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An online hybrid prediction model for mud pit volume in the complex geological drilling process

机译:复杂地质钻井过程中泥浆体积的在线混合预测模型

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摘要

The mud pit volume (MPV) model is of great importance in evaluating the bottom hole pressure (BHP). In this paper, an online hybrid model is developed to predict MPV considering the drilling characteristics of data pollution, multi-variable, strong nonlinearity, and time series characteristics. First, the mutual information and fast Fourier transform method are introduced to filter data noises and determine the model inputs. Then, back propagation neural network (BPNN) method and support vector regression (SVR) method are used to establish the submodels, and the submodels are combined based on three evaluation criteria. After that, the combination model is fine-tuned according to the time series trends of MPV based on the long short-term memory neural network (LSTMNN). Finally, a modified sliding window method is developed to update the hybrid model constructed by SVR, BPNN and LSTMNN. The simulation results based on actual drilling data show that the online hybrid model has higher accuracy than other prediction models, and the online hybrid model can follow the time series characteristics of MPV, which validates the effectiveness of the developed model.
机译:泥浆容积(MPV)模型在评估底部孔压力(BHP)方面具有重要意义。在本文中,开发了在线混合模型以预测MPV考虑数据污染,多变量,强非线性和时间序列特性的钻孔特性。首先,引入互信息和快速傅里叶变换方法以滤除数据噪声并确定模型输入。然后,使用后传播神经网络(BPNN)方法和支持向量回归(SVR)方法来建立子蒙德尔,并且基于三个评估标准组合子蒙德。之后,根据基于长短期内存神经网络(LSTMNN)的MPV的时间序列趋势来微调组合模型。最后,开发了一种修改的滑动窗口方法以更新由SVR,BPNN和LSTMNN构造的混合模型。基于实际钻探数据的仿真结果表明,在线混合模型具有比其他预测模型更高的准确性,并且在线混合模型可以遵循MPV的时间序列特性,从而验证开发模型的有效性。

著录项

  • 来源
    《Control Engineering Practice》 |2021年第6期|104793.1-104793.11|共11页
  • 作者单位

    School of Automation China University of Geosciences Wuhan 430074 China Hubei Key Laboratory of Advanced Control and Intelligent Automation for Complex Systems Wuhan 430074 China Engineering Research Center of Intelligent Technology for Geo-Exploration Ministry of Education Wuhan 430074 China School of Engineering Tokyo University of Technology Hachioji Tokyo 192-0982 Japan;

    School of Automation China University of Geosciences Wuhan 430074 China Hubei Key Laboratory of Advanced Control and Intelligent Automation for Complex Systems Wuhan 430074 China Engineering Research Center of Intelligent Technology for Geo-Exploration Ministry of Education Wuhan 430074 China;

    School of Engineering Tokyo University of Technology Hachioji Tokyo 192-0982 Japan;

    School of Automation China University of Geosciences Wuhan 430074 China Hubei Key Laboratory of Advanced Control and Intelligent Automation for Complex Systems Wuhan 430074 China Engineering Research Center of Intelligent Technology for Geo-Exploration Ministry of Education Wuhan 430074 China;

    School of Automation China University of Geosciences Wuhan 430074 China Hubei Key Laboratory of Advanced Control and Intelligent Automation for Complex Systems Wuhan 430074 China Engineering Research Center of Intelligent Technology for Geo-Exploration Ministry of Education Wuhan 430074 China;

    Chiba University of Commerce Ichikawa-shi Chiba 272-8512 Japan;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Mud pit volume; Time series; Support vector regression; Back propagation neural network; Long short-term memory neural network;

    机译:泥坑体积;时间序列;支持向量回归;后传播神经网络;长期内记忆神经网络;

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