Automatic anomaly detection in engineering diagrams using machine learning
Automatic anomaly detection in engineering diagrams using machine learning
Citations

WEB OF SCIENCE

4
Citations

SCOPUS

5

초록

This study implements a method of automating anomaly detection in engineering diagrams by extracting patterns within graphs after recognizing graphs from a piping and instrumentation diagram (P&ID). The framework consists of three parts: graph generation, subgraph extraction, and graph classification. Graphs are generated through symbol recognition and line recognition, and subgraphs are extracted using the frequent subgraph mining algorithm. The graph classification targets are divided into two categories according to the frequency of the main equipment of the extracted subgraph. If the frequency is low, it is classified through whether to include a user-defined subgraph, and if it is high, it is trained in a support vector machine (SVM) algorithm after vector embedding to generate a classification model. K-fold cross-validation is also applied to increase classification accuracy. The proposed framework shows 85% accuracy for a given test drawing through cross-validation. These outcomes contribute to the field of engineering diagram analysis and have potential applications in plant industries. © 2023, The Korean Institute of Chemical Engineers.

키워드

Engineering DiagramGraph Pattern MiningObjective DetectionPiping and Instrumentation DiagramSupport Vector Machine
제목
Automatic anomaly detection in engineering diagrams using machine learning
제목 (타언어)
Automatic anomaly detection in engineering diagrams using machine learning
저자
Shin, Ho-JinLee, Ga-YoungLee, Chul-Jin
DOI
10.1007/s11814-023-1518-8
발행일
2023-11
유형
Article
저널명
Korean Journal of Chemical Engineering
40
11
페이지
2612 ~ 2623