Abstract

Owing to the importance of rod pumping system fault detection using an indicator diagram, indicator diagram identification has been a challenging task in the computer-vision field. The gradual changing fault is a special type of fault because it is not clearly indicated in the indicator diagram at the onset of its occurrence and can only be identified when an irreversible damage in the well has been caused. In this paper, we proposed a new method that combines the convolutional neural network (CNN) and long short-term memory (LSTM) network to perform a gradual changing fault classification. In particular, we employed CNN to extract the indicator diagram multilevel abstraction features based on its hierarchical structure. We considered the change in the time series of indicator diagrams as a sequence and employed LSTM to perform recognition. Compared with traditional mathematical model diagnosis methods, CNN-LSTM overcame the limitations of the traditional mathematical model theoretical analysis such as unclear assumption conditions and improved the diagnosis accuracy. Finally, 1.3 million sets of well production were set as a training dataset and used to evaluate CNN-LSTM. The results demonstrated the effectiveness of utilizing CNN and LSTM to recognize a gradual changing fault using the indicator diagram and characteristic parameters. The accuracy reached 98.4%, and the loss was less than 0.9%.

Highlights

  • Rod pumping systems are used in approximately 94% of artificially lifted wells

  • 80% of the indicator diagrams are used for training and 20% are used for testing. e proposed method is evaluated based on the categorization accuracy, which is de ned as follows: accuracy number of correctly categorized indicator diagrams. total number of indicator diagrams

  • We have proposed the combination of convolutional neural network (CNN) and long short-term memory (LSTM) to perform gradual changing fault identi cation using the indicator diagram

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Summary

Introduction

Rod pumping systems are used in approximately 94% of artificially lifted wells. Owing to their extensive application, detailed understanding of the diagnosis and analysis of a rod-pump working state using the indicator diagram is important. Indicator diagram, which is a closed curve, reflects the variation pattern of a suspended point load in a pumping unit with its displacement, which performs vital functions for identifying the rod-pump production state. Section AB represents the loading section in the upward direction, and section BC represents the upward movement of the sucker rod. Section CD represents the unloading section in the downward direction, and section DA represents the downward movement of the rod pump

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