基于深度学习的天然气抽油机故障检测

Mykola Kozlenko, O. Zamikhovska, Valerii Tkachuk, L. Zamikhovskyi
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引用次数: 1

摘要

天然气抽油机是一个非常困难的诊断对象。许多技术设备的组合、不同的运行条件和其他因素要求设计和实施可靠的诊断方法。基于声信号的天然气抽油机故障诊断已经得到了广泛的应用。统计建模和频率分析是其中最流行的。在本文中,我们分享了使用基于人工多层密集前馈神经网络和深度学习方法的分类模型对GTK-25-i型抽油机进行软件诊断的经验。该模型预测了机组的三种状态:“正常”、“正常”和“故障”。在本研究中,我们采用振动信号和声发射信号的组合作为神经网络模型的特征。本文介绍了振动和声发射信号的描述统计、时域和频域分析。提出了输入数据管道的结构和深度神经网络的结构。本文展示了详细的训练、验证和测试类度量。此外,我们将三个类别中的每个类别的最终分类性能作为f1得分,并将结果与其他知名方法进行比较。总体准确率为0.9864,最低f1分数为0.8113。与最新的行业研究结果相比,这是有竞争力的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Based Fault Detection of Natural Gas Pumping Unit
Natural gas pumping unit is a very difficult object for diagnosis. A lot of combinations of technical equipment, different operational conditions, and other factors require design and implementation of reliable diagnosis methods. Acoustic signal based fault diagnosis of natural gas pumping units is well known and widely used in a number of applications. Statistical modeling and frequency analysis are among the most popular. In this paper, we share our experience in the use of the classification model based on an artificial multilayered dense feed forward neural network and a deep learning approach for software-implemented diagnosis of a GTK-25-i type of pumping unit. The model predicts three states of the unit: “nominal”, “normal”, and “faulty”. It this research we used combination of vibration signal and acoustic emission signal as features for neural network model. In this paper we present the descriptive statistics, time and frequency domains analysis of vibration and acoustic emission signals. We present the developed structure of input data pipeline and the architecture of the deep neural network. The paper shows the detailed training, validation, and test class-wise metrics. Also we present the final classification performance as F1-score for each of three classes and compare results with other well-known approaches. The paper reports the overall accuracy of 0.9864 and minimum F1-score of 0.8113. This is competitive compared to the latest industry research findings.
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