2024
DOI: 10.3390/en17215517
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Gas Pipeline Leak Detection by Integrating Dynamic Modeling and Machine Learning Under the Transient State

Juhyun Kim,
Sunlee Han,
Daehee Kim
et al.

Abstract: This study focused on developing machine learning models to detect leak size and location in transient state conditions. The model was designed for an onshore methane–hydrogen blending gas pipeline in Canada. Base case simulations revealed significant effects on mass flow and pressure due to leaks, with the system taking approximately 6 h to reach a steady state from transient conditions. This made it essential to analyze the flow characteristics during the transient state. Trend data from the pipeline’s inlet… Show more

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