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Application of a wavelet fuzzy neural network in microdrilling online monitoring

机译:小波模糊神经网络在微钻在线监测中的应用

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A wavelet fuzzy neural network has been developed in this study for monitoring microdrilling, based on the combinative application of fuzzy logic and error back-propagation network, whose inputs come from some characteristic signals by means of time-domain analyzing and wavelet decomposing. The monitoring model has the advantages of fast convergences and exact description of the nonlinear relationship between signal features and microdrill breakage. Data sampled in real time from the thrust and the torque during microdrilling were used for training and testing the model, the online monitoring system of microdrilling on virtual instrument was processed to monitor the real-time microdrill wear. The experiment results show that if the threshold is properly selected, the microdrill breakage will be effectively avoided by monitoring.
机译:在模糊逻辑与误差反向传播网络相结合的基础上,本研究开发了一种小波模糊神经网络,用于微钻的监测,其输入是通过时域分析和小波分解从某些特征信号中输入的。该监测模型具有收敛速度快,信号特征与微钻破损之间非线性关系准确描述的优点。利用微钻过程中从推力和扭矩中实时采集的数据对模型进行训练和测试,对虚拟仪器上的微钻在线监测系统进行处理,以实时监测微钻的磨损情况。实验结果表明,如果选择合适的阈值,通过监测可以有效避免微钻破损。

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