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A computational intelligence scheme for prediction equilibrium water dew point of natural gas in TEG dehydration systems

机译:TEG脱水系统中天然气平衡水露点预测的智能计算方案

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摘要

Raw natural gases are frequently saturated with water during production operations. It is crucial to remove water from natural gas using dehydration process in order to eliminate safety concerns as well as for economic reasons. Triethylene glycol (TEG) dehydration units are the most common type of natural gas dehydration. Making an assessment of a TEG system takes in first ascertaining the minimum TEG concentration needed to fulfill the water content and dew point specifications of the pipeline system. A flexible and reliable method in modeling such a process is of the essence from gas engineering view point and the current contribution is an attempt in this respect. Artificial neural networks (ANNs) trained with particle swarm optimization (PSO) and back-propagation algorithm (BP) were employed to estimate the equilibrium water dew point of a natural gas stream with a TEG solution at different TEG concentrations and temperatures. PSO and BP were used to optimize the weights and biases of networks. The models were made based upon literature database covering VLE data for TEG-water system for contactor temperatures between 10℃ and 80 ℃ and TEG concentrations ranging from 90.00 to 99.999 wt%. Results showed PSO-ANN accomplishes more reliable outputs compared with BP-ANN in terms of statistical criteria.
机译:在生产过程中,原始天然气经常被水饱和。为了消除安全隐患以及出于经济原因,使用脱水工艺从天然气中除去水至关重要。三甘醇(TEG)脱水装置是天然气脱水的最常见类型。评估TEG系统首先要确定满足管道系统的水含量和露点规格所需的最低TEG浓度。从天然气工程的角度来看,一种灵活而可靠的方法可以对这种过程进行建模,这是至关重要的,目前的贡献是对此的尝试。人工神经网络(ANN)经过粒子群优化(PSO)和反向传播算法(BP)训练,用于估算在不同TEG浓度和温度下使用TEG解决方案的天然气流的平衡水露点。 PSO和BP用于优化网络的权重和偏差。该模型是基于文献数据库建立的,该数据库涵盖了TEG-水系统在10℃至80℃之间的接触器温度和TEG浓度为90.00至99.999 wt%时的VLE数据。结果表明,就统计标准而言,与BP-ANN相比,PSO-ANN的输出更为可靠。

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