Turšič Niko, Klančnik Simon
Faculty of Mechanical Engineering, University of Maribor, Smetanova ul. 17, 2000 Maribor, Slovenia.
Sensors (Basel). 2024 Apr 12;24(8):2490. doi: 10.3390/s24082490.
In cutting processes, tool condition affects the quality of the manufactured parts. As such, an essential component to prevent unplanned downtime and to assure machining quality is having information about the state of the cutting tool. The primary function of it is to alert the operator that the tool has reached or is reaching a level of wear beyond which behaviour is unreliable. In this paper, the tool condition is being monitored by analysing the electric current on the main spindle via an artificial intelligence model utilising an LSTM neural network. In the current study, the tool is monitored while working on a cylindrical raw piece made of AA6013 aluminium alloy with a custom polycrystalline diamond tool for the purposes of monitoring the wear of these tools. Spindle current characteristics were obtained using external measuring equipment to not influence the operation of the machine included in a larger production line. As a novel approach, an artificial intelligence model based on an LSTM neural network is utilised for the analysis of the spindle current obtained during a manufacturing cycle and assessing the tool wear range in real time. The neural network was designed and trained to notice significant characteristics of the captured current signal. The conducted research serves as a proof of concept for the use of an LSTM neural network-based model as a method of monitoring the condition of cutting tools.
在切削加工过程中,刀具状态会影响所制造零件的质量。因此,防止意外停机并确保加工质量的一个重要组成部分是掌握有关切削刀具状态的信息。其主要功能是提醒操作员刀具已达到或即将达到磨损程度,超过该程度其性能就不可靠了。在本文中,通过利用长短期记忆(LSTM)神经网络的人工智能模型分析主轴上的电流来监测刀具状态。在当前研究中,使用定制的聚晶金刚石刀具对由AA6013铝合金制成的圆柱形毛坯件进行加工时,对刀具进行监测,以监测这些刀具的磨损情况。使用外部测量设备获取主轴电流特性,以免影响包含在更大生产线中的机床运行。作为一种新颖的方法,基于LSTM神经网络的人工智能模型用于分析制造周期中获得的主轴电流,并实时评估刀具磨损范围。设计并训练神经网络以识别捕获电流信号的显著特征。所进行的研究为使用基于LSTM神经网络的模型作为监测切削刀具状态的一种方法提供了概念验证。