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Research into Prediction Model of Water Content in Crude Oil of wellheat metering Based on General Regression Neural Network

机译:基于总回归神经网络的井下计量原油含水量预测模型研究

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Water content in crude oil is a very important data in oilfield production logging system. It is also an indispensable parameter for the research of its development prospect. During the process of exploitation, storage and transportation of oilfield, high accuracy measuring of water content in crude oil can optimize production parameters and improve oil recovery rate. The GRNN (General Regression Neural Network) has high advantages in approximation ability, classification capacity and learning speed. This paper measured some parameters which have effect on the measurement of the water content of crude oil using the multi-sensor technology and processed these parameters using the K-means clustering, and then proposed a prediction model for water content in crude oil based on GRNN. The result of the simulation in MATLAB shows that the prediction model proposed in this paper has several advantages such as stable prediction result and small error and so on.
机译:原油中的水含量是油田生产测井系统中的一个非常重要的数据。它也是其开发前景研究的不可或缺的参数。在利用油田的开发,储存和运输过程中,原油中水含量的高精度测量可以优化生产参数并提高采油率。 GRNN(一般回归神经网络)在近似能力,分类能力和学习速度方面具有高优点。本文测量了一些参数,其对使用多传感器技术的原油含水量的测量并使用K-means聚类处理这些参数,然后提出了基于GRNN的原油含水量的预测模型。 MATLAB中模拟结果表明,本文提出的预测模型具有若干优点,例如稳定的预测结果和小错误等。

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