The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
Ontology-Assisted Enterprise Information Systems Integration in Manufacturing Supply Chain
Abstract
Manufacturing communities around the globe are eagerly witnessing the recent developments in semantic web technology (SWT). This technology combines a set of new mechanisms with grounded knowledge representation techniques to address the needs of formal information modelling and reasoning for web-based services. This chapter provides a high-level summary of SWT to help better understand the impact that this technology will have on wider enterprise information architectures. In many cases it also reuses familiar concepts with a new twist. For example, “ontologies” for “data dictionaries” and “semantic models” for “data models.” This chapter presents the usefulness of a proposed architecture by applying a theory to integrating data from multiple heterogeneous sources which entails dealing with semantic mapping between source schema and a resource description framework (RDF) ontology described declaratively using specific query language (i.e. SPARQL) queries. Finally, the semantic of query rewriting is further discussed and a query rewriting algorithm is presented.
Related Content
Sandhya Avasthi, Tanushree Sanwal, Shivani Sharma, Shweta Roy.
© 2023.
23 pages.
|
Subha Karumban, Shouvik Sanyal, Madan Mohan Laddunuri, Vijayan Dhanasingh Sivalinga, Vidhya Shanmugam, Vijay Bose, Mahesh B. N., Ramakrishna Narasimhaiah, Dhanabalan Thangam, Satheesh Pandian Murugan.
© 2023.
17 pages.
|
Aditya Saxena, Devansh Chauhan, Shilpi Sharma.
© 2023.
26 pages.
|
Eduardo José Villegas-Jaramillo, Mauricio Orozco-Alzate.
© 2023.
33 pages.
|
Revathi A., Poonguzhali S..
© 2023.
18 pages.
|
Indu Malik, Anurag Singh Baghel.
© 2023.
18 pages.
|
Shanu Sharma, Tushar Chand Kapoor, Misha Kakkar, Rishi Kumar.
© 2023.
24 pages.
|
|
|