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Application of PSO-RBFNN to the Prediction of Moisture Content in Crude Oil of Wellheat Metering

机译:PSO-RBFNN在井热计量原油中水分含量预测中的应用

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Crude oil moisture content is a significant data of surface flow rate, and is also an indispensable parameter of measuring the development prospects of oilfield. During logging mining the oil field and the transportation, high precision measurement data of crude oil moisture content can optimize production parameters and improve the tar productivity. Through the related data obtained by coaxial line phase method of the moisture content meter of new online measurement device, based on influence factors of crude oil moisture content prediction, a predicting model of a particle swarm optimization of the RBF neural network for ground oil well moisture content measure is established. Simulation and experimental results show that the PSO-RBF neural network can achieve better fitting precision and prediction effect.
机译:原油含水量是地表流速的重要数据,也是衡量油田发展前景必不可少的参数。在油田和运输业的测井开采期间,高精度的原油含水量测量数据可以优化生产参数并提高焦油生产率。通过新型在线测量装置含水率仪同轴线相位法获得的相关数据,基于原油含水量预测的影响因素,建立了RBF神经网络的地面油井含水量粒子群优化预测模型。内容度量已建立。仿真和实验结果表明,PSO-RBF神经网络可以达到较好的拟合精度和预测效果。

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