Online citations, reference lists, and bibliographies.

A Semantic-Driven Knowledge Representation Model For The Materials Engineering Application

Xin Cheng, Changjun Hu, Y. Li
Published 2014 · Computer Science

Cite This
Download PDF
Analyze on Scholarcy
A Materials Engineering Application (MEA) has been presented as a solution for the problems of materials design, solutions simulation, production and processing, and service evaluation. Large amounts of data are generated in the MEA distributed and heterogeneous environment. As the demand for intelligent engineering information applications increases, the challenge is to effectively organize these complex data and provide timely and accurate on-demand services. In this paper, based on the supporting environment of Open Cloud Services Architecture (OCSA) and Virtual DataSpace (VDS), a new semantic-driven knowledge representation model for MEA information is proposed. Faced with the MEA constantly changing user requirements, this model elaborates the semantic representation of data, services and their relationships to support the construction of domain knowledge ontology. Then, based on the ontology modeling in VDS, the semantic representations of association mapping, rule-based reasoning, and evolution tracking are analyzed to support MEA knowledge acquisition. Finally, an application example of knowledge representation in the field of materials engineering is given to illustrate the proposed model, and some experimental comparisons are discussed for evaluating and verifying the effectiveness of this method.
This paper references
A view of cloud computing
M. Armbrust (2010)
Materials informatics for the design of novel coatings
L. Zhao (2005)
Materials Ontology: An Infrastructure for Exchanging Materials Information and Knowledge
T. Ashino (2010)
A semantic representation model for design rationale of products
Yingzhong Zhang (2013)
Dataspace technology research
Y. K. Li (2008)
Materials informatics : Fast track to new materials
K. Ferris (2007)
Construction informatics: Definition and ontology
Z. Turk (2006)
A Dataspace Odyssey: The iMeMex Personal Dataspace Management System (Demo)
Lukas Blunschi (2007)
An intelligent method for selecting optimal materials and its application
A. S. Ullah (2008)
Research on personal dataspace management
Yukun Li (2008)
Engineering Materials Informatics
D. Cebon (2006)
Big data: How do your data grow?
C. Lynch (2008)
Collapse and reorganization patterns of social knowledge representation in evolving semantic networks
Kostas Alexandridis (2012)
A Manufacturing Informatics Framework for Manufacturing Sustainability Assessment. In : Re-engineering Manufacturing for Sustainability, Springer
Y. Zhao (2013)
Towards knowledge-based gene expression data mining
R. Bellazzi (2007)
Towards Realization of Dataspaces
I. Elsayed (2006)
A Platform for Personal Information Management and Integration
X. Dong (2005)
A critical review of Knowledge-Based Engineering: An identification of research challenges
W. J. Verhagen (2012)
Terminology representation guidelines for biomedical ontologies in the semantic web notations
Cui Tao (2013)
Applications of agent-based systems in intelligent manufacturing: An updated review
Weiming Shen (2006)
Big data: The future of biocuration
D. Howe (2008)
An overview of the Open Science Data Cloud
R. Grossman (2010)
The Open Grid Services Architecture
I. Foster (2004)
From databases to dataspaces: a new abstraction for information management
M. Franklin (2005)
OrientSpace: Personal dataspace management prototype system
X. Z. Zhang (2008)
Ontology Learning for the Semantic Web
A. Maedche (2001)
Semantic methods supporting engineering design innovation
Rui Fernandes (2011)
DSDC: A Domain Scientific Data Cloud Based on Virtual Dataspaces
Zhenyu Liu (2012)
Materials informatics: Growing from the Bio World
W. H. Hunt (2006)
Material Information Model across Product Lifecycle for Sustainability Assessment
Qais Y. AlKhazraji (2013)
Materials Genome Initiative: A Renaissance of American Manufacturing
T. Kalil (2011)
SWRL : A semantic Web rule language combining OWL and ruleML
H. Lan (2004)
Research on Dataspace: Research on Dataspace
Y. Li (2008)

This paper is referenced by
Semantic Scholar Logo Some data provided by SemanticScholar