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首页> 外文期刊>Instrumentation and Measurement, IEEE Transactions on >Gas-Liquid Two-Phase Flow Measurement Using Coriolis Flowmeters Incorporating Artificial Neural Network, Support Vector Machine, and Genetic Programming Algorithms
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Gas-Liquid Two-Phase Flow Measurement Using Coriolis Flowmeters Incorporating Artificial Neural Network, Support Vector Machine, and Genetic Programming Algorithms

机译:结合人工神经网络,支持向量机和遗传规划算法的科里奥利流量计进行气液两相流量测量

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摘要

Coriolis flowmeters are well established for the mass flow measurement of single-phase flow with high accuracy. In recent years, attempts have been made to apply Coriolis flowmeters to measure two-phase flow. This paper presents data driven models that are incorporated into Coriolis flowmeters to measure both the liquid mass flowrate and the gas volume fraction of a two-phase flow mixture. Experimental work was conducted on a purpose-built two-phase flow test rig on both horizontal and vertical pipelines for a liquid mass flowrate ranging from 700 to 14500 kg/h and a gas volume fraction between 0% and 30%. Artificial neural network (ANN), support vector machine (SVM), and genetic programming (GP) models are established through training with the experimental data. The performance of backpropagation-ANN (BP-ANN), radial basis function-ANN (RBF-ANN), SVM, and GP models is assessed and compared. Experimental results suggest that the SVM models are superior to the BP-ANN, RBF-ANN, and GP models for two-phase flow measurement in terms of robustness and accuracy. For liquid mass flowrate measurement with the SVM models, 93.49% of the experimental data yield a relative error less than ±1% on the horizontal pipeline, while 96.17% of the results are within ±1% on the vertical installation. The SVM models predict the gas volume fraction with a relative error less than ±10% for 93.10% and 94.25% of the test conditions on the horizontal and vertical installations, respectively.
机译:科里奥利流量计非常适用于高精度单相流量测量。近年来,已经尝试将科里奥利流量计应用于测量两相流量。本文介绍了数据驱动的模型,这些模型已合并到科里奥利流量计中,以测量两相流混合物的液体质量流量和气体体积分数。在水平和垂直管道上的专用两相流试验台上进行了实验工作,液体质量流量为700至14500 kg / h,气体体积分数为0%至30%。通过对实验数据进行训练,可以建立人工神经网络(ANN),支持向量机(SVM)和遗传编程(GP)模型。评估并比较了反向传播ANN(BP-ANN),径向基函数ANN(RBF-ANN),SVM和GP模型的性能。实验结果表明,就鲁棒性和准确性而言,两相流量测量的SVM模型优于BP-ANN,RBF-ANN和GP模型。对于使用SVM模型进行的液体质量流量测量,水平管道上93.49%的实验数据产生的相对误差小于±1%,而垂直管道上的96.17%的结果误差在±1%以内。 SVM模型分别针对水平和垂直安装的93.10%和94.25%的测试条件预测气体体积分数,相对误差小于±10%。

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