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Poster
in
Workshop: The Synergy of Scientific and Machine Learning Modelling (SynS & ML) Workshop

A Machine Learning Pressure Emulator for Hydrogen Embrittlement

Minh Chau · João Almeida · Elie Alhajjar · Alberto Costa Nogueira Junior

Keywords: [ Physics informed machine learning ] [ climate change ]


Abstract:

A recent alternative for hydrogen transportation as a mixture with natural gas is blending it into natural gas pipelines. However, hydrogen embrittlement of material is a major concern for scientists and gas installation designers to avoid process failures. In this paper, we propose a physics-informed machine learning model to predict the gas pressure on the pipes' inner wall. Despite its high-fidelity results, the current PDE-based simulators are time- and computationally-demanding. Using simulation data, we train an ML model to predict the pressure on the pipelines' inner walls, which is a first step for pipeline system surveillance. We found that the physics-based method outperformed the purely data-driven method and satisfy the physical constraints of the gas flow system.

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