图到sfiles:使用生成式人工智能从过程拓扑中预测控制结构

IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Lukas Schulze Balhorn, Kevin Degens, Artur M. Schweidtmann
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引用次数: 0

摘要

控制结构设计是P&;ID开发中一个重要但繁琐的步骤。生成式人工智能(AI)承诺通过支持工程师来缩短P&;ID开发时间。生成式人工智能在化工过程设计中的研究主要是用序列来表示过程。然而,由于图的排列不变性,它提供了一个很有希望的替代方案。我们提出了Graph-to-SFILES模型,这是一种生成式人工智能方法,用于从流程图拓扑中预测控制结构。graph -to-SFILES模型将流程图拓扑作为图形输入,并以SFILES 2.0表示法的顺序返回控件扩展的流程图。我们比较了四种不同的图编码器架构,其中一种是在这项工作中提出的图神经网络(GNN)。当在10,000个流程图拓扑上训练时,Graph-to-SFILES模型达到了73.2%的前5名准确率。此外,所提出的GNN在编码器架构中表现最好。与纯粹基于序列的方法相比,Graph-to-SFILES模型将1,000个相对较小的流程图训练数据集的前5名准确率从0.9%提高到28.4%。然而,基于序列的方法在100,000个流程图的大规模数据集上表现更好。这些结果强调了基于图形的人工智能模型在小数据体系中加速P&;ID开发的潜力,但它们在行业相关案例研究中的有效性仍有待调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph-to-SFILES: Control structure prediction from process topologies using generative artificial intelligence
Control structure design is an important but tedious step in P&ID development. Generative artificial intelligence (AI) promises to reduce P&ID development time by supporting engineers. Previous research on generative AI in chemical process design mainly represented processes by sequences. However, graphs offer a promising alternative because of their permutation invariance. We propose the Graph-to-SFILES model, a generative AI method to predict control structures from flowsheet topologies. The Graph-to-SFILES model takes the flowsheet topology as a graph input and returns a control-extended flowsheet as a sequence in the SFILES 2.0 notation. We compare four different graph encoder architectures, one of them being a graph neural network (GNN) proposed in this work. The Graph-to-SFILES model achieves a top-5 accuracy of 73.2% when trained on 10,000 flowsheet topologies. In addition, the proposed GNN performs best among the encoder architectures. Compared to a purely sequence-based approach, the Graph-to-SFILES model improves the top-5 accuracy for a relatively small training dataset of 1,000 flowsheets from 0.9% to 28.4%. However, the sequence-based approach performs better on a large-scale dataset of 100,000 flowsheets. These results highlight the potential of graph-based AI models to accelerate P&ID development in small-data regimes but their effectiveness on industry relevant case studies still needs to be investigated.
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来源期刊
Computers & Chemical Engineering
Computers & Chemical Engineering 工程技术-工程:化工
CiteScore
8.70
自引率
14.00%
发文量
374
审稿时长
70 days
期刊介绍: Computers & Chemical Engineering is primarily a journal of record for new developments in the application of computing and systems technology to chemical engineering problems.
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