LAPSE:2024.1512
Published Article

LAPSE:2024.1512
Mining Chemical Process Information from Literature for Generative Process Design: A Perspective
August 15, 2024. Originally submitted on July 9, 2024
Abstract
Artificial intelligence (AI) and particularly generative AI led to recent breakthroughs, e.g., in generating text and images. There is also a potential of these technologies in chemical engineering, but the lack of structured big domain-relevant data hinders advancements. I envision an open Chemical Engineering Knowledge Graph (ChemEngKG) that provides big open and linked chemical process information. In this article, I present the concept of “flowsheet mining” as the first step towards the ChemEngKG. Flowsheet mining extracts process information from flowsheets and process descriptions found in scientific literature and patents. The proposed technology requires the integration of data mining, computer vision, natural language processing, and semantic web technologies. I present the concept of flowsheet mining, discuss previous literature, and show future potentials. I believe the availability of big data will enable breakthroughs in process design through artificial intelligence.
Artificial intelligence (AI) and particularly generative AI led to recent breakthroughs, e.g., in generating text and images. There is also a potential of these technologies in chemical engineering, but the lack of structured big domain-relevant data hinders advancements. I envision an open Chemical Engineering Knowledge Graph (ChemEngKG) that provides big open and linked chemical process information. In this article, I present the concept of “flowsheet mining” as the first step towards the ChemEngKG. Flowsheet mining extracts process information from flowsheets and process descriptions found in scientific literature and patents. The proposed technology requires the integration of data mining, computer vision, natural language processing, and semantic web technologies. I present the concept of flowsheet mining, discuss previous literature, and show future potentials. I believe the availability of big data will enable breakthroughs in process design through artificial intelligence.
Record ID
Keywords
Artificial Intelligence, computer vision, data mining, knowledge graph, natural language processing
Subject
Suggested Citation
Schweidtmann AM. Mining Chemical Process Information from Literature for Generative Process Design: A Perspective. Systems and Control Transactions 3:84-91 (2024) https://doi.org/10.69997/sct.184704
Author Affiliations
Schweidtmann AM: Process Intelligence Research, Delft University of Technology, Department of Chemical Engineering, Delft, The Netherlands
Journal Name
Systems and Control Transactions
Volume
3
First Page
84
Last Page
91
Year
2024
Publication Date
2024-07-10
Version Comments
DOI Assigned
Other Meta
PII: 0084-0091-680056-SCT-3-2024, Publication Type: Journal Article
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LAPSE:2024.1512
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https://doi.org/10.69997/sct.184704
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