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Development of a neural network based surface roughness prediction system using cutting parameters and an accelerometer in turning

机译:基于神经网络的表面粗糙度预测系统,使用切割参数和加速度计转动

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In this work, a technique is proposed to predict surface roughness by using neural network. Surface roughness could be predicted within a reasonable degree of accuracy by taking feed rate, cutting speed, depth of cut and three orthogonal axis (x, y, z) signals of vibrations of tool holder as input parameters. 27 experiments were performed by using a CNC lathe with a carbide cutting tool. Experimental data obtained from turning process were used for training and testing of neural network architecture based prediction system. When experimental and prediction results were compared, it has been seen that a mean accuracy of 91,17% was achieved.
机译:在这项工作中,提出了一种通过使用神经网络来预测表面粗糙度的技术。通过采用刀具支架的振动作为输入参数的进料速率,切割速度,切割和三个正交轴(x,y,z)信号,可以在合理的准确度内预测表面粗糙度。通过使用碳化物切削工具的CNC车床进行27实验。从转动过程获得的实验数据用于基于神经网络架构的预测系统的训练和测试。当比较实验和预测结果时,已经看到达到了91,17%的平均准确性。

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