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改进PSO-BP神经网络对储层参数的动态预测研究
引用本文:潘少伟,梁鸿军,李 良,王家华.改进PSO-BP神经网络对储层参数的动态预测研究[J].计算机工程与应用,2014(10):52-56.
作者姓名:潘少伟  梁鸿军  李 良  王家华
作者单位:[1]西安石油大学计算机学院,西安710065 [2]中国石油长庆油田勘探开发研究院,西安710021
基金项目:陕西省自然科学基金(No.2012JQ8040,No.2012JM8037);陕西省教育厅科学研究计划项目(No.2013JK1134)。
摘    要:为提高BP神经网络的收敛速度和泛化能力,防止其陷入局部最优值,在前人工作基础上对传统粒子群算法进行了改进,具体包括:设定最大限制速度、改变惯性权重因子和改进适应度函数,并把改进粒子群算法应用于BP神经网络权值和阈值的优化。之后利用改进粒子群算法优化的BP神经网络实现对储层参数的动态预测,具体步骤为:确定神经网络的输入、输出神经元,定量化时间参数T,利用训练样本构建神经网络模型并进行检验。最后通过平均训练误差对仿真过程进行分析,结果表明改进PSO-BP算法的收敛性与泛化能力均优于BP算法和PSO-BP算法。

关 键 词:改进PSO-BP神经网络  惯性权重因子  储层参数  预测

Dynamic prediction on reservoir parameter by improved PSO-BP neural network
PAN Shaowei,LIANG Hongjun,LI Liang,WANG Jiahua.Dynamic prediction on reservoir parameter by improved PSO-BP neural network[J].Computer Engineering and Applications,2014(10):52-56.
Authors:PAN Shaowei  LIANG Hongjun  LI Liang  WANG Jiahua
Affiliation:1.School of Computer Science, Xi' an Shiyou University, Xi' an 710065, China ;2.Exploration and Development Research Insititute, Changqing Oilfield, Petro China, Xi'an 710021, China)
Abstract:In order to improve the convergence speed and generalization ability of BP neural network and prevent it from falling into local optimal value, the traditional particle swarm optimization algorithm is improved in three aspects based on the previous research, including the limit of the maximum speed, the changes of the inertia weight factor and the improvement of the fitness function. Then it is used to optimize the weight and threshold of the BP neural network. And the dynamic prediction on reservoir parameter is realized by the improved PSO-BP neural network, the whole process is determining the input and output neurons, quantitating the time parameter, constructing the neural network model with the training samples and testing it. Finally, the simulation results of the average training error is analyzed, and it proves that the convergence and generalization ability of the improved PSO-BP algorithm are better than the BP algorithm and PSO-BP algorithm.
Keywords:improved PSO-BP neural network  inertia weight factor  reservoir parameter  predication
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