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Signal Feature Extraction and Quantitative Evaluation of Metal Magnetic Memory Testing for Oil Well Casing Based on Data Preprocessing Technique

机译:基于数据预处理技术的油井套管金属磁记忆测试信号特征提取与定量评估

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Metal magnetic memory (MMM) technique is an effective method to achieve the detection of stress concentration (SC) zone for oil well casing. It can provide an early diagnosis of microdamages for preventive protection. MMM is a natural space domain signal which is weak and vulnerable to noise interference. So, it is difficult to achieve effective feature extraction of MMM signal especially under the hostile subsurface environment of high temperature, high pressure, high humidity, and multiple interfering sources. In this paper, a method of median filter preprocessing based on data preprocessing technique is proposed to eliminate the outliers point of MMM. And, based on wavelet transform (WT), the adaptive wavelet denoising method and data smoothing arithmetic are applied in testing the system of MMM. By using data preprocessing technique, the data are reserved and the noises of the signal are reduced. Therefore, the correct localization of SC zone can be achieved. In the meantime, characteristic parameters in new diagnostic approach are put forward to ensure the reliable determination of casing danger level through least squares support vector machine (LS-SVM) and nonlinear quantitative mapping relationship. The effectiveness and feasibility of this method are verified through experiments.
机译:金属磁记忆(MMM)技术是实现油井套管应力集中(SC)区域检测的有效方法。它可以对微损伤提供早期诊断,以提供预防性保护。 MMM是微弱的自然空间域信号,容易受到噪声干扰。因此,特别是在高温,高压,高湿和多种干扰源的恶劣地下环境下,很难实现有效的MMM信号特征提取。提出了一种基于数据预处理技术的中值滤波预处理方法,以消除MMM的离群点。并且,基于小波变换(WT),将自适应小波去噪方法和数据平滑算法应用于MMM系统的测试中。通过使用数据预处理技术,可以保留数据并降低信号噪声。因此,可以实现SC区的正确定位。同时,提出了新的诊断方法中的特征参数,以确保通过最小二乘支持向量机和非线性定量映射关系可靠地确定套管危险等级。通过实验验证了该方法的有效性和可行性。

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