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NEURAL NETWORK FOR PREDICTION OF HOLES DIAMETERS AND SURFACE ROUGHNESS IN DRILLING PROCESS

机译:钻井过程中孔直径和表面粗糙度预测的神经网络

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Several systems are currently tested in order to obtain a feasible and safe method for automation and control of drilling process. This work aims to predict the final diameters and surface roughness of titanium (Ti-6A1-4V) and aluminum (2024 T3) alloy during the machining process in a drilling machine. Acoustic emission, vibration, electrical motor power and force signals were acquired by a commercial data acquisition system. These signals were digitally processed through known statistics methods and were used as input data for an artificial neural network (newff), which estimates the current diameter and surface roughness. After this procedure other neural network (newfftd) was used for predicting the next hole diameter and surface roughness based on the output information from the first neural network. The neural network newff, the mathematical logical method that interprets the signals acquired, was used for estimating the actual hole diameter and surface roughness. The neural network newfftd is the most straightforward dynamic network, which consists of a feed-forward network with a tapped delay line at the input. The neural network newfftd predicts the next hole diameter and the surface roughness one step forward. The results from the neural networks were compared with the actual diameters and surface roughness taken from the worpiece, and showed a good accuracy and a sophisticated method for monitoring and controlling the drilling process, especially the one step drilling process.
机译:当前已经测试了几种系统,以获得用于自动化和控制钻孔过程的可行且安全的方法。这项工作旨在预测在钻床的加工过程中钛(Ti-6A1-4V)和铝(2024 T3)合金的最终直径和表面粗糙度。声发射,振动,电动机功率和力信号由商业数据采集系统采集。这些信号通过已知的统计方法进行了数字处理,并用作人工神经网络(newff)的输入数据,该网络估计当前直径和表面粗糙度。在此过程之后,根据第一个神经网络的输出信息,使用另一个神经网络(newfftd)预测下一个孔的直径和表面粗糙度。神经网络newff是一种解释所获取信号的数学逻辑方法,用于估计实际的孔径和表面粗糙度。神经网络newfftd是最直接的动态网络,它由前馈网络和在输入端带有分接延迟线的网络组成。神经网络newfftd预测下一个孔直径和表面粗糙度向前迈进了一步。将神经网络的结果与从钻头获得的实际直径和表面粗糙度进行比较,显示出良好的精度和一种用于监视和控制钻孔过程(尤其是一步钻孔过程)的精密方法。

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