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Few-shot working condition recognition of a sucker-rod pumping system based on a 4-dimensional time-frequency signature and meta-learning convolutional shrinkage neural network

Yunpeng He, Chuanzhi Zang, Peng Zeng, Mingxin Wang, Qingwei Dong, Guangxi Wan, Xiaoting Dong

2023Petroleum Science26 citationsDOIOpen Access PDF

Abstract

The accurate and intelligent identification of the working conditions of a sucker-rod pumping system is necessary. As onshore oil extraction gradually enters its mid-to late-stage, the cost required to train a deep learning working condition recognition model for pumping wells by obtaining enough new working condition samples is expensive. For the few-shot problem and large calculation issues of new working conditions of oil wells, a working condition recognition method for pumping unit wells based on a 4-dimensional time-frequency signature (4D-TFS) and meta-learning convolutional shrinkage neural network (ML-CSNN) is proposed. First, the measured pumping unit well workup data are converted into 4D-TFS data, and the initial feature extraction task is performed while compressing the data. Subsequently, a convolutional shrinkage neural network (CSNN) with a specific structure that can ablate low-frequency features is designed to extract working conditions features. Finally, a meta-learning fine-tuning framework for learning the network parameters that are susceptible to task changes is merged into the CSNN to solve the few-shot issue. The results of the experiments demonstrate that the trained ML-CSNN has good recognition accuracy and generalization ability for few-shot working condition recognition. More specifically, in the case of lower computational complexity, only few-shot samples are needed to fine-tune the network parameters, and the model can be quickly adapted to new classes of well conditions.

Topics & Concepts

Convolutional neural networkArtificial intelligenceSucker rodComputer sciencePattern recognition (psychology)GeneralizationFeature extractionTask (project management)Artificial neural networkDeep learningEngineeringMathematicsPetroleum engineeringSystems engineeringMathematical analysisOil and Gas Production TechniquesReservoir Engineering and Simulation MethodsDrilling and Well Engineering
Few-shot working condition recognition of a sucker-rod pumping system based on a 4-dimensional time-frequency signature and meta-learning convolutional shrinkage neural network | Litcius