TU Ilmenau/AnLi Fotografie

Univ.-Prof. Dr.-Ing. Steffen Straßburger

Besucheranschrift:
Max-Planck-Ring 12 (Werner-Bischoff-Bau); Raum F1120
D-98693 Ilmenau

Postanschrift:
Postfach 100 565
D-98684 Ilmenau

steffen.strassburger@tu-ilmenau.de

+49 (0) 3677 69-4051

Sprechstunde

In der Vorlesungszeit können Sie mich regelmäßig mittwochs zwischen 14:00 Uhr und 16:45 Uhr ohne Termin in meinem Büro antreffen. In der vorlesungsfreien Zeit kontaktieren Sie mich bitte vorab per Email. Ich stehe dann für persönliche Rücksprachen gerne auch via Skype, Webex oder Telefon zur Verfügung.

Einträge in Zitationsdatenbanken

Google Scholar

Research Gate

ACM Digital Library

Forschungsschwerpunkte

  • Industrie 4.0 und Digitale Fabrik
  • Interoperabilitätsstandards
  • Simulationsmethoden (Weltsichten, hybride Simulation, Modellgenerierung)
  • Verteilte Simulation und die High Level Architecture (HLA)
  • Digitaler Zwilling, Online Simulation und simulationsbasierte Leitstände

Mitgliedschaften

  • Arbeitsgemeinschaft Simulation (ASIM) der Gesellschaft für Informatik (GI)
  • Society for Computer Simulation International (SCS)
  • Simulation Interoperability Standards Organization (SISO)
  • Association for Computing Machinery (ACM)
  • ACM - Special Interest Group on Simulation and Modeling (ACM SIGSIM)

Promotionen

Gutachtertätigkeiten

Akademische Selbstverwaltung

  • Mitglied der Zertifizierungs- und Akkreditierungskommission (ZAK) (seit 2020)
  • Prodekan der Fakultät für Wirtschaftswissenschaften und Medien (2016-2017)
  • Leiter der Studiengangkommission Wirtschaftsinformatik (2011-2016)
  • Stellvertr. Direktor des fakultätsübergreifenden Instituts für Automobil- und Produktionstechnik (2011-2014)
  • Prüfungsausschuss Wirtschaftsinformatik - Mitglied (2008-2016) und  Leitung (2008-2012)
  • Qualitätsmanagementbeauftrager der Fakultät für Wirtschaftswissenschaften (2007-2011)
  • Mitglied des Senatsausschusses für Hochschulentwicklung und Qualitätssicherung (2008-2011)

Berufserfahrung und Studium

  • seit 08/2018: Universitätsprofessor an der TU Ilmenau, Fakultät für Maschinenbau, Leiter des Fachgebietes "Informationstechnik in Produktion und Logistik"
  • 04/2007-07/2018: Universitätsprofessor an der TU Ilmenau, Fakultät für Wirtschaftswissenschaften und Medien, Leiter des Fachgebietes "Wirtschaftsinformatik für Industriebetriebe"
  • 2003-2007: Abteilungsleiter, Fraunhofer Institut für Fabrikbetrieb und -automatisierung, Abteilung Virtuelle Entwicklung, Magdeburg
  • 2001-2003: Wissenschaftlicher Mitarbeiter, DaimlerChrysler AG, Research and Technology, Abteilung Product, Process and Resource Integration, Ulm
  • 11-12/1999: Forschungsaufenthalt am Georgia Institute of Technology, Atlanta, USA
  • 1998-2001: Wissenschaftlicher Mitarbeiter, Promotion zum Dr.-Ing., Otto-von-Guericke-Universität, Magdeburg, Fakultät für Informatik, Institut für Simulation und Grafik (Abschluss im April 2001)
  • 1995-1996: Auslandsstudium, University of Wisconsin - Stevens Point, USA, Förderung durch Stipendium des DAAD
  • 1992-1998: Studium der Informatik, Nebenfach Betriebswirtschaftslehre, Otto-von-Guericke-Universität, Magdeburg, Fakultät für Informatik

Publikationsliste (seit 2007 - Werke laut Hochschulbibliographie der TU Ilmenau)

