LS-SVM Method for 2-D Reconstruction of the Oil Pipeline Defect Based on PSO Algorithm
2-D(two-dimensional)reconstructing of the oil pipeline defect from MFL(magnetic flux leakage)signals is a difficult problem in MFL testing.The traditional solution is based on the neural network(NN)algorithm.But it has the disadvantages of complex structure,slow speed and low accuracy.To improve these disadvantages,a LS-SVM(least squares support vector machine)method is proposed for reconstructing the defect based on PSO(particle swarm optimization)algorithm in this paper.LS-SVM algorithm instead of traditional NN algorithm is used to overcome the problems such as local minimum point,curse of dimensionality and over-fitting.The calculation is simplified meanwhile.PSO algorithm is used to optimize the regularization parameter and kernel parameter of LS-SVM,and improve the accuracy of reconstruction.The simulation and experimental results show that,compared with the traditional reconstruction methods,this new method can indeed get better reconstruction effect with higher accuracy and faster processing speed.
MFL Testing 2-D Defect Reconstruction PSO LS-SVM
LIU Sheng ZHANG Qingchun
College of Automation,Harbin Engineering University,Harbin 150001,China
国际会议
The 33th Chinese Control Conference第33届中国控制会议
南京
英文
7263-7267
2014-07-28(万方平台首次上网日期,不代表论文的发表时间)