On Integrating Resilience and Human Oversight into LLM-Assisted Modeling Workflows for Digital Twins
Lekshmi P, Neha Karanjkar

TL;DR
This paper proposes design principles for integrating resilience and human oversight into LLM-assisted workflows for creating digital twins, emphasizing interpretability, error-resilience, and the use of Python as a density-preserving intermediate representation.
Contribution
It introduces three key design principles derived from the FactoryFlow framework to improve resilience and oversight in LLM-assisted digital twin modeling workflows.
Findings
Characterization of LLM-induced errors across different model descriptions
Demonstration of Python as an effective density-preserving intermediate representation
Guidelines for building resilient, interpretable, and error-resilient workflows
Abstract
LLM-assisted modeling holds the potential to rapidly build executable Digital Twins of complex systems from only coarse descriptions and sensor data. However, resilience to LLM hallucination, human oversight, and real-time model adaptability remain challenging and often mutually conflicting requirements. We present three critical design principles for integrating resilience and oversight into such workflows, derived from insights gained through our work on FactoryFlow - an open-source LLM-assisted framework for building simulation-based Digital Twins of manufacturing systems. First, orthogonalize structural modeling and parameter fitting. Structural descriptions (components, interconnections) are LLM-translated from coarse natural language to an intermediate representation (IR) with human visualization and validation, which is algorithmically converted to the final model. Parameter…
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