2024
DOI: 10.3389/fenvs.2024.1409072
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Fast dynamic prediction of consequences of heavy gas leakage accidents based on machine learning

Chenqing Fan,
Haixing Gong,
Yan Zhang
et al.

Abstract: The field of emergency risk management in chemical parks has been characterized by a lack of fast, precise and dynamic prediction methods. The application of computational fluid dynamics (CFD) models, which offer the potential for dynamic and precise prediction, has been hindered by high computational costs. Therefore, taking liquid benzene as a case study, this paper combined machine learning (ML) algorithms with a CFD-based precise prediction model, to develop an ML model for fast dynamic prediction of heavy… Show more

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