For a mobile robot that performs online model learning, the learning rate is a function of the robot's trajectory. The tracking errors that arise when the robot executes a motion plan depend on how well the robot has learned its own model. Therefore a planner that seeks to minimize collisions with obstacles will choose plans that decrease modeling errors if it can predict the learning rate for each plan. In this paper we present an integrated planning and learning algorithm for a simple mobile robot that finds safe, efficient plans through a grid world to a goal point using a standard optimal planner, A*. Simulation results show that with this algorithm the robot practices maneuvers in the open regions of the configuration space, if necessa...
Autonomous robots execute complex behaviours to operate and perform tasks in real-world environme...
Path planning and trajectory planning is an important aspect of navigation in the field of robotics ...
This thesis describes a predictive sampling-based algorithm for real-time robot motion planning to r...
Robust motion planning algorithms for mobile robots consider stochasticity in the dynamic model of t...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
In this paper we are on erned with the problem of mobile robot path learning on an unknown world en...
The development of robots that learn from experience is a relentless challenge confronting artificia...
Although robots play increasingly important roles in automated production due to their high efficien...
Real world robot tasks are so complex that it is hard to hand-tune all of the domain knowledge, espe...
We present an approach to make planning adaptive in order to enable context-aware mobile robot navig...
A lot research has been conducted in the field of autonomous navigation of mobile robots with focus ...
The problem of adapting mobile robot navigation to changes in the environment is usually approached ...
textAutonomous mobile robots have the potential to be extremely beneficial to society due to their a...
Navigation is one of the research topics that are greatly funded by both government and private s...
Autonomous robots execute complex behaviours to operate and perform tasks in real-world environme...
Path planning and trajectory planning is an important aspect of navigation in the field of robotics ...
This thesis describes a predictive sampling-based algorithm for real-time robot motion planning to r...
Robust motion planning algorithms for mobile robots consider stochasticity in the dynamic model of t...
In robotics, path planning refers to finding a short. collision-free path from an initial robot conf...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
In this paper we are on erned with the problem of mobile robot path learning on an unknown world en...
The development of robots that learn from experience is a relentless challenge confronting artificia...
Although robots play increasingly important roles in automated production due to their high efficien...
Real world robot tasks are so complex that it is hard to hand-tune all of the domain knowledge, espe...
We present an approach to make planning adaptive in order to enable context-aware mobile robot navig...
A lot research has been conducted in the field of autonomous navigation of mobile robots with focus ...
The problem of adapting mobile robot navigation to changes in the environment is usually approached ...
textAutonomous mobile robots have the potential to be extremely beneficial to society due to their a...
Navigation is one of the research topics that are greatly funded by both government and private s...
Autonomous robots execute complex behaviours to operate and perform tasks in real-world environme...
Path planning and trajectory planning is an important aspect of navigation in the field of robotics ...
This thesis describes a predictive sampling-based algorithm for real-time robot motion planning to r...