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Main Authors: Tian, Xufei, Du, Wenli, Yang, Shaoyi, Hu, Han, Xin, Hui, Qu, Shifeng, Ye, Ke
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.06776
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author Tian, Xufei
Du, Wenli
Yang, Shaoyi
Hu, Han
Xin, Hui
Qu, Shifeng
Ye, Ke
author_facet Tian, Xufei
Du, Wenli
Yang, Shaoyi
Hu, Han
Xin, Hui
Qu, Shifeng
Ye, Ke
contents Process simulation is a critical cornerstone of chemical engineering design. Current automated chemical design methodologies focus mainly on various representations of process flow diagrams. However, transforming these diagrams into executable simulation flowsheets remains a time-consuming and labor-intensive endeavor, requiring extensive manual parameter configuration within simulation software. In this work, we propose a novel multi-agent workflow that leverages the semantic understanding capabilities of large language models(LLMs) and enables iterative interactions with chemical process simulation software, achieving end-to-end automated simulation from textual process specifications to computationally validated software configurations for design enhancement. Our approach integrates four specialized agents responsible for task understanding, topology generation, parameter configuration, and evaluation analysis, respectively, coupled with Enhanced Monte Carlo Tree Search to accurately interpret semantics and robustly generate configurations. Evaluated on Simona, a large-scale process description dataset, our method achieves a 31.1% improvement in the simulation convergence rate compared to state-of-the-art baselines and reduces the design time by 89. 0% compared to the expert manual design. This work demonstrates the potential of AI-assisted chemical process design, which bridges the gap between conceptual design and practical implementation. Our workflow is applicable to diverse process-oriented industries, including pharmaceuticals, petrochemicals, food processing, and manufacturing, offering a generalizable solution for automated process design.
format Preprint
id arxiv_https___arxiv_org_abs_2601_06776
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle From Text to Simulation: A Multi-Agent LLM Workflow for Automated Chemical Process Design
Tian, Xufei
Du, Wenli
Yang, Shaoyi
Hu, Han
Xin, Hui
Qu, Shifeng
Ye, Ke
Artificial Intelligence
Process simulation is a critical cornerstone of chemical engineering design. Current automated chemical design methodologies focus mainly on various representations of process flow diagrams. However, transforming these diagrams into executable simulation flowsheets remains a time-consuming and labor-intensive endeavor, requiring extensive manual parameter configuration within simulation software. In this work, we propose a novel multi-agent workflow that leverages the semantic understanding capabilities of large language models(LLMs) and enables iterative interactions with chemical process simulation software, achieving end-to-end automated simulation from textual process specifications to computationally validated software configurations for design enhancement. Our approach integrates four specialized agents responsible for task understanding, topology generation, parameter configuration, and evaluation analysis, respectively, coupled with Enhanced Monte Carlo Tree Search to accurately interpret semantics and robustly generate configurations. Evaluated on Simona, a large-scale process description dataset, our method achieves a 31.1% improvement in the simulation convergence rate compared to state-of-the-art baselines and reduces the design time by 89. 0% compared to the expert manual design. This work demonstrates the potential of AI-assisted chemical process design, which bridges the gap between conceptual design and practical implementation. Our workflow is applicable to diverse process-oriented industries, including pharmaceuticals, petrochemicals, food processing, and manufacturing, offering a generalizable solution for automated process design.
title From Text to Simulation: A Multi-Agent LLM Workflow for Automated Chemical Process Design
topic Artificial Intelligence
url https://arxiv.org/abs/2601.06776