knowledge about already existing technical solution
was exemplarily analysed by selected structural
analysis algorithms for the identification of
modularisation potential in the system. This
application showed that structural analysis
algorithms can enhance the analysis of systems
already modelled in an ontology with very low
information acquisition effort.
Further work will focus on the above mentioned
bidirectional combination and the integration of
ontology-based knowledge management and StCM
in combination with further empirical studies. Using
structural analysis algorithms and therewith enabling
the corresponding system improvement possibilities
directly with an ontology-based system seems to be
very promising. Therefore, the already existing
analysis algorithms StCM have to be translated into
ontology-interpretable defined classes for enabling
reasoning or the appropriate ontology queries.
ACKNOWLEDGEMENTS
Part of this work has been funded by the German
Federal Ministry of Economy and Technology
(BMWi) through THESEUS.
REFERENCES
Anderl, R., Mecke, K., Sprenger, A., and Weitzmann, O.,
2009. Ontology Support for Product Development -
Successful Application of Ontologies in Product
Development. In KEOD 2009, Madeira, Portugal.
Biedermann, W., Strelkow, B., Karl, F., Lindemann, U.,
and Zaeh, M. F., 2010. Reducing Data Acquisition
Effort by Hierarchical System Modelling. In 12th
International DSM Conference, Cambridge, UK, 309-
318.
Corcho, O. and Gómez-Pérez, A., 2000. Evaluating
knowledge representation and reasoning capabilities of
ontology specification languages. In ECAI 2000
Workshop on Applications of Ontologies and
Problem-Solving Methods, Berlin.
Darlington, M. J., and Culley, S. J., 2008. Investigating
ontology development for engineering design support.
Advanced Engineering Informatics, 22.
Eppinger, S. D., 2009. Integrating the Product, Process,
and Organization Views of Complex System
Development. In 11th International DSM Conference,
Greenville, SC.
Gaag, A., Kohn, A., and Lindemann, U., 2009. Function-
based Solution Retrieval and Semantic Search in
Mechanical Engineering. In 17th International
Conference on Engineering Design, Stanford,
California, USA.
Kim, S., Bracewell, R., and Wallace, K., 2008. Some
Reflections on Ontologies in Engineering Domain.
TMCE 2008, Izmir, Türkei.
Kohn, A., and Lindemann, U., 2010. Approach towards a
more flexible handling of domains in complex
systems. In 12th International DSM Conference,
Cambridge, UK, 249-261.
Kohn, A., and Lindemann, U., 2011. Search for similar
technical solutions by object abstraction using an
ontology. In ICED2011, Kopenhagen, Denmark.
Lindemann, U., Maurer, M., and Braun, T., 2009.
Structural Complexity Management, Springer, Berlin.
Masera, M., 2007. An ontology applied to the
management of the construction process representing
an IDEFo metamodel integrated in a planning/design
structure matrix. In CIB W102 3rd International
Conference 2007, Stuttgart, Germany, 395-403.
Maurer, M., and Braun, T., 2008. The Why-Matrix. In
10th International DSM Conference, Stockholm,
Sweden.
Shea, K., Ertelt, C., Gmeiner, T., and Ameri, F., 2010.
Design-to-fabrication automation for the cognitive
machine shop. Advanced Engineering Informatics,
24(3), 251-268.
Struckenschmidt, H., 2009. Ontologien - Konzepte,
Technologien und Anwendungen Springer, Berlin.
Syldatke, T., Lutz, M., Chen, W., and Hess, C., 2008.
Managing Dependencies in the Product Development
Process with Semantic Technologies. 10th
International DSM Conference, Stockholm, 105-114.
Tudorache, T., 2006. Employing Ontologies for an
Improved Development Process in Collaborative
Engineering, Berlin, TU Berlin.
Uflacker, M., Skogstad, P., Zeier, A., and Leifer, L., 2009.
Analysis of virtual design collaboration with team
communication networks. In International Conference
on engineering design, ICED'09, Stanford, California,
USA.
Yang, Q. Z., 2005. Methods and tools for analysing and
controlling design quality assurance processes.
SIMTech technical reports, 6(3).
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