Learning Robot Environment through Simulation
Data(s) |
20/10/2011
20/10/2011
2011
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Resumo |
Traditionally simulators have been used extensively in robotics to develop robotic systems without the need to build expensive hardware. However, simulators can be also be used as a “memory”for a robot. This allows the robot to try out actions in simulation before executing them for real. The key obstacle to this approach is an uncertainty of knowledge about the environment. The goal of the Master’s Thesis work was to develop a method, which allows updating the simulation model based on actual measurements to achieve a success of the planned task. OpenRAVE was chosen as an experimental simulation environment on planning,trial and update stages. Steepest Descent algorithm in conjunction with Golden Section search procedure form the principle part of optimization process. During experiments, the properties of the proposed method, such as sensitivity to different parameters, including gradient and error function, were examined. The limitations of the approach were established, based on analyzing the regions of convergence. |
Identificador |
http://www.doria.fi/handle/10024/72122 URN:NBN:fi-fe201110205723 |
Idioma(s) |
en |
Palavras-Chave | #simulation #robotic manipulation and grasping #world model #sensors #optimization |
Tipo |
Master's thesis Diplomityö |