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Automatic Recognition of Sucker-Rod Pumping System Working Conditions Using Dynamometer Cards with Transfer Learning and SVM

机译:使用带传递学习和SVM的测功率卡自动识别吸盘杆泵送系统工作条件

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摘要

Sucker-rod pumping systems are the most widely applied artificial lift equipment in the oil and gas industry. Accurate and intelligent working condition recognition of pumping systems imposes major impacts on oilfield production benefits and efficiency. The shape of dynamometer card reflects the working conditions of sucker-rod pumping systems, and different conditions can be indicated by their typical card characteristics. In traditional identification methods, however, features are manually extracted based on specialist experience and domain knowledge. In this paper, an automatic fault diagnosis method is proposed to recognize the working conditions of sucker-rod pumping systems with massive dynamometer card data collected by sensors. Firstly, AlexNet-based transfer learning is adopted to automatically extract representative features from various dynamometer cards. Secondly, with the extracted features, error-correcting output codes model-based SVM is designed to identify the working conditions and improve the fault diagnosis accuracy and efficiency. The proposed AlexNet-SVM algorithm is validated against a real dataset from an oilfield. The results reveal that the proposed method reduces the need for human labor and improves the recognition accuracy.
机译:吸盘泵送系统是石油和天然气工业中最广泛应用的人工升力设备。泵送系统的准确且智能的工作条件识别对油田生产效率和效率产生了重大影响。测力计卡的形状反映了吸盘泵送系统的工作条件,并且可以通过其典型卡特性来指示不同的条件。然而,在传统的识别方法中,根据专业经验和域知识手动提取特征。本文提出了一种自动故障诊断方法,以识别具有传感器收集的大规模测功率卡数据的吸盘杆泵送系统的工作条件。首先,采用基于AlexNet的转移学习来自动提取来自各种测力计卡的代表特征。其次,通过提取的特征,纠错输出代码基于模型的SVM旨在识别工作条件并提高故障诊断精度和效率。所提出的AlexNet-SVM算法针对来自油田的真实数据集进行了验证。结果表明,该方法降低了对人工劳动力的需求,提高了识别准确性。

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