基于高斯核RBF神经网络的套管漏磁检测方法

Jinzhong Chen, Lin Li, Binggui Xu
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引用次数: 4

摘要

套管完整性对油井的安全生产至关重要,对套管缺陷的检测具有重要意义。漏磁检测技术广泛应用于各种管道的缺陷检测。由于套管下入环境复杂,基于漏磁技术的套管缺陷检测系统尚不成熟。研究了基于高斯核的RBF神经网络缺陷检测方法,实现了井套缺陷参数的识别。训练数据样本分别来自三维有限元模型的模拟数据集和实测MFL数据集。建立了适用于套管检测的检测系统。实验结果表明,该系统能够有效地检测缺陷并识别缺陷参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Magnetic Flux Leakage Testing Method for Well Casing Based on Gaussian Kernel RBF Neural Network
Well casing integrity is important for the safe operations of oil wells, and is of great significance to detect well casing defects. Magnetic Flux Leakage (MFL) Detection Technology is widely used to detect the defects of various pipelines. Because the environment where well casing is laid in is usually very complicated, the system which based on magnetic flux leakage technology is not mature yet to detect well casing defects. The method of defects detection with RBF neural network based on Gaussian kernel is studied, by which parameters of well casing defects can be recognized. The training data samples were gathered from both the simulated data sets for 3-D finite element model and measured MFL data. Detection system suitable to casing inspection is established. The experiment result indicates that the system can detect the defect and identify its parameters effectively.
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