robotics is to avoid dynamic obstacles in cluttered environments, with limited and noisy information. In this research, a controller for SaR robots is developed by coupling a local heuristic motion planner with a model predictive control (MPC) based trajectory tracker. Constraint tightening and tube-based control are used to make the MPC robust to model mismatch and additive measurement noise, while the motion planner is integrated with the MPC. The motion planner periodically supplies a reference trajectory to the trajectory tracker, but the MPC can request additional updates in case of a noticeable mismatch between the predicted and measured environment, based on a user-defined threshold. A case study is designed i...
The rapid increase in designing, manufacturing, and using autonomous robots has attracted numerous r...
A novel model predictive control- (MPC-) based trajectory tracking controller for mobile robot is pr...
Abstract—A nonlinear model predictive control algorithm is developed for obstacle avoidance in high-...
This research aims to improve autonomous navigation of coal mine rescue and detection robot, elimina...
This compilation thesis presents an overarching framework on the utilization of nonlinear model pred...
Unmanned Aerial Vehicles (UAVs) have recently been used in a wide variety of applications due to the...
Unmanned Aerial Vehicles (UAVs) have recently been used in a wide variety of applications due to the...
A redundant robotic system must execute a task in a workspace populated by obstacles whose motion is...
A novel model predictive control (MPC) formulation, named multi-trajectory MPC (mt-MPC), is presente...
Historically, robots have successfully performed various tasks in isolated areas by following prepro...
AbstractThis paper introduces a kinodynamic motion planning algorithm for Unmanned Aircraft Systems ...
This article presents a model predictive control based obstacle avoidance algorithm for autonomous g...
This paper introduces a kinodynamic motion planning algorithm for Unmanned Aircraft Systems (UAS), c...
A system generally has one or more input signals and one or more output signals. By far, the greates...
The main focus of this thesis is on the motion planning and control of mobile robots in dynamic unst...
The rapid increase in designing, manufacturing, and using autonomous robots has attracted numerous r...
A novel model predictive control- (MPC-) based trajectory tracking controller for mobile robot is pr...
Abstract—A nonlinear model predictive control algorithm is developed for obstacle avoidance in high-...
This research aims to improve autonomous navigation of coal mine rescue and detection robot, elimina...
This compilation thesis presents an overarching framework on the utilization of nonlinear model pred...
Unmanned Aerial Vehicles (UAVs) have recently been used in a wide variety of applications due to the...
Unmanned Aerial Vehicles (UAVs) have recently been used in a wide variety of applications due to the...
A redundant robotic system must execute a task in a workspace populated by obstacles whose motion is...
A novel model predictive control (MPC) formulation, named multi-trajectory MPC (mt-MPC), is presente...
Historically, robots have successfully performed various tasks in isolated areas by following prepro...
AbstractThis paper introduces a kinodynamic motion planning algorithm for Unmanned Aircraft Systems ...
This article presents a model predictive control based obstacle avoidance algorithm for autonomous g...
This paper introduces a kinodynamic motion planning algorithm for Unmanned Aircraft Systems (UAS), c...
A system generally has one or more input signals and one or more output signals. By far, the greates...
The main focus of this thesis is on the motion planning and control of mobile robots in dynamic unst...
The rapid increase in designing, manufacturing, and using autonomous robots has attracted numerous r...
A novel model predictive control- (MPC-) based trajectory tracking controller for mobile robot is pr...
Abstract—A nonlinear model predictive control algorithm is developed for obstacle avoidance in high-...