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Tool Wear Online Monitoring Method Based on DT and SSAE-PHMM

机译:基于DT和SSAE-PHMM的工具磨损在线监测方法

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摘要

The real-time requirements of tool wear states monitoring are getting higher and higher, at the same time, tool wear monitoring lacks a modeling data comprehensive carrier, which hinders its application in the actual machining process. In order to solve this problem, combining the high fidelity real-time behavior simulation characteristics of digital twin (DT) and the powerful data mining capabilities of artificial intelligence, an online tool wear monitoring method based on DT and Stack Sparse Auto-Encoder-parallel hidden Markov model (SSAE-PHMM) was proposed. First, a DT which can reflect the real state of the tool was established, and the tool wear state was predicted by visual display and analysis in the virtual space; Second, a tool wear state recognition model based on SSAE-PHMM was established, which can adaptively complete time domain feature extraction. And for each tool wear state, multiple HMM models were combined into a PHMM model to realize accurate recognition of tool wear state. PHMM overcome the defects of poor convergence and long training time of artificial neural network, and greatly improved the performance of classifier. Through the deep integration of DT and artificial intelligence, real-time data-driven tool wear qualitative and quantitative online monitoring was realized, and the effectiveness of this method was verified by experiments.
机译:刀具磨损状态监测的实时性要求越来越高,同时,刀具磨损监测缺乏建模数据的综合载体,这阻碍了其在实际加工过程中的应用。为了解决这一问题,结合数字双(DT)和人工智能的强大的数据挖掘功能,在线刀具磨损监测方法的基础上DT和堆栈稀疏自动编码器来平行高保真实时行为模拟特性隐马尔可夫模型(SSAE-PHMM)中提出的。首先,DT能反映工具的实际状态成立,并且所述工具磨损状态通过视觉显示器和在虚拟空间分析预测;其次,建立了基于SSAE-PHMM一个刀具磨损状态识别模型,该模型可以自适应完整的时域特征提取。并为每个刀具磨损状态,多个HMM模型合并为一个模型PHMM实现刀具磨损状态的精确识别。 PHMM克服收敛差,人工神经网络训练时间长的缺陷,大大提高了分类器的性能。通过DT和人工智能的深度整合,实时数据驱动的刀具磨损定性和定量实现在线监控,而这种方法的有效性进行了实验验证。

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