Unlocking the Potential of Unlabeled Data in Building Deep Learning Model for Dynamometer Cards Classification by Using Self-Supervised Learning

R. Wibawa, Rosyadi Rosyadi, Maulirany Nancy, Raden Irfani Hasya Fulki
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Abstract

Dynamometer card is one of the vital surveillances for Sucker Rod Pump (SRP) performance monitoring in Duri field. Even though the field produces a massive number of cards, they come with no label or interpretation about the pump conditions based on the card shape. Self-supervised learning (SSL) consists of a pretext task that trains feature extractors by using unlabeled data as opposed to supervised learning, that requires a lot of effort in labeling data which is time consuming and costly. This paper evaluates the performance of a feature extractor, Alexnet, that is trained by using several pretext task techniques. This study used around 660,000 unlabeled cards while a small amount of labeled data was used for evaluation purposes using linear evaluation protocol. The result showed that the trained Alexnet using Pretext-Invariant Representation Learning (PIRL) with jigsaw has better performance by 6% compared to the pre-trained ImageNet model. Further fine-tuning process by using labeled data could achieve 93% accuracy. The model was also tested using fresh data and the result was compared to the expert's interpretation. This approach can potentially add more types of rod pump problems to detect in the Duri field with considerable precision. In addition, the new approach could improve the current method of detecting more SRP with valve leaking problems.
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利用自监督学习,释放未标记数据在建立测功机卡片分类深度学习模型中的潜力
测功卡是Duri油田有杆泵性能监测的重要监控设备之一。尽管该油田生产了大量的卡片,但它们没有标签,也没有根据卡片形状来解释泵的情况。自监督学习(SSL)由一个借口任务组成,该任务通过使用未标记的数据来训练特征提取器,而不是使用监督学习,这需要在标记数据方面付出大量的努力,这既耗时又昂贵。本文评估了使用几种借口任务技术训练的Alexnet特征提取器的性能。本研究使用了约66万张未标记卡片,而少量标记数据用于使用线性评估方案进行评估。结果表明,与预训练的ImageNet模型相比,使用基于拼图的Pretext-Invariant Representation Learning (PIRL)训练的Alexnet模型的性能提高了6%。进一步使用标记数据进行微调,准确率可达93%。该模型还使用新数据进行了测试,并将结果与专家的解释进行了比较。这种方法可以潜在地增加更多类型的有杆泵问题,以便在Duri油田以相当高的精度检测。此外,该方法还可以改进现有的检测更多具有阀门泄漏问题的SRP的方法。
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