基于BP神经网络算法的钻头粘滑振动风险评估方法研究

Chong Chen, Shimin Zhang, Hang Zhang, Xiaojun Li, Zichen He
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引用次数: 1

摘要

在钻井过程中,钻头与井底、钻柱与井壁之间的非线性接触会引起钻头的粘滑振动,从而缩短钻头的使用寿命,甚至危及钻柱的安全。通过井下随钻测量(MWD)工具和地面设备测量的钻头转速、钻柱三轴加速度、井口扭矩等参数,可以识别钻头粘滑振动的严重程度。为了评估粘滑振动的程度,提出了一种基于反向传播神经网络(BPNN)的病态滑动振动风险评估方法。在对仿真数据进行时频域分析的基础上,提取信号时频域特征参数,然后利用核主成分分析(KPCA)进行降维。从而得到特征向量,作为bp神经网络的输入参数。基于BPNN算法确定钻头的粘滑振动,并对粘滑振动强度进行分类。结果表明,该方法能有效识别钻头粘滑振动的严重程度。因此,该方法对钻头粘滑振动进行评价是有效的,可以帮助钻井人员根据振动的严重程度实际调整钻井参数,从而降低钻井过程中粘滑振动的风险,提高钻井作业的效率和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Risk Assessment Method of Stick-Slip Vibration of the Bit Based on BP Neural Network Algorithm
During the drilling process, the non-linear contacts between the bit and the bottom hole, the drill string and the borehole wall can cause the bit’s stick-slip vibration, which will shorten the life of the bit and even endanger the safety of the drill string. The severity of stick-slip vibration of a bit can be identified by the rotary speed of a bit, the triaxial accelerations of the drill string, the wellhead torque and other parameters measured by the measuring while drilling (MWD) tools in the downhole and devices on the surface. To evaluate the level of stick-slip vibration, this paper proposes a risk assessment method of sick-slip vibration based on backpropagation neural network (BPNN). According to the time and frequency domain analysis of the data collected from simulation, the feature parameters of the time and frequency domains of signals are extracted, and then the kernel principal component analysis (KPCA) is applied to reduce dimensions. Consequently, the feature vectors can be obtained, which become the input parameters of the BPNN. Based on BPNN algorithm, the stick-slip vibration of the bit is determined, and the classification of stick-slip vibration strength is carried out. The results show that this method can effectively identify the severity of stick-slip vibration of a bit. Therefore, this method is valid to evaluate the stick-slip vibration of a bit, which will help drillers adjust the drilling parameters practically according to the severity of vibration, so as to reduce the risks of stick-slip vibration during drilling and improve the efficiency and safety of drilling operation.
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