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Ontology Based AI Planning and Scheduling for Robotic Assembly

Jingyun Zhao, Birgit Vogel-Heuser, Jicong Ao, Yansong Wu, Liding Zhang, Bi Fandi, Dominik Hujo, Zhenshan Bing, Fan Wu, Alois Knoll, Sami Haddadin, Bernd Vojanec, Timo Markert, André Kraft

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Abstract

The rising demand for customized products neces- sitates the integration of multiple robotic systems, underscoring the need for advanced production planning and scheduling. This paper introduces an ontology-based, artificial intelligence- enhanced method for dynamic task planning and scheduling, aimed at improving the efficiency of production process, reduc- ing machine downtime, and consequently increasing throughput in assembly operations. Designed to generate and execute feasible production plans dynamically, this method minimizes manual planning and scheduling efforts. We evaluate its effec- tiveness using two gear assembly use cases with various robot skills, highlighting its flexibility in planning and scheduling and its contributions to the evolution of smart manufacturing. The method’s adaptability suggests its applicability across diverse smart factory environments.

Index terms

Planning Scheduling and Coordination Task Planning Intelligent and Flexible Manufacturing