Monographien und Tagungsbände
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Buch- und Zeitschriftenbeiträge
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Konferenzbeiträge
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Feldkamp, Niclas; Bergmann, Sören; Straßburger, Steffen; Schulze, Thomas; Akondi, Praneeth; Lemessi, Marco
Knowledge discovery in simulation data - a case study for a backhoe assembly line. - In: WSC'17, ISBN 978-1-5386-3428-8, (2017), S. 4456-4458

Discrete event simulation is an established and popular technology for investigating the dynamic behavior of complex manufacturing and logistics systems. Besides conventional simulation studies that focus on single model aspects answering project specific analysis questions, new methods of broad scale experiment design and system analysis emerge alongside new developments of computational power and data processing. This enables to investigate the bandwidth of possible system behavior in a more in-depth way. In this work we applied our previously developed methodology of knowledge discovery in simulation data onto an industrial case study for a backhoe loader manufacturing facility.



https://doi.org/10.1109/WSC.2017.8248162
Feldkamp, Niclas; Bergmann, Sören; Straßburger, Steffen; Schulze, Thomas
Knowledge discovery and robustness analysis in manufacturing simulations. - In: WSC'17, ISBN 978-1-5386-3428-8, (2017), S. 3952-3963

Discrete event simulation is an established methodology for investigating the dynamic behavior of complex manufacturing and logistics systems. Traditionally, simulation experts conduct experiments for predetermined system specifications focusing on single model aspects and specific analysis questions. In addition to that, the concept of data farming and knowledge discovery is an ongoing research issue that consists of broad scale experimentation and data mining assisted analysis of massive simulation output data. As an extension to this approach, we propose a concept for investigating the robustness of complex manufacturing and logistic systems which are often very sensitive to variation and noise. Based on Taguchis loss function, we developed a concept including data farming and visual analytics methodologies to investigate sources of variation in a model and the factor values that make a configuration robust. The concept is demonstrated on an exemplary case study model.



https://doi.org/10.1109/WSC.2017.8248105
Feldkamp, Niclas; Bergmann, Sören; Straßburger, Steffen; Schulze, Thomas
Data farming for production and logistics :
Data Farming im Kontext von Produktion und Logistik. - In: Simulation in Produktion und Logistik 2017, ISBN 978-3-7376-0192-4, (2017), S. 169-178

Simulation is an established methodology for planning and evaluating manufacturing and logistics systems. Usually simulations experts conduct experiments for a prior defined goal and by minimizing the number of simulation runs. In contrast to that, data farming describes an approach for using the simulation model as a data generator for broad scale experimentation with a broader coverage of system behaviour. This paper demonstrates how to apply data farming methodologies on simulation models in the context of production and logistics and how to analyse massive amounts of simulation data using data mining and visual analytics.



Feldkamp, Niclas; Bergmann, Sören; Straßburger, Steffen; Schulze, Thomas
Knowledge discovery in simulation data: a case study of a gold mining facility. - In: Simulating complex service systems, ISBN 978-1-5090-4486-3, (2016), S. 1607-1618

Discrete event simulation is an established methodology for investigating the dynamic behavior of complex systems. Apart from conventional simulation studies, which focus on single model aspects and answering specific analysis questions, new methods of broad scale experiment design and analysis emerge in alignment with new possibilities of computation and data processing. This paper outlines a visually aided process for knowledge discovery in simulation data which is applied onto a real world case study of a mining facility in Western Australia.



https://doi.org/10.1109/WSC.2016.7822210
Römer, Anna Carina; Straßburger, Steffen
A review of literature on simulation-based optimization of the energy efficiency in production. - In: Simulating complex service systems, ISBN 978-1-5090-4486-3, (2016), S. 1416-1427

Due to rising resource prices, the sustained use of energy has become a basic requirement for manufacturing companies to competitively perform on the market. Designing production processes therefore not only requires the consideration of logistical and technical production conditions but also the consistent optimization of resource consumption. As simulation technology has become a common tool for assessing dynamic production processes, the consideration of energy-related issues in this context is becoming a more frequent subject. The aim of this literature research is to summarize the current state-of-the-art in the field of energy management in production and its adjacent disciplines as well as to identify future research priorities for the simulation-based optimization of energy aspects. The accomplishment of this objective requires a methodological review focusing on the multidisciplinary combination of simulation technologies, including hybrid simulation, the integration of mathematical optimization approaches, and the domain-specific knowledge of energy-related subjects in production systems.



