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Tool Breakage Detection using Deep Learning

机译:使用深度学习进行刀具破损检测

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摘要

In manufacture, steel and other metals are mainly cut and shaped during the fabrication process by computer numerical control (CNC) machines. To keep high productivity and efficiency of the fabrication process, engineers need to monitor the real-time process of CNC machines, and the lifetime management of machine tools. In a real manufacturing process, breakage of machine tools usually happens without any indication, this problem seriously affects the fabrication process for many years. Previous studies suggested many different approaches for monitoring and detecting the breakage of machine tools. However, there still exists a big gap between academic experiments and the complex real fabrication processes such as the high demands of real-time detections, the difficulty in data acquisition and transmission. In this work, we use the spindle current approach to detect the breakage of machine tools, which has the high performance of real-time monitoring, low cost, and easy to install. We analyze the features of the current of a milling machine spindle through tools wearing processes, and then we predict the status of tool breakage by a convolutional neural network(CNN). In addition, we use a BP neural network to understand the reliability of the CNN. The results show that our CNN approach can detect tool breakage with an accuracy of 93%, while the best performance of BP is 80%.
机译:在制造过程中,主要在制造过程中通过计算机数控(CNC)机器对钢和其他金属进行切割和成型。为了保持较高的生产率和制造过程的效率,工程师需要监视CNC机床的实时过程以及机床的寿命管理。在实际的制造过程中,机床的破损通常没有任何迹象,这种问题严重影响了制造过程多年。先前的研究提出了许多不同的方法来监视和检测机床的破损。但是,学术实验与复杂的实际制造过程之间仍然存在很大的差距,例如对实时检测的要求很高,数据获取和传输的难度很大。在这项工作中,我们使用主轴电流方法来检测机床的破损,它具有实时监视的高性能,低成本和易于安装。通过刀具磨损过程分析铣床主轴电流的特征,然后通过卷积神经网络(CNN)预测刀具破损的状态。此外,我们使用BP神经网络来了解CNN的可靠性。结果表明,我们的CNN方法可以以93%的精度检测刀具破损,而BP的最佳性能为80%。

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