ORPP - An Ontology for Skill-Based Robotic Process Planning in Agile Manufacturing
Version
Published
Date Issued
2024-09-14
Author(s)
Type
Article
Language
English
Abstract
Ontology plays a significant role in AI (Artificial Intelligence) and robotics by providing structured data, reasoning, action understanding, context awareness, knowledge transfer, and semantic learning. The structured framework created by the ontology for knowledge representation is crucial for enabling intelligent behavior in robots. This paper provides a state-of-the-art analysis on the existing ontology approaches and at the same time consolidates the terms in the robotic task planning domain. The major gap identified in the literature is the need to bridge higher-level robotic process management and lower-level robotic control. This gap makes it difficult for operators/non-robotic experts to integrate robots into their production processes as well as evaluate key performance indicators (KPI) of the processes. To fill the gap, the authors propose an ontology for skill-based robotics process planning (ORPP). ORPP not only provides a standardization in the robotic process planning in the agile manufacturing domain but also enables non-robotic experts to design and plan their production processes using an intuitive Process-Task-Skill-Primitive structure to control low-level robotic actions. On the performance level, this structure provides traceability of the KPIs down to the robot control level.
Publisher DOI
Journal or Serie
Electronics
Publisher URL
Volume
13
Issue
18
Publisher
MDPI
Submitter
Baier, Norman Urs
Citation apa
Zhang Sprenger, C., Corrales Ramón, J. A., & Baier, N. U. (2024). ORPP - An Ontology for Skill-Based Robotic Process Planning in Agile Manufacturing. In Electronics (Vol. 13, Issue 18). MDPI. https://doi.org/10.24451/dspace/11295
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electronics-13-03666-2.pdf
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Attribution 4.0 International
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