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首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >A Neuro-Fuzzy System for Tool Condition Monitoring in Metal Cutting
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A Neuro-Fuzzy System for Tool Condition Monitoring in Metal Cutting

机译:用于金属切削刀具状态监测的神经模糊系统

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摘要

A neuro-fuzzy system is used to predict the condition of the tool in a milling process. Specifically the relationship between the sensor readings and tool wear state is first captured via a neural network and is subsequently reflected in linguistic form in terms of a fuzzy logic based diagnostic algorithm. In this approach, the neural network serves as an interpolative mechanism for the generation of data that is consistent with the behavior of the process, whereas fuzzy logic provides a transparent view of the relationship between the measured variables and the tool wear state. The methodology used in this paper incorporates an error-based, density-driven adaptation scheme in conjunction with a neural network based reference model to adapt the fuzzy membership functions associated with the cool condition monitoring algorithm to ensure that the rule set reflects the true nature of the inter-relationship between the sensor readings and the tool condition. Experimental results show that the proposed fuzzy mechanism correctly predicts the condition of the tool in 97 percent of the cases where it is applied.
机译:神经模糊系统用于预测铣削过程中刀具的状态。具体而言,首先通过神经网络捕获传感器读数与刀具磨损状态之间的关系,然后根据基于模糊逻辑的诊断算法以语言形式反映传感器的读数。在这种方法中,神经网络充当一种插值机制,用于生成与过程行为一致的数据,而模糊逻辑则提供了有关测量变量与刀具磨损状态之间关系的透明视图。本文使用的方法论结合了基于误差,密度驱动的自适应方案和基于神经网络的参考模型,以适应与凉爽状态监测算法相关的模糊隶属函数,以确保规则集反映了真实的特征。传感器读数和刀具状态之间的相互关系。实验结果表明,在97%的情况下,所提出的模糊机制都能正确预测工具的状态。

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