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Prediction of ROP and MPV Based on Support Vector Regression Method

机译:基于支持向量回归法的ROP和MPV预测

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摘要

During the drilling process, accurate prediction of drilling efficiency and safety plays a key role in timely adjustment of drilling process state. In general, surface parameters rate of penetration(ROP) and mud pit volume(MPV) are often used as important parameters to judge drilling safety and efficiency due to the bad bottom hole environment and unreliable detection devices. However, most drilling systems are underground, the structure is complex and exists many disturbances, so the state of drilling process is difficult to accurately predict. In this paper, an online support vector regression(OSVR) model is proposed to predict the ROP and MPV. First, the parameters of the model are determined by simple drilling process analysis. Then, the fast fourier transform filtering method is used to filter the high frequency disturbances of the data. Finally, the prediction model is established by support vector regression(SVR) method and the model is continuously updated by the model update method. The simulation results of industrial data show that the proposed model has a good prediction effect.
机译:在钻井过程中,准确地预测钻井效率和安全在钻井过程状态时及时调整关键作用。通常,渗透(ROP)和泥浆容积(MPV)的表面参数速率通常用作判断由于底部孔环境和不可靠的检测装置而判断钻井安全性和效率的重要参数。然而,大多数钻井系统都是地下的,该结构复杂并且存在许多干扰,因此钻井过程的状态难以准确地预测。在本文中,提出了一种在线支持向量回归(OSVR)模型来预测ROP和MPV。首先,模型的参数是通过简单的钻井过程分析来确定的。然后,使用快速傅立叶变换滤波方法来过滤数据的高频干扰。最后,通过支持向量回归(SVR)方法建立预测模型,并且模型更新方法连续更新模型。工业数据的仿真结果表明,所提出的模型具有良好的预测效果。

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