Today, Industry 4.0 leads to massive data collection and analysis in order to improve product quality and applicability. Suitable approaches have already been conceptualized, e.g., Condition Monitoring and Predictive Maintenance. While IoT and Cloud Computing concepts contribute to managing the enormous amounts of data, the analysis turns out to be a significant challenge. To map the actual condition of a machine, the measurements must be recorded together with their interrelations and dependencies. This additional information is currently hardly considered, whereby the data lose meaning and do not represent a sufficient basis for decision-making. Conflicts of interest further complicate the data presentation. On the one side, a manufacturer-independent representation should enable interoperability, on the other side, the data should be enriched by domain-specific knowledge. So far, experts have unconsciously concluded such meanings from their expertise.
This work introduces a progressive approach to represent machine-readable knowledge with Semantic Web technologies to increase the meaning of machine data. Therefore, concepts are introduced which enable to express knowledge on a domain and cross-domain abstraction level. Requirements are obtained by analyzing machine models and current challenging business use cases of two machine manufacturers. Consequently, a prototype is shown, which integrates a semantic representation for typical IoT scenarios.
Semantic Machine Twins: Use Cases, Concepts, Prototype
Ulm University Ulm UniversityMA Abschlussvortrag, Michael Jäckle, Ort: O27/5202, Datum: 05.02.2019, Zeit: 09:30 Uhr