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Submersible Motor Pump Fault Diagnosis System: A Comparative Study of Classification Methods

机译:潜水电机泵故障诊断系统:分类方法的比较研究

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In this paper, an artificial intelligence solution to diagnose faults before acquisition of submersible petroleum motor pump systems is presented. Proper fault identification is time consuming and demands highly trained human experts. The diagnosis system is intended to facilitate the work of the human component of this important process by replicating the decision of highly trained experts through a classifier. To perform the automatic diagnosis, firstly intermediate features are extracted as the vibration spectra. Subsequently, high level features are extracted and fed into a classifier that outputs the final diagnose. To validate our proposal and to select the best classifier (among K-Nearest-Neighbour, Random Forest, Support Vector Machine and Decision Tree) for this problem, we performed a comparative study using real data acquired in tests accomplished before acquisition of submersible motor pumps. Our dataset comprises thousands of entries of accelerometer sensors (vertically distributed along the particular system components) data labelled by an human expert to one of the considered scenarios (normal pump, faulty sensor, faulty pump with rubbing, misalignment or unbalance). Results have showed that the evaluated classifiers have equivalent performance for the given problem, and that the standardization procedure can improve the performance of some classifiers. The performance of the classifiers is sufficient to facilitate the work performed by humans and consequently reduce the time spent in the pump fault diagnosis process.
机译:在本文中,人工智能溶液来诊断采集潜水石油电动机泵系统的故障之前被呈现。正确的故障识别是耗时且要求训练有素的人类专家。该诊断系统的目的是通过一个分级复制训练有素的专家的决定,以促进这一重要进程的人组成的工作。为了执行自动诊断,首先中间特征被提取作为振动光谱。随后,高级特征被提取并馈送到输出最终的诊断分类器。为了验证我们的建议,并选择最佳的分类(其中K-近邻,随机森林,支持向量机和决策树)对于这个问题,我们使用的测试中获得的真实数据进行了比较研究收购潜水泵之前完成。我们的数据集包括数千加速计传感器(沿着特定的系统组件垂直分布)由人类专家标记的所考虑的情景中的一个数据的条目的(正常的泵,故障的传感器,故障的泵用摩擦,未对准或不平衡)。结果表明,该评估分类对给定的问题相当的性能,以及标准化过程可以提高一些分类器的性能。分类器的性能足以促进人类所从事的工作,从而降低泵故障诊断过程花费的时间。

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