Semantic Systems Engineering
In the Semantic Systems Engineering research area, we are investigating methods to make knowledge more readily available and to network it. The aim is to make information usable and understandable in new contexts. The focus here is on the introduction of semantics in data spaces and the development of knowledge-enhanced large language models that enable the effective use and contextualisation of information.
Semantics in data spaces

Structured enrichment, modelling and networking of data with a context of meaning in order to enable their interoperability, findability and usability across system and domain boundaries in data spaces.
Knowledge-enhanced large language models

Specially customised and extended large language models that have been improved through domain-specific knowledge, additional training data or semantic structures in order to be used more precisely, comprehensibly and in a more application-oriented manner in specific contexts.
Our research in the field of semantic systems engineering aims to make knowledge usable in a structured way through the use of semantic technologies. This involves the use of ontologies, knowledge graphs, semantic modelling methods and interoperable data space architectures. This is complemented by the further development of large language models, which we optimise through fine-tuning, knowledge-based extensions and user-friendly interfaces for specific applications. In this way, we create data-driven systems that not only store information, but also understand it and provide it in context - as the basis for digital innovations in business, administration and society.
We work closely with industry partners, whether as part of publicly funded projects or direct R&D contracts. In doing so, we deal intensively with real challenges and always take the needs of end users and technical experts into account. This practical orientation ensures that our research results are not only theoretically sound, but also directly applicable in industrial practice and improve value creation.
Selected publications
- 2015/2016
- Meisen, T., Rix, M., Hoffmann, M., Schilberg, D., & Jeschke, S. (2015/2016). "A Framework for Semantic Integration and Analysis of Measurement Data in Modern Industrial Machinery" in Automation, Communication and Cybernetics in Science and Engineering 2015/2016 , Jeschke, Sabina and Isenhardt, Ingrid and Hees, Frank and Henning, Klaus, Eds. Cham : Springer .
- 2013
- Hoffmann, M., Meisen, T., Schilberg, D., & Jeschke, S. (2013). "Multi-dimensional Production Planning Using a Vertical Data Integration Approach: A Contribution to Modular Factory Design" , 2013 10th International Conference and Expo on Emerging Technologies for a Smarter World (CEWIT) .
- 2012
- Reinhard, R., Meisen, T., Beer, T., Schilberg, D., & Jeschke, S. (2012). "A Framework Enabling Data Integration for Virtual Production" in Enabling Manufacturing Competitiveness and Economic Sustainability , ElMaraghy, Hoda A., Eds. 275—280.
- Meisen, T., Meisen, P., Schilberg, D., & Jeschke, S. (2012). "Adaptive Information Integration: Bridging the Semantic Gap between Numerical Simulations" , ICEIS 2011: Enterprise Information Systems , 51—65.
- Meisen, T. (2012). Framework zur Kopplung numerischer Simulationen für die Fertigung von Stahlerzeugnissen . VDI Verlag.
ISBN: 978-3-18-382310-9