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A Method of State Recognition in Machining Process Based on Wavelet and Hidden Markov Model

机译:基于小波和隐马尔可夫模型的加工过程中识别方法

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The state recognition in machining process,especially recognition of chatter is very important for mechanical manufacturing process.In order to avoid processing chatter effectively,a method based on wavelet packet analysis and hidden Markov model(HMM) is proposed for state recognition in machining process.Wavelet packet decomposition,which can image the information in the different frequency band,is applied as the method of feature extraction.The normalized root mean square (RMS) values of the wavelet packet coefficients in different frequency bands were taken as the observation sequence vector.The method of HMM pattern recognition was used to recognize states of machining process.Based on choosing the suitable standard samples of different states,this method can correctly recognize the test samples states of machining process after being trained by the standard samples.Results of experiment showed that the proposed method is suitable for recognition implementation in machining process.
机译:在加工过程中的状态识别,尤其是喋喋不休的识别对于机械制造过程非常重要。为了避免有效地处理抖动,提出了一种基于小波分组分析和隐马尔可夫模型(HMM)的方法,用于在加工过程中识别。可以将不同频带中的信息图像图像的小波分组分解作为特征提取方法。作为观察序列向量,将不同频带中的小波分组系数的归一化均方根(RMS)值作为观察序列向量。 HMM模式识别的方法用于识别加工过程的状态。基于选择不同状态的合适的标准样本,该方法可以在由标准样本训练后正确识别加工过程的测试样本状态。实验结果显示所提出的方法适用于加工过程中的识别实施。

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