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Monitoring of hole quality in friction drilling using different machine learning techniques

机译:不同机器学习技术监测摩擦钻孔孔质量

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摘要

The present investigation deals with monitoring the bush and collar formation during the friction drilling (FD) process of Be-Cu alloy. During the FD process, the alloys are often prone to structural damages as well as irregular bush formation. Hence, monitoring the quality of the hole during the process becomes inevitable. The quality of the drilled hole was monitored using different machine learning (ML) techniques. The vibration signals were captured using an accelerometer sensor. The change in amplitude of the measurement data concerning each process parameter and the measured bush surface roughness values were used to validate the effectiveness of the proposed method. The results inferred that the rigidity of the hole could be differentiated between the formation of a proper and improper bush. The study opines that the decision tree method is faster and more accurate compared to the other two methods for identifying the quality of the drilled hole.
机译:本研究涉及在BE-Cu合金的摩擦钻井(FD)过程中监测衬套和套环形成。在FD工艺期间,合金通常容易发生结构损坏以及不规则的衬套形成。因此,在过程中监测孔的质量变得不可避免。使用不同的机器学习(ML)技术监测钻孔的质量。使用加速度计传感器捕获振动信号。用于每个过程参数的测量数据的幅度和测量的衬套表面粗糙度值的变化用于验证所提出的方法的有效性。结果推断出孔的刚性可以在形成适当和不正当的布什的形成之间进行区分。与用于识别钻孔质量的另外两种方法相比,该研究使决策树方法更快,更准确。

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