Sketch2Simulation: Automating Flowsheet Generation via Multi Agent Large Language Models
Abdullah Bahamdan, Emma Pajak, John D. Hedengren, Antonio del Rio Chanona

TL;DR
This paper introduces an automated multi-agent AI system that converts process sketches into executable chemical engineering simulation models, significantly reducing manual effort and expertise needed.
Contribution
The paper presents the first end-to-end multi-agent LLM framework for direct sketch-to-simulation conversion in process engineering.
Findings
Achieves high structural fidelity in simple cases
Connection and stream consistency above 0.93 and 0.96
Effective across diverse complexity levels
Abstract
Converting process sketches into executable simulation models remains a major bottleneck in process systems engineering, requiring substantial manual effort and simulator-specific expertise. Recent advances in generative AI have improved both engineering-diagram interpretation and LLM-assisted flowsheet generation, but these remain largely disconnected: diagram-understanding methods often stop at extracted graphs, while text-to-simulation workflows assume structured inputs rather than raw visual artifacts. To bridge this gap, we present an end-to-end multi-agent large language model system that converts process diagrams directly into executable Aspen HYSYS flowsheets. The framework decomposes the task into three coordinated layers: diagram parsing and interpretation, simulation model synthesis, and multi-level validation. Specialized agents handle visual interpretation, graph-based…
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Taxonomy
TopicsData Visualization and Analytics · Multi-Agent Systems and Negotiation · Model-Driven Software Engineering Techniques
