Design Ontology Supporting Model-Based Systems Engineering Formalisms

Model-based systems engineering (MBSE) provides an important capability for managing the complexities of system development. MBSE empowers the formalisms of system architectures for supporting model-based requirement elicitation, specification, design, development, testing, fielding, etc. However, the modeling languages and techniques are quite heterogeneous, even within the same enterprise system, which creates difficulties for data interoperability. The discrepancies among data structures and language syntaxes make information exchange among MBSE models even more difficult, resulting in considerable information deviations when connecting data flows across the enterprise. For this reason, this paper presents an ontology based upon graphs, objects, points, properties, roles, and relationships with entensions (GOPPRRE), providing meta models that support the various lifecycle stages of MBSE formalisms. In particular, knowledge-graph models are developed to support unified model representations to further implement ontological data integration based on GOPPRRE throughout the entire lifecycle. The applicability of the MBSE formalism is verified using quantitative and qualitative approaches. Moreover, the GOPPRRE ontologies are generated from the MBSE language formalisms in a domain-specific modeling tool, \textit{MetaGraph} in order to evaluate its availiablity. The results demonstrate that the proposed ontology supports both formal structures and the descriptive logic of the systems engineering lifecycle.

[1]  H. Lan,et al.  SWRL : A semantic Web rule language combining OWL and ruleML , 2004 .

[2]  Jean-Michel Bruel,et al.  Towards Solving MBSE Adoption Challenges: The D3 MBSE Adoption Toolbox , 2018, INCOSE International Symposium.

[3]  Steffen Staab,et al.  An ontology-based framework for domain-specific modeling , 2014, Software & Systems Modeling.

[4]  Jia Hao,et al.  Knowledge map-based method for domain knowledge browsing , 2014, Decis. Support Syst..

[5]  Martin J. O'Connor,et al.  SQWRL: A Query Language for OWL , 2009, OWLED.

[6]  Dov Dori,et al.  Model-Based Interoperability Engineering in Systems-of-Systems and Civil Aviation , 2018, IEEE Transactions on Systems, Man, and Cybernetics: Systems.

[7]  Bart Meyers,et al.  Domain-Specific Modelling for Human-Computer Interaction , 2017, Handbook of Formal Methods in Human-Computer Interaction.

[8]  Dov Dori,et al.  Model-Based Systems Engineering with OPM and SysML , 2016, Springer New York.

[9]  M. Bonfe,et al.  A SysML-Based Methodology for Manufacturing Machinery Modeling and Design , 2011, IEEE/ASME Transactions on Mechatronics.

[10]  Stefan Kühne,et al.  Towards a comparative analysis of meta-metamodels , 2011, SPLASH Workshops.

[11]  Farrokh Mistree,et al.  Ontology-Based Representation of Design Decision Hierarchies , 2016, J. Comput. Inf. Sci. Eng..

[12]  Olivier H. Roux,et al.  Formal Methods for Systems Engineering Behavior Models , 2008, IEEE Transactions on Industrial Informatics.

[13]  Ming Yu,et al.  Ontology Learning for Systems Engineering Body of Knowledge , 2021, IEEE Transactions on Industrial Informatics.

[14]  Jia Hao,et al.  A Knowledge-Based Method for Rapid Design Concept Evaluation , 2019, IEEE Access.

[15]  Dimitris Kiritsis,et al.  Cognitive Twins for Supporting Decision-Makings of Internet of Things Systems , 2019, ArXiv.

[16]  Guoxin Wang,et al.  Design Ontology in a Case Study for Cosimulation in a Model-Based Systems Engineering Tool-Chain , 2020, IEEE Systems Journal.

[17]  Nikolaos Papakonstantinou,et al.  Generating an Object Oriented IEC 61131-3 software product line architecture from SysML , 2013, 2013 IEEE 18th Conference on Emerging Technologies & Factory Automation (ETFA).

[18]  Guoxin Wang,et al.  Ontology Supporting Model-Based Systems Engineering Based on a GOPPRR Approach , 2019, WorldCIST.

[19]  Charles E. Dickerson,et al.  A Brief History of Models and Model Based Systems Engineering and the Case for Relational Orientation , 2013, IEEE Systems Journal.

[20]  Marc Priggemeyer,et al.  Experimentable Digital Twins—Streamlining Simulation-Based Systems Engineering for Industry 4.0 , 2018, IEEE Transactions on Industrial Informatics.

[21]  Davide Bresolin,et al.  A Platform-Based Design Methodology With Contracts and Related Tools for the Design of Cyber-Physical Systems , 2015, Proceedings of the IEEE.

[22]  Olivia Penas,et al.  Integration of Electromagnetic Constraints as of the Conceptual Design Through an MBSE Approach , 2021, IEEE Systems Journal.

[23]  Martin Törngren,et al.  General Modeling Language to Support Model‐based Systems Engineering Formalisms (Part 1) , 2020, INCOSE International Symposium.

[24]  Peter Beling,et al.  AI4SE and SE4AI: A Research Roadmap , 2020 .

[25]  Martin Törngren,et al.  Empirical-Evolution of Frameworks Supporting Co-simulation Tool-Chain Development , 2018, WorldCIST.

[26]  Gelli Ravikumar,et al.  Integration of Process Model and CIM to Represent Events and Chronology in Power System Processes , 2018, IEEE Systems Journal.

[27]  Enrico Macii,et al.  Event-Driven User-Centric Middleware for Energy-Efficient Buildings and Public Spaces , 2016, IEEE Systems Journal.