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Application of Hilbert-Huang Transform to Predict Grinding Surface Quality On-line

机译:希尔伯特-黄变换在在线预测磨削表面质量中的应用

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摘要

Predicting the precision of grinding process, especially correlating surface functionality generation to grinding conditions, would be of great significance to improve grinding accuracy of the end precision product. Huang developed a very promising revolutionary spectral data analysis technique based on the Hilbert transform. The concrete methods of the EMD, the local Hilbert spectrum are introduced. An artificial neural network (ANN) based on back propagation is developed to predict surface roughness Ra. An accelerometer is employed as in-process surface recognition sensor during grinding process to collect the vibration as input neurons. Changing the grinding condition, training and testing within the artificial neural networks to retrieve the weightings, the experimental results show that the proposed ANN surface recognition model is economical, efficient and the model has a high accuracy rate for predicting surface roughness.
机译:预测研磨过程的精度,尤其是将表面功能的产生与研磨条件相关联,对于提高最终精密产品的研磨精度具有重要意义。 Huang基于Hilbert变换开发了一种非常有前途的革命性光谱数据分析技术。介绍了EMD的具体方法,局部希尔伯特谱。开发了基于反向传播的人工神经网络(ANN)来预测表面粗糙度Ra。加速度计用作研磨过程中的过程中表面识别传感器,以收集振动作为输入神经元。通过改变磨削条件,在人工神经网络中进行训练和测试以获取权重,实验结果表明,所提出的人工神经网络表面识别模型经济,有效,并且该模型具有较高的预测表面粗糙度的准确率。

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