Xu Zhuoqun, Wu Fan, Yang Xinmeng, Li Yi
Graduate School at Shenzhen, Tsinghua University, Shenzhen 518055, China.
Graduate School at Suzhou, University of Science and Technology of China, Suzhou 215000, China.
Sensors (Basel). 2020 Feb 21;20(4):1200. doi: 10.3390/s20041200.
In modern society, the oil industry has become the foundation of the world economy, and how to efficiently extract oil is a pressing problem. Among them, the accurate measurement of oil-gas two-phase parameters is one of the bottlenecks in oil extraction technology. It is found that through the experiment the flow patterns of the oil-gas two-phase flow will change after passing through the venturi tube with the same flow rates. Under the different oil-gas flow rate, the change will be diverse. Being motivated by the above experiments, we use the dual ECT sensors to collect the capacitance values before and after the venturi tube, respectively. Additionally, we use the linear projection algorithm (LBP) algorithm to reconstruct the image of flow patterns. This paper discusses the relationship between the change of flow patterns and the flow rates. Furthermore, a convolutional neural network (CNN) algorithm is proposed to predict the oil flow rate, gas flow rate, and GVF (gas void fraction, especially referring to sectional gas fraction) of the two-phase flow. We use ElasticNet regression as the loss function to effectively avoid possible overfitting problems. In actual experiments, we compare the Typical-ECT-imaging-based-GVF algorithm and SVM (Support Vector Machine) algorithm with CNN algorithm based on three different ECT datasets. Three different sets of ECT data are used to predict the gas flow rate, oil flow rate, and GVF, and they are respectively using the venturi front-based ECT data only, while using the venturi behind-based ECT data and using both these data.
在现代社会,石油工业已成为世界经济的基础,如何高效开采石油是一个紧迫的问题。其中,油气两相参数的精确测量是石油开采技术的瓶颈之一。通过实验发现,在相同流速下,油气两相流经过文丘里管后流型会发生变化。在不同的油气流速下,这种变化会有所不同。受上述实验的启发,我们使用双电容层析成像(ECT)传感器分别采集文丘里管前后的电容值。此外,我们使用线性投影算法(LBP)算法来重建流型图像。本文讨论了流型变化与流速之间的关系。此外,还提出了一种卷积神经网络(CNN)算法来预测两相流的油流速、气体流速和气相含率(气相空隙率,特别是指截面气相含率)。我们使用弹性网络回归作为损失函数,以有效避免可能出现的过拟合问题。在实际实验中,我们基于三个不同的ECT数据集,将基于典型ECT成像的气相含率算法和支持向量机(SVM)算法与CNN算法进行比较。使用三组不同的ECT数据来预测气体流速、油流速和气相含率,它们分别仅使用基于文丘里管前的ECT数据、使用基于文丘里管后的ECT数据以及同时使用这两种数据。