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Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition Diagnosis

机译:抽油泵工作状态诊断指标卡数据特征提取研究

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Three feature extraction methods of sucker-rod pump indicator card data have been studied, simulated, and compared in this paper, which are based on Fourier Descriptors (FD), Geometric Moment Vector (GMV), and Gray Level Matrix Statistics (GLMX), respectively. Numerical experiments show that the Fourier Descriptors algorithm requires less running time and less memory space with possible loss of information due to nonoptimal numbers of Fourier Descriptors, the Geometric Moment Vector algorithm is more time-consuming and requires more memory space, while the Gray Level Matrix Statistics algorithm provides low-dimension feature vectors with more time consumption and more memory space. Furthermore, the characteristic of rotational invariance, both in the Fourier Descriptors algorithm and the Geometric Moment Vector algorithm, may result in improper pattern recognition of indicator card data when used for sucker-rod pump working condition diagnosis.
机译:本文研究,模拟和比较了抽油杆泵指示器卡数据的三种特征提取方法,它们基于傅立叶描述符(FD),几何矩矢量(GMV)和灰度矩阵统计(GLMX),分别。数值实验表明,傅里叶描述符算法需要较少的运行时间和较少的存储空间,而且由于傅里叶描述符数量不理想,可能导致信息丢失;几何矩矢量算法更耗时且需要更多的存储空间,而灰度矩阵统计算法提供了低维特征向量,具有更多的时间消耗和更多的存储空间。此外,在用于抽油杆泵工作状态诊断时,傅立叶描述符算法和几何矩矢量算法中的旋转不变性特征都可能导致指示卡数据的模式识别不正确。

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