不同砂轮修整条件下磨削过程工件表面粗糙度预测

H. Baseri
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引用次数: 5

摘要

砂轮修整工艺对砂轮表面形貌的影响决定了砂轮修整条件对磨削过程中工件表面粗糙度的影响。这样,对表面粗糙度的预测有助于优化圆盘修整条件,以提高表面粗糙度。本研究的目的是设计一个前馈-反传播神经网络(FFBP-NN),利用旋转金刚石盘修整器修整砂轮时的实验观测数据来估计磨削过程中的表面粗糙度。模型的输入参数为修整速比、修整深度和修整器交叉进给率,输出参数为表面粗糙度。在实验过程中,磨矿条件不变,只有选矿条件变化。预测值与实验数据的比较表明,该预测模型对表面粗糙度的估计具有良好的性能。
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Workpiece surface roughness prediction in grinding process for different disc dressing conditions
The surface roughness of workpiece in grinding process is influenced and determined by the disc dressing conditions due to effects of dressing process on the wheel surface topography. In this way, prediction of the surface roughness helps to optimize the disc dressing conditions to improve surface roughness. The objective of this study is to design of a feed forward back propagation neural network (FFBP-NN) for estimation of surface roughness in grinding process using the data generated based on experimental observations when the wheel is dressed using a rotary diamond disc dresser. The input parameters of model are dressing speed ratio, dressing depth and dresser cross-feed rate and output parameter is surface roughness. In the experiment procedure the grinding conditions are constant and only the dressing conditions are varied. The comparison of the predicted values and the experimental data indicates that the predictive model has an acceptable performance to estimation of surface roughness.
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