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A NEW APPROACH OF TOOL WEAR CONDITION MONITORING BASED ON TEXTURE IMAGE RECOGNITION

机译:基于纹理图像识别的刀具磨损条件监测的一种新方法

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Due to the importance of tool wear condition real-time monitoring to the whole of NC machining process, this paper proposes a new approach of tool wear state monitoring. By taking the texture images of machined surfaces and pre-processing them, the characteristic parameters with inner relations to tool wear are extracted. In view of the structure classifier, the LVQ neural network classification model was put forward. Then the relationship between the characteristics data and the degree of tool wear was described with the competition of LVQ neural network. Finally the monitoring and identification diagnosis of tool wear state was indirectly realized. Simulation results show that it is a good way to real-time monitoring tool wear state.
机译:由于工具磨损条件的重要性实时监测到整个NC加工过程,提出了一种新的刀具磨损状态监测方法。通过采用机加工表面的纹理图像并预处理它们,提取与工具磨损内部关系的特征参数。鉴于结构分类器,提出了LVQ神经网络分类模型。然后,利用LVQ神经网络的竞争描述了特征数据和工具磨损程度之间的关系。最后,间接意识到工具磨损状态的监测和识别诊断。仿真结果表明,它是实时监控工具磨损状态的好方法。

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