Petroleum Science >2023, Issue2: - DOI: https://doi.org/10.1016/j.petsci.2023.02.017
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 Open Access
文章信息
作者:Yun-Peng He, Chuan-Zhi Zang, Peng Zeng, Ming-Xin Wang, Qing-Wei Dong, Guang-Xi Wan, Xiao-Ting Dong
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引用方式:Yun-Peng He, Chuan-Zhi Zang, Peng Zeng, Ming-Xin Wang, Qing-Wei Dong, Guang-Xi Wan, Xiao-Ting Dong, 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, Petroleum Science, Volume 20, Issue 2, 2023, Pages 1142-1154, https://doi.org/10.1016/j.petsci.2023.02.017.
文章摘要
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.
关键词
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Keywords: Few-shot learning; Indicator diagram; Meta-learning; Soft thresholding; Sucker-rod pumping system; Time–frequency signature; Working condition recognition