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FUZZY RADIAL BASIS FUNCTION (FRBF) NETWORK BASED TOOL CONDITION MONITORING SYSTEM USING VIBRATION SIGNALS

机译:基于振动信号的基于模糊径向基函数网络的刀具状态监测系统

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摘要

Thriving automation in industries leads to more research on the tool condition monitoring systems for better accuracy and fast recognition/evaluation of tool wear. Research on the applicability of the new advances in the soft-computing as well as in the signal processing fields is the inevitable consequence. In this work, a new soft-computing modeling technique, fuzzy radial basis function (FRBF) network has been applied to the prediction of drill wear using the vibration signal features. This work presents the wear prediction performance comparison of this new model with three other already tried and established soft-computing models, such as back propagation neural network (BPNN), radial basis function network (RBF) and normalized radial basis function network (NRBF), for both time-domain as well as wavelet packet approaches of feature extraction. Experimental results show that FRBF model with wavelet packet approach produces the best performance of predicting flank wear.
机译:工业上兴旺的自动化程度导致对刀具状态监视系统的更多研究,以提高精度并快速识别/评估刀具磨损。对软计算以及信号处理领域中的新进展的适用性进行研究的必然结果。在这项工作中,一种新的软计算建模技术,即模糊径向基函数(FRBF)网络已被应用到使用振动信号特征的钻头磨损预测中。这项工作提出了该新模型与其他三个已经尝试并建立的软计算模型的磨损预测性能比较,例如反向传播神经网络(BPNN),径向基函数网络(RBF)和归一化径向基函数网络(NRBF) ,适用于时域以及特征提取的小波包方法。实验结果表明,采用小波包方法的FRBF模型可产生最佳的侧面磨损预测性能。

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