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Probabilistic real-time deep-water natural gas hydrate dispersion modeling by using a novel hybrid deep learning approach

机译:概率实时深水天然气水合物分散模拟采用新型混合深度学习方法

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摘要

Computational Fluid Dynamic (CFD) has been widely used for the gas release and dispersion modeling, which however could not support real-time emergency response planning due to its high computation overhead. Surrogate models offer a potential alternative to rigorous computational approaches, however, as the point-estimation alternatives, the existing neural network-based surrogate models are not able to quantify the uncertainty of the released gas spatial concentration. This study aims to fill a gap by proposing an advanced hybrid probabilistic Convolutional-Variational Autoencoder-Variational Bayesian neural network (Conv-VAE-VBnn). Experimental study based on a benchmark simulation dataset was conducted. The results demonstrated the additional uncertainty information estimated by the proposed model contributes to reducing the harmful effect of too 'confidence' of the point-estimation models. In addition, the proposed model exhibits competitive accuracy with R-2 = 0.94 compared and real-time capacity with inference time less than 1s. Latent size N-z = 2, noise sigma(z) = 0.1 and Monte Carlo sampling number m = 500 to ensure the model's real-time capacity, were also given. Overall, our proposed model could provide a reliable alternative for constructing a digital twin for emergency management during the exploration and exploitation of marine natural gas hydrate (NHG) in the near future. (C) 2020 Elsevier Ltd. All rights reserved.
机译:计算流体动力学(CFD)已广泛用于气体释放和分散建模,然而由于其高计算开销,因此无法支持实时应急响应计划。代理模型提供了严格的计算方法的潜在替代品,然而,作为点估计替代方案,现有的基于神经网络的代理模型不能通而料量化释放的气体空间浓度的不确定性。本研究旨在通过提出先进的混合概率卷积 - 变分性自动化贝叶斯神经网络(Conv-Vae-VBNN)来填补差距。进行了基于基准模拟数据集的实验研究。结果表明,所提出的模型估计的额外不确定性信息有助于降低点估计模型的过于“置信”的有害影响。此外,所提出的模型表现出具有R-2 = 0.94的竞争精度,比较和实时容量,推理时间小于1s。潜伏尺寸N-Z = 2,噪声Sigma(z)= 0.1和蒙特卡罗采样号码M = 500,以确保模型的实时容量。总体而言,我们的拟议模型可以提供可靠的替代方案,用于在不久的将来勘探和开发海洋天然气水合物(NHG)期间为紧急管理构建一种可靠的替代品。 (c)2020 elestvier有限公司保留所有权利。

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