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Predicting the Sulfur Precipitation Phenomena During the Production of Sour Natural Gas by Using an Artificial Neural Network

机译:利用人工神经网络预测酸性天然气生产过程中的硫沉淀现象

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摘要

Deposition of elemental sulfur has been recognized as an important problem in the production of sour natural gas. This article presents a new approach using an artificial neural network (ANN) model for predicting the solubility of elemental sulfur in reservoir sour gases of various compositions. The proposed three-layer feedforward neural network model is much more accurate than the phase equilibrium model for predicting the solubility of sulfur in superear-critical sour natural gas mixtures at reservoir and well tube operating conditions and is reliable for evaluating the risk of sulfur precipitation during sour gas production.
机译:元素硫的沉积已被认为是生产酸性天然气的重要问题。本文提出了一种使用人工神经网络(ANN)模型来预测元素硫在各种组成的储层含硫气体中的溶解度的新方法。所提出的三层前馈神经网络模型比相平衡模型更准确,可预测储层和井管工作条件下超/近临界含硫天然气混合物中硫的溶解度,并且对于评估硫的风险是可靠的酸性气体生产过程中出现沉淀。

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