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首页> 外文期刊>Procedia Manufacturing >Tool wear prediction in end milling of Ti-6Al-4V through Kalman filter based fusion of texture features and cutting forces
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Tool wear prediction in end milling of Ti-6Al-4V through Kalman filter based fusion of texture features and cutting forces

机译:TI-6AL-4V的刀具磨损预测通过Kalman滤波器的纹理特征和切割力融合

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The current trend of Industry 4.0 development requires an integration of the process sensing technologies with the cloud computing network to design the cyber-physical systems which can seamlessly transfer data between the connected devices. This will pave a way for real-time process monitoring as well as the control of the process by the use of decision-making algorithms. The current paper explores the opportunities with this regard in the area of tool wear prediction in end milling of Ti-6Al-4V alloy at various operating conditions. A series of slot milling passes were made at various parameter combinations of feed, speed, and depth of cut until the flank wear on tool crosses the failure criterion. The cutting force data acquired in the process with the dynamometer and the texture features from the image of the milled surface are used to build a model for predicting the flank wear through the Kalman filter approach. The fusion model built using the Kalman filter methodology achieves a good accuracy in predicting the flank wear on the tool. The model is highly accurate in predicting the wear as the tool approaches the failure threshold. Thus the model can enable the decision control module to trigger a tool change signal and improve the overall productivity of the process.
机译:行业4.0发展的当前趋势需要将过程传感技术与云计算网络集成,以设计可以在连接设备之间无缝传输数据的网络物理系统。这将对实时过程监控以及使用决策算法来铺平方法。目前的论文在各种操作条件下探讨了Ti-6Al-4V合金的刀具磨损预测领域的这方面的机会。在饲料,速度和深度的各种参数组合中进行了一系列槽铣槽,直到侧面磨损在工具上穿过故障标准。使用测力计和来自铣削表面图像的纹理特征的过程中获取的切割力数据用于构建通过卡尔曼滤波器方法预测侧面磨损的模型。使用卡尔曼滤波器方法建造的融合模型实现了良好的准确性,可预测工具上的侧面磨损。当工具接近故障阈值时,该模型在预测磨损时高度准确。因此,该模型可以使判定控制模块能够触发换刀信号并提高过程的整体生产率。

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