Using Semantic Web Services for AI-Based Research in Industry 4.0
- URL: http://arxiv.org/abs/2007.03580v1
- Date: Tue, 7 Jul 2020 15:58:10 GMT
- Title: Using Semantic Web Services for AI-Based Research in Industry 4.0
- Authors: Lukas Malburg and Patrick Klein and Ralph Bergmann
- Abstract summary: We present semantic web services for AI-based research in Industry 4.0.
We developed more than 300 semantic web services for a physical simulation factory based on Web Ontology Language for Web Services and Web Service Modeling Ontology.
We evaluate our implementation by executing a cyber-physical workflow composed of semantic web services.
- Score: 0.8164433158925591
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The transition to Industry 4.0 requires smart manufacturing systems that are
easily configurable and provide a high level of flexibility during
manufacturing in order to achieve mass customization or to support cloud
manufacturing. To realize this, Cyber-Physical Systems (CPSs) combined with
Artificial Intelligence (AI) methods find their way into manufacturing shop
floors. For using AI methods in the context of Industry 4.0, semantic web
services are indispensable to provide a reasonable abstraction of the
underlying manufacturing capabilities. In this paper, we present semantic web
services for AI-based research in Industry 4.0. Therefore, we developed more
than 300 semantic web services for a physical simulation factory based on Web
Ontology Language for Web Services (OWL-S) and Web Service Modeling Ontology
(WSMO) and linked them to an already existing domain ontology for intelligent
manufacturing control. Suitable for the requirements of CPS environments, our
pre- and postconditions are verified in near real-time by invoking other
semantic web services in contrast to complex reasoning within the knowledge
base. Finally, we evaluate our implementation by executing a cyber-physical
workflow composed of semantic web services using a workflow management system.
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