Application of CNN Deep Learning to Well Pump Troubleshooting via Power Cards

Xiangguang Zhou, Chuanfeng Zhao, Xiao-hua Liu
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引用次数: 2

Abstract

Recent years have seen extensive applications of deep learning, especially in identification and analysis of images, audios and texts, but incipient applications in petroleum industry. Shapes of loops in power cards of a pumping unit are valuable indicators for pump troubles. These troubles may cause engineering accidents, increase operation costs and reduce operation efficiency. This paper applies image recognition technique based on Convolution Neural Network (CNN) to well pump troubleshooting via power cards. Recent years have seen extensive applications of deep learning, especially in identification and analysis of images, audios and texts, but incipient applications in petroleum industry. Shapes of loops in power cards of a pumping unit are valuable indicators for pump troubles. These troubles may cause engineering accidents, increase operation costs and reduce operation efficiency. This paper applies image recognition technique based on Convolution Neural Network (CNN) to well pump troubleshooting via power cards. Firstly, we establish mathematical models both for displacements of the polished rod clamp of a pump and for loads of the polished rod during a reciprocating movement, and preset input parameters corresponding to pump trouble types and severity levels. Ideal benchmarking power cards as the media for pump troubleshooting are generated by simulating complete pumping processes via running the mathematical models with the preset pumping parameters. Secondly, we establish a power card classification model with the AlexNet method. Then we train it with the ideal benchmarking power cards to develop its function of pump troubleshooting and increase the classification accuracy. This model gains robustness and universality from manually presetting parameters for and full coverage of trouble types and severity levels. Thirdly, we train the classification model with real power cards and obtain the preliminary classification results. A further training makes it more practical and applicable to local operations of pump troubleshooting. In the further training, we localize the ideal benchmarking power cards via manual inspection and local expertiseby adjusting the preliminary classification results honoring field expertise. Finally, we randomly divide the localized benchmarking power cards into one training set and one testing set, and then train the classification model with the training set and then apply it to the testing set. The final classification results revealthe high accuracy and practicability of the classification model. It is recommended that GPU should be used for calculation with the classification model to satisfy clients' requirements for higher speeds and efficiency. It provides a feasible method to exploit the potential value of oilfield data assets. The work in this paper will function as a stepping stone in applying ideas, algorithms and models of artificial intelligence to more extensive and thorough aims.
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基于电源卡的CNN深度学习在油井泵故障诊断中的应用
近年来,深度学习已经得到了广泛的应用,特别是在图像、音频和文本的识别和分析方面,但在石油工业中的应用还处于起步阶段。抽油机电源卡中回路的形状是判断抽油机故障的重要指标。这些问题可能造成工程事故,增加运行成本,降低运行效率。本文将基于卷积神经网络(CNN)的图像识别技术应用于通过电源卡进行的油井泵故障诊断。近年来,深度学习已经得到了广泛的应用,特别是在图像、音频和文本的识别和分析方面,但在石油工业中的应用还处于起步阶段。抽油机电源卡中回路的形状是判断抽油机故障的重要指标。这些问题可能造成工程事故,增加运行成本,降低运行效率。本文将基于卷积神经网络(CNN)的图像识别技术应用于通过电源卡进行的油井泵故障诊断。首先,建立了泵的磨光杆卡箍位移和往复运动过程中磨光杆载荷的数学模型,并根据泵的故障类型和严重程度设置了相应的输入参数。通过运行具有预设泵送参数的数学模型来模拟整个泵送过程,从而生成理想的基准电源卡作为泵送故障排除的介质。其次,利用AlexNet方法建立了电源卡分类模型。然后用理想的基准功率卡对其进行训练,开发其泵故障诊断功能,提高分类准确率。该模型通过手动预置故障类型和严重程度的参数和完全覆盖,获得了鲁棒性和通用性。第三,用真实的电力卡对分类模型进行训练,得到了初步的分类结果。进一步的培训使其更实用,适用于泵故障的本地操作。在进一步的培训中,我们通过人工检查和本地专业知识,通过调整初步分类结果,尊重现场专业知识,将理想的基准电源卡本地化。最后,我们将局部化的基准功率卡随机分为一个训练集和一个测试集,然后用训练集训练分类模型,然后应用到测试集上。最终的分类结果表明,该分类模型具有较高的准确率和实用性。建议使用GPU对分类模型进行计算,以满足客户对更高速度和效率的要求。为开发油田数据资产的潜在价值提供了一种可行的方法。本文的工作将作为一个垫脚石,将人工智能的思想、算法和模型应用于更广泛和彻底的目标。
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