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Data Anomaly Detection of Electric Submersible Pump Based on Self-Learning Neural Network of Sequential Coding

摘要:Electric submersible pumps (ESP) often have a wide range of abnormal data when operating under complex conditions, which brings disaster to oilfield production analysis and data mining. In this paper, we propose a vector normalization method based on physical significance constraint from the difficulty of high variability of data distribution of each parameter of ESP The redistributed features fix the lower limit of parameters such as leakage current at ?1, which can reflect the equipment significance of the ESP. In order to improve the multimodal temporal feature extraction capability, an improved model of ESP CNN AutoEncoder is proposed. The model uses one dimensional convolution for forward encoding and inverse decoding, and combines reconstruction errors at different scales to dynamically adjust the tolerance of anomaly detection to capture a higher adaptive threshold window. The system is validated on real-time databases in two oil fields and achieved successful application results. Error reconstruction and sensitivity analysis are performed for detection performance to determine tolerance metrics that can dynamically meet different oilfield requirements. In comparison with Isolation Forest model, significant advantages are achieved in the ESP start-up anomalies. Finally, an ESP anomaly detection system with self-learning capability is realized. ? The Author(s), under exclusive license to Springer Nature Switzerland AG 2025.

ISSN号:2211-0984

卷、期、页:卷175 MMS:309-323

发表日期:2025-01-01

期刊分区(SCI为中科院分区):无

收录情况:EI(工程索引)

发表期刊名称:Mechanisms and Machine Science

参与作者:王钧

通讯作者:马赫

第一作者:韩国庆

论文类型:会议论文

论文概要:马赫,韩国庆,王钧,Data Anomaly Detection of Electric Submersible Pump Based on Self-Learning Neural Network of Sequential Coding,Mechanisms and Machine Science,2025,卷175 MMS:309-323

论文题目:Data Anomaly Detection of Electric Submersible Pump Based on Self-Learning Neural Network of Sequential Coding

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