Pattern Recognition Method for Detecting Engineering Errors on Technical Drawings

R. Dzhusupova, Richa Banotra, Jan Bosch, H. H. Olsson
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引用次数: 2

Abstract

Many organizations are looking for how to automate repetitive tasks to reduce manual work and free up resources for innovation. Machine Learning, especially Deep Learning, increases the chance of achieving this goal while working with technical documentation. Highly costly engineering hours can be saved, for example, by empowering the manual check with AI, which helps to reduce the total time for technical documents review. This paper proposes a way to substantially reduce the hours spent by process engineers reviewing P&IDs (Piping & Instrumentation Diagrams). The developed solution is based on a deep learning model for analyzing complex real-life engineering diagrams to find design errors - patterns that are combinations of high-level objects. Through the research on an extensive collection of P&ID files provided by McDermott, we prove that our model recognizes patterns representing engineering mistakes with high accuracy. We also describe our experience dealing with class-imbalance problems, labelling, and model architecture selection. The developed model is domain agnostic and can be re-trained on various schematic diagrams within engineering fields and, as well, could be used as an idea for other researchers to see whether similar solutions could be built for different industries.
技术图纸工程错误检测的模式识别方法
许多组织都在寻找如何自动化重复的任务,以减少手工工作,并为创新腾出资源。机器学习,特别是深度学习,在处理技术文档时增加了实现这一目标的机会。例如,通过使用人工智能进行手动检查,可以节省昂贵的工程时间,这有助于减少技术文档审查的总时间。本文提出了一种方法,可以大大减少过程工程师审查p&id(管道和仪表图)所花费的时间。开发的解决方案基于深度学习模型,用于分析复杂的现实生活工程图,以发现设计错误-高级对象组合的模式。通过对McDermott提供的大量P&ID文件的研究,我们证明了我们的模型能够高精度地识别代表工程错误的模式。我们还描述了我们处理类不平衡问题、标记和模型架构选择的经验。所开发的模型是领域不可知论的,可以在工程领域的各种示意图上重新训练,也可以作为其他研究人员的想法,看看是否可以为不同的行业构建类似的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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