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New Approach to Monitor the Tool Condition in a CNC Machining Center

机译:监控CNC加工中心中刀具状态的新方法

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摘要

We propose to monitor the cutting tool condition in a CNC-machining center by using continuous Hidden Markov Models (HMM). A vibration signal database was created monitoring the vibration between the cutting tool and workpiece. We trained/tested the HMM for 18 different operating conditions. The HMM were created by preprocessing the waveforms, followed by training step using the Baum-Welch algorithm. In the decoding process, the signal waveform is also preprocessed, then the trained HMM are used for decoding. Early experimental results validate our proposal about exploiting speech recognition frameworks in monitoring tool condition. The proposed model is capable of detecting the cutting tool condition within large variations of spindle speed and feed rate. The classifier performance was of 96%.
机译:我们建议使用连续的隐马尔可夫模型(HMM)来监视CNC加工中心中的切削刀具状况。创建了一个振动信号数据库,以监控切削刀具和工件之间的振动。我们针对18种不同的操作条件对HMM进行了培训/测试。通过预处理波形来创建HMM,然后使用Baum-Welch算法进行训练。在解码过程中,还对信号波形进行预处理,然后将训练后的HMM用于解码。早期的实验结果验证了我们关于在监视工具状态中利用语音识别框架的建议。所提出的模型能够在主轴速度和进给速度有较大变化的情况下检测切削刀具的状况。分类器性能为96%。

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