A HMM-based approach to learning probability models of programming strategies for industrial robots

The integration of industrial robot systems into the manufacturing environments of small and medium sized enterprises is a key requirement to guarantee competitiveness and productivity. Due to the still complex and time-consuming procedure of robot path definition, novel programming strategies are n...

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Hauptverfasser: Hollmann, Rebecca, Rost, Arne, Hagele, Martin, Verl, Alexander
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:The integration of industrial robot systems into the manufacturing environments of small and medium sized enterprises is a key requirement to guarantee competitiveness and productivity. Due to the still complex and time-consuming procedure of robot path definition, novel programming strategies are needed, converting the robotic system into a flexible coworker that actively supports its operator. In this paper, a learning-from-demonstration strategy based on Hidden Markov Models is presented, which permits the robot system to adapt to user- as well as process-specific features. To evaluate the suitability of this approach for small-lot production, the learning strategy has been implemented for an arc welding robot and has been evaluated on-site at a medium sized metal-working company.
ISSN:1050-4729
2577-087X
DOI:10.1109/ROBOT.2010.5509888