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Modeling and Optimization of Beam Pumping System Based on Intelligent Computing for Energy Saving

机译:基于智能计算的节能束流抽运系统建模与优化

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摘要

Beam pumping system which is widely used in petroleum enterprises of China is one of the most energy-consuming equipment. It is difficult to be modeled and optimized due to its complication and nonlinearity. To address this issue, a novel intelligent computing based method is proposed in this paper. It firstly employs the general regression neural network (GRNN) algorithm to obtain the best model of the beam pumping system, and secondly searches the optimal operation parameters with improved strength Pareto evolutionary algorithm (SPEA2). The inputs of GRNN include the number of punching, the maximum load, the minimum load, the effective stroke, and the computational pump efficiency, while the outputs are the electric power consumption and the oil yield. Experimental results show that there is good overlap between model estimations and unseen data. Then sixty-one sets of optimum parameters are found based on the obtained model. Also, the results show that, under the optimum parameters, more than 5.34% oil yield is obtained and more than 3.75% of electric power consumption is saved.
机译:在中国石油企业中广泛使用的束流抽油机是最耗能的设备之一。由于其复杂性和非线性,很难对其进行建模和优化。为了解决这个问题,本文提出了一种新颖的基于智能计算的方法。首先利用通用回归神经网络算法(GRNN)获得最佳的抽运系统模型,其次利用改进的强度帕累托进化算法(SPEA2)搜索最优的运行参数。 GRNN的输入包括打孔次数,最大负载,最小负载,有效冲程和计算的泵效率,而输出是电能消耗和机油产量。实验结果表明,模型估计与看不见的数据之间存在良好的重叠。然后根据所获得的模型找到61组最佳参数。而且,结果表明,在最佳参数下,获得了超过5.34%的油收率,并且节省了超过3.75%的电力消耗。

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