基于小波神经网络的油水运移模拟研究

Meijuan Gao, Jingwen Tian, Shi-Ru Zhou
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引用次数: 0

摘要

建立了实际物理模拟模型,模拟了油水运移过程。在一定物性条件下,在物理模拟模型上对注水井和油井进行模拟,利用512路电阻式测量电路在三维空间连续在线测量模型不同区域的油水含量,获得大量模拟样本。考虑到剩余油与水驱油各参数之间的关系是复杂的、非线性的问题,结合小波神经网络(WNN)的优点,利用小波神经网络建立了油水运移模型。此外,通过分析样本数据的稀疏性,采用减少小波基函数个数的算法,可以在很大程度上优化小波网络,并对网络学习算法进行了研究。仿真结果表明了该方法的可行性和有效性。
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Simulation study of oil and water migration modeling based on wavelet neural network
An actual physical simulation model is constructed to simulate the course of oil and water migration. Under certain physical property conditions, we simulated the water injection well and the oil well on the physical simulation model, and continuous measured online the oil and water content of different area of model in three-dimensional space using the 512 routes resistively measuring circuit, then we can obtain large numbers of simulation samples. Considering the issues that the relationship between the remaining oil and every parameters of water displacing oil is a complicated and nonlinear and the advantages of wavelet neural network (WNN), in this paper, the wavelet neural network is used to establish the oil and water migration model. Moreover, we adopt a algorithm of reduce the number of the wavelet basic function by analysis the sparseness property of sample data which can optimize the wavelet network in a large extent, and the network learning algorithm is studied. The simulation results show that this method is feasible and effective.
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