Hybrid neural network and regression tree ensemble pruned by simulated annealing for virtual flow metering application

Tareq Aziz AL-Qutami, R. Ibrahim, I. Ismail
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引用次数: 8

Abstract

Virtual flow metering (VFM) is an attractive and cost-effective solution to meet the rising multiphase flow monitoring demands in the petroleum industry. It can also augment and backup physical multiphase flow metering. In this study, a heterogeneous ensemble of neural networks and regression trees is proposed to develop a VFM model utilizing bootstrapping and parameter perturbation to generate diversity among learners. The ensemble is pruned using simulated annealing optimization to further ensure accuracy and reduce ensemble complexity. The proposed VFM model is validated using five years well-test data from eight production wells. Results show improved performance over homogeneous ensemble techniques. Average errors achieved are 1.5%, 6.5%, and 4.7% for gas, oil, and, water flow rate estimations. The developed VFM provides accurate flow rate estimations across a wide range of gas volume fractions and water cuts and is anticipated to be a step forward towards the vision of completely integrated operations.
混合神经网络与模拟退火剪枝回归树集成在虚拟流量计量中的应用
虚拟流量测量(VFM)是满足石油工业中不断增长的多相流监测需求的一种有吸引力且经济高效的解决方案。它还可以补充和备份物理多相流计量。在这项研究中,提出了一个神经网络和回归树的异构集成来开发一个VFM模型,利用自举和参数摄动来产生学习者之间的多样性。采用模拟退火优化对集合进行剪枝,进一步保证了集合的精度,降低了集合的复杂度。利用8口生产井的5年试井数据验证了所提出的VFM模型。结果表明,性能优于均匀集成技术。对于天然气、石油和水的流量估计,平均误差分别为1.5%、6.5%和4.7%。开发的VFM可以在大范围的气体体积分数和含水率下提供准确的流量估计,预计将是实现完全集成作业的重要一步。
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