Accelerating Manufacturing Scale-Up from Material Discovery Using Agentic Web Navigation and Retrieval-Augmented AI for Process Engineering Schematics Design
Process Flow Diagrams (PFDs) and Process and Instrumentation Diagrams (PIDs) are critical tools for industrial process design, control, and safety. However, the generation of precise and regulation-compliant diagrams remains a significant challenge, particularly in scaling breakthroughs from materia...
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Zusammenfassung: | Process Flow Diagrams (PFDs) and Process and Instrumentation Diagrams (PIDs)
are critical tools for industrial process design, control, and safety. However,
the generation of precise and regulation-compliant diagrams remains a
significant challenge, particularly in scaling breakthroughs from material
discovery to industrial production in an era of automation and digitalization.
This paper introduces an autonomous agentic framework to address these
challenges through a twostage approach involving knowledge acquisition and
generation. The framework integrates specialized sub-agents for retrieving and
synthesizing multimodal data from publicly available online sources and
constructs ontological knowledge graphs using a Graph Retrieval-Augmented
Generation (Graph RAG) paradigm. These capabilities enable the automation of
diagram generation and open-domain question answering (ODQA) tasks with high
contextual accuracy. Extensive empirical experiments demonstrate the frameworks
ability to deliver regulation-compliant diagrams with minimal expert
intervention, highlighting its practical utility for industrial applications. |
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DOI: | 10.48550/arxiv.2412.05937 |