Transitioning Systems Engineering to a Model-based Discipline
Systems engineers have always leveraged many kinds of models, including functional models to support requirements development, simulation models to analyze the behavior of systems, and other analytical models to analyze various aspects of the system such as reliability, safety, mass properties, power consumption, and cost. However, the discipline still relies heavily on document-based artifacts to capture much of the system specification and design information, such as requirements, interface control documentation, and system architecture design descriptions. This information is often spread across many different documents including text, informal drawings, and spreadsheets. This document-based approach to systems engineering suffers from a lack of precision, inconsistencies from one artifact to another, and difficulties in maintaining and reusing the information.
Model-based systems engineering
Model-based systems engineering (MBSE) is the formalized application of modeling to support system requirements, design, analysis, verification, and validation activities beginning in the conceptual design phase and continuing through development and later life cycle phases (INCOSE 2007). A distinguishing characteristic of a MBSE approach is that the model constitutes a primary artifact of the systems engineering process. The focus on developing, managing and controlling a model of the system is a shift from the traditional document based approach to systems engineering, where the emphasis is on producing and controlling documentation about the system. By leveraging the system model as a primary artifact, MBSE offers the potential to enhance product quality, enhance reuse of the system modeling artifacts, and improve communications among the systems development team. This, in turn, offers the potential to reduce the time and cost to integrate and test the system, and significantly reduce cost, schedule, and risks in fielding a system.
MBSE includes a diverse set of descriptive and analytical models that can be applied throughout the life cycle, and from system of systems modeling down to component modeling. Typical models may include descriptive models of the system architecture that are used to specify and design the system, and analytical models to analyze system performance, physical, and other quality characteristics such as reliability, maintainability, safety, and cost.
MBSE has been evolving for many years. The term MBSE was used by Wayne Wymore in his book by this name (Wymore 1977), that provided a state-based formalism for analyzing systems in terms of their input/output characteristics, and value functions for assessing utility of technology independent and technology dependent systems. Simulations have been extensively used across Industry to provide high fidelity performance analysis of complex systems. The Standard for Integration Definition for Function Modeling (IDEF0 1993) was introduced in the 1990’s to support basic functional modeling. A modeling formalism called the enhanced functional flow block diagram (Long 2000) has been used to model many different types of systems. The Object Management Group (OMG) introduced the concept of a Model Driven Architecture (MDA®) (OMG 2003) that leverages a standards-based approach to modeling. The Systems Modeling Language (OMG SysML™) (OMG 2015) was adopted by the OMG in 2006 as a general purpose systems modeling language. In addition, the Unified Profile for DoDAF and MODAF (UPDM) (OMG 2013) was adopted by the OMG in 2008 to support enterprise modeling. Several other domain specific modeling languages have been introduced as well.
MBSE Transition
The INCOSE Systems Engineering Vision 2025 (INCOSE 2014, pg 38) describes the current and future state of MBSE as follows:
'From: Model-based systems engineering has grown in popularity as a way to deal with the limitations of document-based approaches, but is still in an early stage of maturity similar to the early days of CAD/CAE.
To: Formal systems modeling is standard practice for specifying, analyzing, designing, and verifying systems, and is fully integrated with other engineering models. System models are adapted to the application domain, and include a broad spectrum of models for representing all aspects of systems. The use of internet driven knowledge representation and immersive technologies enable highly efficient and shared human understanding of systems in a virtual environment that span the full life cycle from concept through development, manufacturing, operations, and support.'
The transition to a more model-based discipline as described in the SE Vision 2025 is not without its challenges. This requires both advancements in the practice, and the need to achieve more widespread adoption of MBSE within organizations across industry sectors.
Advancing the practice requires improvements in the modeling languages, methods, and tools. The modeling languages must continue to improve in terms of their expressiveness, precision, and usability. MBSE methods, such as those highlighted in A Survey of Model-Based Systems Engineering (MBSE) Methodologies (Estefan 2008), have continued to evolve, but require further advancements to provide a rigorous approach to modelng a system across the full system lifecycle, while being more adaptable to a diverse range of application domains. The modeling tools must also continue to evolve to support the modeling languages and methods, and to integrate with other multi-disciplinary engineering models and tools in support of the broader model-based engineering effort. The movement towards increased use of modeling standards, that are more widely available in commercial tools, and rigorous model-based methodologies, increase the promise of MBSE.
Many organizations are adopting aspects of MBSE to improve their systems engineering practice, particularly since MBSE was introduced in the INCOSE Systems Engineering Vision 2020 in 2007. However, as indicated in the SE Vision 2025, MBSE is still being applied in pockets within organizations and unevenly across industry sectors. Similar to the evolution of model-based approaches in other disciplines such as mechanical and electrical engineering, the transition occurs incrementally as the methods and tools mature.
The adoption of MBSE requires a workforce that is skilled in the application of MBSE. This requires organizations to provide an infrastructure that includes MBSE methods, tools, and training, and a commitment to deploy this capability to their programs As with any organizational change, this must be approached strategically to grow this capability and learn from their experiences.
Like other engineering disciplines, the transition of systems engineering to a model-based discipline is broadly recognized as essential to meet the challenges associated with increasing system complexity, and achieving the productivity and quality improvements. The SEBoK will continue to reflect the growing body of knowledge to facilitate this transition.
References
Works Cited
INCOSE Technical Operations. 2007. Systems Engineering Vision 2020, version 2.03. Seattle, WA: International Council on Systems Engineering, Seattle, WA, INCOSE-TP-2004-004-02.
Wymore, W., Model-Based Systems Engineering . Boca Raton, FL : CRC Press , 1993 .
Standard for Integration Definition for Function Modeling(IDEF0), 1993, Draft Federal Information Processing Standards, Publication 183, December 21, 1993.
Long , James E., 2000, Systems Engineering (SE) 101, CORE ® : Product & Process Engineering Solutions , Vitech training materials, Vitech Corporation , Vienna, VA.
Object Management Group (OMG), 2003, Model-Driven Architecture (MDA) Guide, v1.01, June 12 2003, available at http://www.omg.org/mda/.
Object Management Group (OMG), 2015, OMG Systems Modeling Language (OMG SysML™), V1.4, OMG document number formal/2015-06-03, September 2015; http://www.omg.org/spec/SysML/1.4/
Object Management Group (OMG), 2013, Unified Profile for DoDAF/MODAF (UPDM) OMG document number formal/2013-08-04, August 2013, http://www.omg.org/spec/UPDM/2.1/
International Council on Systems Engineering (INCOSE), 2014, Systems Engineering Vision 2025 July, 2014; Accessed February 16 at http://www.incose.org/docs/default-source/aboutse/se-vision-2025.pdf?sfvrsn=4
Estefan, J. 2008. A Survey of Model-Based Systems Engineering (MBSE) Methodologies, rev, B. Seattle, WA: International Council on Systems Engineering. INCOSE-TD-2007-003-02. Accessed April 13, 2015 at http://www.omgsysml.org/MBSE_Methodology_Survey_RevB.pdf
Primary References
INCOSE. 2015. Systems Engineering Handbook: A Guide for System Life Cycle Processes and Activities, Section 9.2 Model-Based Systems Engineering, version 4.0. Hoboken, NJ, USA: John Wiley and Sons, Inc, ISBN: 978-1-118-99940-0
Additional References
MBSE Wikipedia. Accessed February 16, 2015, http://www.omgwiki.org/MBSE/doku.php
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