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基于RBF网络的漏磁检测缺陷定量分析方法
崔伟 ; 黄松岭 ; 赵伟 ; CUI Wei ; HUANG Songling ; ZHAO Wei
2010-06-10 ; 2010-06-10
关键词油气管道 漏磁检测 径向基函数神经网络 缺陷 oil and gas pipelines magnetic flux leakage detection radial-basis function neutral network defect quantification TE973.6
其他题名Quantitative analysis method for MFL testing for oil and gas pipelines based on RBF neutral network
中文摘要为了正确评估油气管道的使用寿命和安全状况,需根据漏磁检测信号特征对缺陷进行准确的定量分析。提出一种基于径向基函数(RBF)神经网络、用于定量分析油气管道缺陷的迭代方法,给出了具体的算法步骤,并采用自适应学习机制来训练网络,既加快了该算法的收敛速度,又避免了陷入局部最小值问题。仿真结果表明:该方法不仅训练速度明显快于普通反向传播(BP)网络,而且最大量化误差仅为0.26%。该方法有助于提高漏磁检测的准确度,可为油气管道的安全评估提供可靠的依据。; In order to properly evaluate the service lifetime and security status of oil and gas pipelines,the defects should be quantitatively analyzed based on the features of the magnetic flux leakage(MFL) signals.An iterative quantitative analysis method based on radial-basis function(RBF) neutral network was put forward in this paper,and the detailed procedures of the iterative algorithm were introduced.And,by using self-adaptive mechanism to train the network,the convergence time was shortened and the local minimum in the error surface was effectively avoided.The results of simulation show this method has much faster training speed than standard backward propagation(BP) network,and the maximal error of quantification is only 0.26%.This method can be used to increase the quantification accuracy of MFL detection,and provide reliable basis for the security evaluation of oil and gas pipelines.; 国家自然科学基金资助项目(50305017)
语种中文 ; 中文
内容类型期刊论文
源URL[http://hdl.handle.net/123456789/62106]  
专题清华大学
推荐引用方式
GB/T 7714
崔伟,黄松岭,赵伟,等. 基于RBF网络的漏磁检测缺陷定量分析方法[J],2010, 2010.
APA 崔伟,黄松岭,赵伟,CUI Wei,HUANG Songling,&ZHAO Wei.(2010).基于RBF网络的漏磁检测缺陷定量分析方法..
MLA 崔伟,et al."基于RBF网络的漏磁检测缺陷定量分析方法".(2010).
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