https://doi.org/10.1109/WSC.2016.7822194
Feldkamp, Niclas; Bergmann, Sören; Straßburger, Steffen
Innovative Analyse- und Visualisierungsmethoden für Simulationsdaten. - In: , (2016), S. 1737-1748

https://nbn-resolving.org/urn:nbn:de:gbv:ilm1-2016100035
Bergmann, Sören; Feldkamp, Niclas; Straßburger, Steffen
Gestaltungsmöglichkeiten selbst-adaptierender Simulationsmodelle. - In: , (2016), S. 1713-1724

https://nbn-resolving.org/urn:nbn:de:gbv:ilm1-2016100035
Bergmann, Sören; Feldkamp, Niclas; Straßburger, Steffen
Approximation of dispatching rules for manufacturing simulation using data mining methods. - In: Proceedings of the 2015 Winter Simulation Conference, ISBN 978-1-4673-9743-8, (2015), S. 2329-2340

Discrete-event simulation is a well-accepted method for planning, evaluating, and monitoring processes in production and logistics contexts. In order to reduce time and effort spent on creating the simulation model, automatic simulation model generation is an important area in modeling methodology research. When automatically generating a simulation model from existing data sources, the correct reproduction of the dynamic behavior of the modelled system is a common challenge. One example is the representation of dispatching and scheduling strategies of production jobs. When generating a model automatically, the underlying rules for these strategies are typically unknown but yet have to be adequately emulated. In previous work, we presented an approach to approximate the behavior through artificial neural networks. In this paper, we investigate the suitability of various other data mining and supervised machine learning methods for emulating job scheduling decisions with data obtained from production data acquisition.



http://dx.doi.org/10.1109/WSC.2015.7408344
Straßburger, Steffen;
HLA-based optimistic synchronization with SLX. - In: Proceedings of the 2015 Winter Simulation Conference, ISBN 978-1-4673-9743-8, (2015), S. 1717-1728

The High Level Architecture for Modeling and Simulation (HLA) comes with the promise of facilitating interoperability between a wide variety of simulation systems. HLA's time management offers a unique support for heterogeneous time advancement schemes and differentiates HLA from other general interoperability standards. While it has been shown that HLA is applicable for connecting commercial off-the-shelf simulation packages (CSPs), the usage of HLA time management in this application area is virtually always limited to conservative synchronization. In this paper, we investigate HLA's capabilities concerning optimistic synchronization. For the first time, we show its use in combination with a commercial-off-the-shelf simulation package (CSP), namely the simulation system SLX. We report on implementation details, performance results, and potential limitations in the current HLA 1516.1-2010 standard and its interpretation by runtime infrastructure (RTI) software vendors.



http://dx.doi.org/10.1109/WSC.2015.7408290
Feldkamp, Niclas; Bergmann, Sören; Straßburger, Steffen
Visual analytics of manufacturing simulation data. - In: Proceedings of the 2015 Winter Simulation Conference, ISBN 978-1-4673-9743-8, (2015), S. 779-790

Discrete event simulation is an accepted technology for investigating the dynamic behavior of complex manufacturing systems. Visualizations created within simulation studies often focus on the animation of the dynamic processes of a single simulation run, supplemented with graphs of certain performance indicators obtained from replications of a simulation run or a few manually conducted simulation experiments. This paper suggests a much broader visually aided analysis of simulation input and output data and their relations than it is commonly applied today. Inspired from the idea of visual analytics, we suggest the application of data farming approaches for obtaining datasets of a much broader spectrum of combinations of input and output data. These datasets are then processed by data mining methods and visually analyzed by the simulation experts. This process can uncover causal relationships in the model behavior that were previously not known, leading to a better understanding of the systems behavior.



http://dx.doi.org/10.1109/WSC.2015.7408215