Efficient task and path planning for maintenance automation using a robot system
By: Christian Friedrich , Akos Csiszar , Armin Lechler and more
Potential Business Impact:
Robots learn to fix machines by themselves.
The research and development of intelligent automation solutions is a ground-breaking point for the factory of the future. A promising and challenging mission is the use of autonomous robot systems to automate tasks in the field of maintenance. For this purpose, the robot system must be able to plan autonomously the different manipulation tasks and the corresponding paths. Basic requirements are the development of algorithms with a low computational complexity and the possibility to deal with environmental uncertainties. In this work, an approach is presented, which is especially suited to solve the problem of maintenance automation. For this purpose, offline data from CAD is combined with online data from an RGBD vision system via a probabilistic filter, to compensate uncertainties from offline data. For planning the different tasks, a method is explained, which use a symbolic description, founded on a novel sampling-based method to compute the disassembly space. For path planning we use global state-of-the art algorithms with a method that allows the adaption of the exploration stepsize in order to reduce the planning time. Every method is experimentally validated and discussed.
Similar Papers
Maintenance automation: methods for robotics manipulation planning and execution
Robotics
Robots can now fix things even when things change.
Vision-Aided Online A* Path Planning for Efficient and Safe Navigation of Service Robots
Robotics
Robot sees important things, not just obstacles.
Hierarchical Planning and Scheduling for Reconfigurable Multi-Robot Disassembly Systems under Structural Constraints
Robotics
Robots take apart things without breaking them.