Hu Delin, Li Jinku, Liu Yinyan, Li Yi
IEEE Trans Neural Netw Learn Syst. 2020 Feb;31(2):475-487. doi: 10.1109/TNNLS.2019.2905082. Epub 2019 Apr 11.
The solution of how to accurately and timely predict the flowrate of gas-liquid mixtures is the key to help petroleum and other related industries to reduce costs, improve efficiency, and optimize management. Although numerous studies have been carried out over the past decades, the problem is still significantly challenging due to the complexity of multiphase flows. This paper attempts to seek new possibilities for multiphase flow measurement and novel application scenarios for state-of-the-art machine learning (ML) techniques. Convolutional neural networks (CNNs) are applied to predict the flowrate of multiphase flows for the first time and can achieve promising performance. In addition, considering the difference between data distributions of training and testing samples and its negative impact on prediction accuracy of the CNN models on testing samples, we propose flow adversarial networks (FANs) that can distill both domain-invariant and flowrate-discriminative features from the raw input. The method is evaluated on dynamic experimental data of different multiphase flows on different flow conditions and operating environments. The experimental results demonstrate that FANs can effectively prevent the accuracy degradation caused by the gap between training and testing samples and have better performance than state-of-the-art approaches in the flowrate prediction field.
如何准确、及时地预测气液混合物的流量,是帮助石油及其他相关行业降低成本、提高效率和优化管理的关键。尽管在过去几十年里已经开展了大量研究,但由于多相流的复杂性,该问题仍然极具挑战性。本文试图探寻多相流测量的新可能性以及最先进的机器学习(ML)技术的新颖应用场景。卷积神经网络(CNN)首次被用于预测多相流的流量,并能取得有前景的性能。此外,考虑到训练样本和测试样本数据分布的差异及其对测试样本上CNN模型预测准确性的负面影响,我们提出了流量对抗网络(FAN),它可以从原始输入中提取领域不变和流量判别特征。该方法在不同流动条件和运行环境下的不同多相流动态实验数据上进行了评估。实验结果表明,FAN可以有效防止因训练样本和测试样本之间的差距导致的准确性下降,并且在流量预测领域比最先进的方法具有更好的性能。