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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Force-based tool wear estimation for milling process using Gaussian mixture hidden Markov models
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Force-based tool wear estimation for milling process using Gaussian mixture hidden Markov models

机译:基于力的工具磨损估计,用于使用高斯混合隐马尔可夫模型的铣削过程

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摘要

Tool wear monitoring system is of vital importance for the guarantee of surface integrity and manufacturing effectiveness. To overcome the weaknesses of neural networks, a new tool wear estimation model based on Gaussian mixture hidden Markov models (GMHMM) is presented. Nine types of time-domain features are extracted from the milling force signals which are obtained under four sorts of tool wear state. Besides, the sensitive features which can indicate the tool wear states accurately are selected out by correlation analysis. To test the effectiveness of the presented model, the selected sensitive features serve to identify the tool wear states by utilizing GMHMM and back-propagation neural network (BPNN), respectively. Moreover, the identification performance of GMHMM under the combinations of various numbers of Gaussian mixtures and various lengths of observation sequence is analyzed to verify the practicability of the presented tool wear model. The experimental results show that the GMHMM-based model can identify the tool wear states effectively and GMHMM outperforms the BPNN model in accuracy and stability. This method lays the foundation on tool wear monitoring in real industrial settings.
机译:工具磨损监测系统对于表面完整性和制造效果的保证至关重要。为了克服神经网络的弱点,提出了一种基于高斯混合隐马尔可夫模型(GMHMM)的新工具磨损估计模型。从铣削力信号中提取九种时间域特征,该方法在四种工具磨损状态下获得。此外,通过相关性分析选择可以指示工具磨损状态的敏感特征。为了测试所呈现的模型的有效性,所选择的敏感特征分别用于分别利用GMHMM和背传播神经网络(BPNN)来识别工具磨损状态。此外,分析了在各种数量的高斯混合物的组合下Gmhmm的鉴定性能和各种观察序列的识别,以验证所提出的工具磨损模型的实用性。实验结果表明,基于GMHMM的模型可以有效地识别工具磨损状态,GMHMM以准确性和稳定性优于BPNN模型。该方法为实际工业环境中的工具磨损监测奠定了基础。

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