Supply Chain Management aims at optimizing the flow of goods and services from the producer to the consumer. Closely interconnected enterprises that align their production, logistics and procurement with one another thus enjoy a competitive advantage in the market. To achieve a close alignment, an instant, robust and efficient information flow along the supply chain between and within enterprises is required. However, less efficient human communication is often used instead of automatic systems because of the great diversity of enterprise systems and models. This paper describes an approach and its implementation SCM Intelligence App, which enables the configuration of individual supply chains together with the execution of industry accepted performance metrics. Based on machine-processable supply chain data model (the SCORVoc RDF vocabulary implementing the SCOR standard) and W3C standardized protocols such as SPARQL, the approach represents an alternative to closed software systems, which lack support for interorganizational supply chain analysis. Finally, we demonstrate the practicality of our approach using a prototypical implementation and a test scenario.
CITATION STYLE
Petersen, N., Lange, C., Auer, S., Frommhold, M., & Tramp, S. (2016). Towards federated, semantics-based supply chain analytics. In Lecture Notes in Business Information Processing (Vol. 255, pp. 436–447). Springer Verlag. https://doi.org/10.1007/978-3-319-39426-8_34
Mendeley helps you to discover research relevant for your work.