首页> 外文会议>International Conference Petroleum Phase Behavior and Fouling >Prediction of Condensate-to-Gas Ratio for Retrograde Gas Condensate Reservoirs Using Artificial Neural Network with Particle Swarm Optimization
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Prediction of Condensate-to-Gas Ratio for Retrograde Gas Condensate Reservoirs Using Artificial Neural Network with Particle Swarm Optimization

机译:用粒子群优化使用人工神经网络预测逆行气体冷凝水储层的冷凝物 - 气体比

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Condensate-to-gas ratio (CGR) plays an important role in sales potential assessment of both gas and liquid, design of required surface processing facilities, reservoir characterization, and modeling of gas condensate reservoirs. Field work and laboratory determination of CGR is both time consuming and resource intensive. Developing a rapid and inexpensive technique to accurately estimate CGR is of great interest. An intelligent model is proposed in this paper based on a feedforward artificial neural network (ANN) optimized by particle swarm optimization (PSO) technique. The PSO-ANN model was evaluated using experimental data and some PVT data available in the literature. The model predictions were compared with field data, experimental data, and the CGR obtained from an empirical correlation. A good agreement was observed between the predicted CGR values and the experimental and field data. Results of this study indicate that mixture molecular weight among input parameters selected for PSO-ANN has the greatest impact on CGR value, and the PSO-ANN is superior over conventional neural networks and empirical correlations. The developed model has the ability to predict the CGR with high precision in a wide range of thermodynamic conditions. The proposed model can serve as a reliable tool for quick and inexpensive but effective assessment of CGR in the absence of adequate experimental or field data.
机译:凝析气比(CGR)起着销售气体和所需的表面处理设备,储层表征液体,设计的潜力评价的重要作用,以及凝析气藏的造型。 CGR的现场调查和实验室测定既耗时和资源密集。开发一个快速和廉价的技术来准确地估计CGR是极大的兴趣。一个智能模型以基于由粒子群优化(PSO)技术优化的前馈人工神经网络(ANN)上提出了。使用文献中可用的实验数据和一些PVT数据PSO-ANN模型中评价。该模型预测的结果与现场数据,实验数据进行比较,并且CGR从经验相关性来获得。预测CGR值和实验和场数据之间观察到很好的一致性。本研究的结果表明选择用于PSO-ANN输入参数中该混合物分子量对CGR值的影响最大,并且PSO-ANN是优于常规神经网络和经验关系优异。开发的模型具有以高精度来预测CGR在宽范围的热力学条件的能力。该模型可以作为在缺乏充分的实验或现场数据CGR的快速和廉价而有效的评估的可靠工具。

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