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Fault diagnosis for down-hole conditions of sucker rod pumping systems based on the FBH–SC method

机译:基于FBH–SC方法的抽油杆抽油系统井下故障诊断

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Dynamometer cards are commonly used to analyze down-hole working conditions of pumping systems in actual oil production. Nowadays, the traditional supervised learning methods heavily rely on the classification accuracy of the training samples. In order to reduce the errors of manual classification, an automatic clustering algorithm is proposed and applied to diagnose down-hole conditions of pumping systems. The spectral clustering (SC) is a new clustering algorithm, which is suitable for any data distribution. However, it is sensitive to initial cluster centers and scale parameters, and needs to predefine the cluster number. In order to overcome these shortcomings, we propose an automatic clustering algorithm, fast black hole–spectral clustering (FBH–SC). The FBH algorithm is used to replace the K-mean method in SC, and a CritC index function is used as the target function to automatically choose the best scale parameter and clustering number in the clustering process. Different simulation experiments were designed to define the relationship among scale parameter, clustering number, CritC index value, and clustering accuracy. Finally, an example is given to validate the effectiveness of the proposed algorithm.
机译:测功机卡通常用于分析实际采油中泵系统的井下工作条件。如今,传统的监督学习方法严重依赖于训练样本的分类准确性。为了减少人工分类的错误,提出了一种自动聚类算法并将其应用于诊断泵系统的井下状况。频谱聚类(SC)是一种新的聚类算法,适用于任何数据分发。但是,它对初始群集中心和规模参数敏感,因此需要预先定义群集编号。为了克服这些缺点,我们提出了一种自动聚类算法,即快速黑洞光谱聚类(FBH-SC)。 FBH算法用于替换SC中的K-mean方法,而CritC索引函数用作目标函数,以在聚类过程中自动选择最佳尺度参数和聚类数。设计了不同的仿真实验来定义尺度参数,聚类数,CritC指标值和聚类精度之间的关系。最后,给出一个实例来验证所提算法的有效性。

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