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Development of surrogate model using CFD and deep neural networks to optimize gas detector layout

Title
Development of surrogate model using CFD and deep neural networks to optimize gas detector layout
Authors
Jeon, KyeongwooYang, SeeyubKang, DongjuNa, JonggeolLee, Won Bo
Ewha Authors
나종걸
SCOPUS Author ID
나종걸scopus
Issue Date
2019
Journal Title
KOREAN JOURNAL OF CHEMICAL ENGINEERING
ISSN
0256-1115JCR Link

1975-7220JCR Link
Citation
KOREAN JOURNAL OF CHEMICAL ENGINEERING vol. 36, no. 3, pp. 325 - 332
Keywords
Gas Detector AllocationOptimizationMilpComputational Fluid DynamicsFLACSArtificial Neural NetworkSurrogate Model
Publisher
KOREAN INSTITUTE CHEMICAL ENGINEERS
Indexed
SCIE; SCOPUS; KCI WOS
Document Type
Article
Abstract
To reduce damage arising from accidents in chemical processing plants, detection of the incident must be rapid to mitigate the danger. In the case of the gas leaks, detectors are critical. To improve efficiency, leak detectors must be installed at locations after considering various factors like the characteristics of the workspace, processes involved, and potential consequences of the accidents. Thus, the consequences of potential accidents must be simulated. Among various approaches, computational fluid dynamics (CFD) is the most powerful tool to determine the consequences of gas leaks in industrial plants. However, the computational cost of CFD is large, making it prohibitively difficult and expensive to simulate many scenarios. Thus, a deep-neural-network-based surrogate model has been designed to mimic FLACS (FLame ACceleration Simulator), one of the most important programs in the modeling of gas leaks. Using the simulated results of a proposed surrogate model, a sensor allocation optimization problem was solved using mixed integer linear programming (MILP). The optimal solutions produced by the proposed surrogate model and FLACS were compared to verify the efficacy of the proposed surrogate model.
DOI
10.1007/s11814-018-0204-8
Appears in Collections:
공과대학 > 화공신소재공학과 > Journal papers
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