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Prediction of shallow bit position based on vibration signal monitoring of bit broken rock

机译:基于振动信号监测的浅位位置预测钻头破碎岩

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摘要

The speed of drilling has a great relationship with the rock breaking efficiency of the bit. Based on the above background, the purpose of this article is to predict the position of shallow bit based on the vibration signal monitoring of bit broken rock. In this article, first, the mechanical research of drill string is carried out; the basic changes of the main mechanical parameters such as the axial force, torque, and bending moment of drill string are clarified; and the dynamic equilibrium equation theory of drill string system is analyzed. According to the similarity criterion, the corresponding relationship between drilling process parameters and laboratory test conditions is determined. Then, the position monitoring test system of the vibration bit is established. The acoustic emission signal and the drilling force signal of the different positions of the bit in the process of vibration rock breaking are collected synchronously by the acoustic emission sensor and the piezoelectric force sensor. Then, the denoised acoustic emission signal and drilling force signal are analyzed and processed. The mean value, variance, and mean square value of the signal are calculated in the time domain. The power spectrum of the signal is analyzed in the frequency domain. The signal is decomposed by wavelet in the time and frequency domains, and the wavelet energy coefficients of each frequency band are extracted. Through the wavelet energy coefficient calculated by the model, combined with the mean, variance, and mean square error of time-domain signal, the position of shallow buried bit can be analyzed and predicted. Finally, by fitting the results of indoor experiment and simulation experiment, it can be seen that the stress–strain curve of rock failure is basically the same, and the error is about 3.5%, which verifies the accuracy of the model.
机译:钻孔速度与钻头的岩石破碎效率有很大的关系。基于上述背景,本文的目的是基于钻头破碎岩石的振动信号监测来预测浅比特的位置。在本文中,首先,进行钻柱的机械研究;阐明了钻柱的轴向力,扭矩和弯曲力矩的主要机械参数的基本变化;分析了钻弦系统的动态平衡方程理论。根据相似性标准,确定钻井过程参数和实验室测试条件之间的相应关系。然后,建立振动比特的位置监控测试系统。在振动岩断裂过程中,声发射信号和钻头中的不同位置的钻孔力信号由声发射传感器和压电力传感器同步收集。然后,分析和处理去噪声发射信号和钻孔力信号。信号的平均值,方差和平均方形值在时域中计算。在频域中分析信号的功率谱。信号通过时间和频域的小波分解,提取每个频带的小波能量系数。通过模型计算的小波能量系数,结合时域信号的平均,方差和均方误差,可以分析和预测浅埋位的位置。最后,通过拟合室内实验和仿真实验的结果,可以看出岩石破坏的应力 - 应变曲线基本相同,误差约为3.5%,这验证了模型的准确性。

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