基于径向基函数神经网络的采油决策模型优化

Xinai Song, H. Wei
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摘要

针对特低渗透油田单井产量低、抽油机能耗高、生产成本高等问题,研究了基于RBF神经网络的抽油机决策模型,对现有油田间歇抽油机系统进行了优化。本文首先分析了抽油机抽油机决策模型的影响因素。然后构建了一个三层RBF神经网络,提出了一种网络隐层节点中心的动态调整算法,并研究了一种权值自适应训练算法,该算法通过多次迭代来满足输出误差。最后在Matlab中进行了模型仿真实验,预测了电机转速、阈值转速和停止时间。对于3000个训练样本,当误差设置为0.0001时,RBF神经网络在学习300次后实现收敛。与误差设置为0.005时的网络输出相比,测试100个样本时的电机转速预测值、阈值电机转速预测值和停止时间预测值更接近实际值。仿真结果表明,利用RBF神经网络优化抽油机抽油决策模型是合理可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Oil Pumping Decision Model Based on Radial Basis Function Neural Network
Aiming at the problems of low production of single oil well, high energy consumption and production cost of pumping units in ultra-low permeability oilfields, the oil pumping decision model based on RBF neural network was studied to optimize the current intermittent pumping system in oil fields. In paper, the influencing factors of the pumping decision model of the pumping unit were analyzed firstly. Then a three-layer RBF neural network was created, and a dynamic adjustment algorithm for node center of network hidden layer was proposed, and a weight adaptive training algorithm was studied, in which the output error was satisfied through multiple iteration. Finally, the model simulation experiment was carried in Matlab, predicting the motor speed, threshold speed and stop time. With 3000 training samples, when the error was set to 0.0001, the RBF neural network achieved convergence after learning for 300 times. Compared with the network output when the error was set at 0.005, the predicted values of motor speed, threshold motor speed and stop time are closer to the actual values when 100 samples were tested. The simulation results has showed that it is reasonable and feasible to optimize oil pumping decision model of the pumping unit through RBF neural network.
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