DesCartes Builder: A Tool to Develop Machine-Learning Based Digital Twins
Eduardo de Conto, Blaise Genest, Arvind Easwaran, Nicholas Ng, Shweta Menon

TL;DR
This paper introduces DesCartes Builder, an open-source tool that streamlines the development of machine-learning-based digital twins by providing a visual, reusable, and flexible pipeline framework, demonstrated through civil engineering case studies.
Contribution
It presents a structured, visual approach for designing ML pipelines for digital twins, addressing the ad hoc nature of current methods and enabling systematic, reusable model development.
Findings
Effective in designing real-time digital twin prototypes
Facilitates systematic ML pipeline construction
Demonstrated on civil engineering case study
Abstract
Digital twins (DTs) are increasingly utilized to monitor, manage, and optimize complex systems across various domains, including civil engineering. A core requirement for an effective DT is to act as a fast, accurate, and maintainable surrogate of its physical counterpart, the physical twin (PT). To this end, machine learning (ML) is frequently employed to (i) construct real-time DT prototypes using efficient reduced-order models (ROMs) derived from high-fidelity simulations of the PT's nominal behavior, and (ii) specialize these prototypes into DT instances by leveraging historical sensor data from the target PT. Despite the broad applicability of ML, its use in DT engineering remains largely ad hoc. Indeed, while conventional ML pipelines often train a single model for a specific task, DTs typically require multiple, task- and domain-dependent models. Thus, a more structured approach…
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