ArXiv TLDR

AI as Consumer and Participant: A Co-Design Agenda for MBSE Substrates and Methodology

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2604.25526

Siyuan Ji

cs.SEcs.AI

TLDR

This paper proposes co-designing MBSE models and methodologies for AI participation, treating models as machine-queryable knowledge substrates.

Key contributions

  • Current MBSE models are ill-suited for AI consumption, causing inconsistent AI reasoning.
  • Proposes co-designing MBSE models and methodologies for effective AI participation.
  • Advocates treating MBSE models as machine-queryable knowledge substrates for AI.
  • Identifies a practical gap via a workflow scenario and proposes three guiding principles.

Why it matters

AI is increasingly integrated with MBSE, but current models aren't designed for it, leading to unreliable AI output. This paper proposes a crucial co-design agenda for MBSE models and methodologies. It ensures AI can leverage models as true knowledge bases, guiding future architectural decisions.

Original Abstract

AI tools are being deployed over MBSE models today, and those models were not designed for this kind of consumption. The problem is not simply that tools hallucinate: well-prompted frontier models produce competent, useful output over a conformant SysML model, but the reasoning they produce is drawn from training rather than retrieved from the model itself, and different tools over the same model produce different results with nothing in the record to adjudicate between them. The model, in other words, is functioning as a prompt rather than as a knowledge base. Attaching better tools to the same model does not resolve this. The model and the methodology that governs its construction need to be designed together for AI participation, treating the model as a machine-queryable knowledge substrate rather than a structured artefact for human navigation, and that co-design has not yet happened in any systematic way. This paper works through a concrete workflow scenario to show what that gap looks like in practice, proposes three principles that jointly characterise what model and methodology must achieve together, and closes with a call to the community to begin this work before the architectural decisions about AI integration settle without the methodological foundation they require.

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