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A neurofuzzy pattern recognition algorithm and its application in tool condition monitoring process

机译:神经模糊模式识别算法及其在刀具状态监测中的应用

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An important element of the automatic machining process control function is the on-line monitoring of cutting tool wear and fracture mechanisms. This paper presents an intelligent tool condition monitoring system. The multisensor signals reflect the tool condition comprehensively. Redundant signal features are removed by using a fuzzy clustering feature filter. A unique fuzzy driven neural network has been developed to carry out the fusion of multi-sensor information and tool wear classification. It combines the transparent representation of fuzzy systems with the learning ability of neural networks hence the algorithm has strong modelling and noise suppression ability. Successful tool wear classification can be realized under a range of machining conditions.
机译:自动加工过程控制功能的重要组成部分是对刀具磨损和断裂机理的在线监控。本文提出了一种智能的刀具状态监测系统。多传感器信号全面反映了刀具状态。冗余信号特征通过使用模糊聚类特征滤波器来去除。已经开发出独特的模糊驱动神经网络来实现多传感器信息和刀具磨损分类的融合。它将模糊系统的透明表示与神经网络的学习能力相结合,因此该算法具有强大的建模和噪声抑制能力。成功的刀具磨损分类可在一定范围的加工条件下实现。

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